source: trunk/python/scantable.py @ 2081

Last change on this file since 2081 was 2081, checked in by WataruKawasaki, 13 years ago

New Development: No

JIRA Issue: Yes CAS-2847

Ready for Test: Yes

Interface Changes: No

What Interface Changed:

Test Programs:

Put in Release Notes: No

Module(s): Scantable

Description: Scantable::sinusoidBaseline(), Scantable::autoSinusoidBaseline()


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  • Property svn:keywords set to Author Date Id Revision
File size: 123.3 KB
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[1846]1"""This module defines the scantable class."""
2
[1697]3import os
[1948]4import numpy
[1691]5try:
6    from functools import wraps as wraps_dec
7except ImportError:
8    from asap.compatibility import wraps as wraps_dec
9
[1824]10from asap.env import is_casapy
[876]11from asap._asap import Scantable
[2004]12from asap._asap import filler, msfiller
[1824]13from asap.parameters import rcParams
[1862]14from asap.logging import asaplog, asaplog_post_dec
[1824]15from asap.selector import selector
16from asap.linecatalog import linecatalog
[1600]17from asap.coordinate import coordinate
[1859]18from asap.utils import _n_bools, mask_not, mask_and, mask_or, page
[1907]19from asap.asapfitter import fitter
[102]20
[1689]21
22def preserve_selection(func):
[1691]23    @wraps_dec(func)
[1689]24    def wrap(obj, *args, **kw):
25        basesel = obj.get_selection()
[1857]26        try:
27            val = func(obj, *args, **kw)
28        finally:
29            obj.set_selection(basesel)
[1689]30        return val
31    return wrap
32
[1846]33def is_scantable(filename):
34    """Is the given file a scantable?
[1689]35
[1846]36    Parameters:
37
38        filename: the name of the file/directory to test
39
40    """
[1883]41    if ( os.path.isdir(filename)
42         and os.path.exists(filename+'/table.info')
43         and os.path.exists(filename+'/table.dat') ):
44        f=open(filename+'/table.info')
45        l=f.readline()
46        f.close()
47        #if ( l.find('Scantable') != -1 ):
48        if ( l.find('Measurement Set') == -1 ):
49            return True
50        else:
51            return False
52    else:
53        return False
54##     return (os.path.isdir(filename)
55##             and not os.path.exists(filename+'/table.f1')
56##             and os.path.exists(filename+'/table.info'))
[1697]57
[1883]58def is_ms(filename):
59    """Is the given file a MeasurementSet?
[1697]60
[1883]61    Parameters:
62
63        filename: the name of the file/directory to test
64
65    """
66    if ( os.path.isdir(filename)
67         and os.path.exists(filename+'/table.info')
68         and os.path.exists(filename+'/table.dat') ):
69        f=open(filename+'/table.info')
70        l=f.readline()
71        f.close()
72        if ( l.find('Measurement Set') != -1 ):
73            return True
74        else:
75            return False
76    else:
77        return False
78   
[876]79class scantable(Scantable):
[1846]80    """\
81        The ASAP container for scans (single-dish data).
[102]82    """
[1819]83
[1862]84    @asaplog_post_dec
[1916]85    #def __init__(self, filename, average=None, unit=None, getpt=None,
86    #             antenna=None, parallactify=None):
87    def __init__(self, filename, average=None, unit=None, parallactify=None, **args):
[1846]88        """\
[102]89        Create a scantable from a saved one or make a reference
[1846]90
[102]91        Parameters:
[1846]92
93            filename:     the name of an asap table on disk
94                          or
95                          the name of a rpfits/sdfits/ms file
96                          (integrations within scans are auto averaged
97                          and the whole file is read) or
98                          [advanced] a reference to an existing scantable
99
100            average:      average all integrations withinb a scan on read.
101                          The default (True) is taken from .asaprc.
102
[484]103            unit:         brightness unit; must be consistent with K or Jy.
[1846]104                          Over-rides the default selected by the filler
105                          (input rpfits/sdfits/ms) or replaces the value
106                          in existing scantables
107
108            getpt:        for MeasurementSet input data only:
109                          If True, all pointing data are filled.
110                          The deafult is False, which makes time to load
111                          the MS data faster in some cases.
112
[1920]113            antenna:      for MeasurementSet input data only:
114                          Antenna selection. integer (id) or string (name or id).
[1846]115
116            parallactify: Indicate that the data had been parallatified. Default
117                          is taken from rc file.
118
[710]119        """
[976]120        if average is None:
[710]121            average = rcParams['scantable.autoaverage']
[1916]122        #if getpt is None:
123        #    getpt = True
124        #if antenna is not None:
125        #    asaplog.push("Antenna selection currently unsupported."
126        #                 "Using ''")
127        #    asaplog.post('WARN')
128        #if antenna is None:
129        #    antenna = ''
130        #elif type(antenna) == int:
131        #    antenna = '%s' % antenna
132        #elif type(antenna) == list:
133        #    tmpstr = ''
134        #    for i in range( len(antenna) ):
135        #        if type(antenna[i]) == int:
136        #            tmpstr = tmpstr + ('%s,'%(antenna[i]))
137        #        elif type(antenna[i]) == str:
138        #            tmpstr=tmpstr+antenna[i]+','
139        #        else:
140        #            raise TypeError('Bad antenna selection.')
141        #    antenna = tmpstr.rstrip(',')
[1593]142        parallactify = parallactify or rcParams['scantable.parallactify']
[1259]143        varlist = vars()
[876]144        from asap._asap import stmath
[1819]145        self._math = stmath( rcParams['insitu'] )
[876]146        if isinstance(filename, Scantable):
147            Scantable.__init__(self, filename)
[181]148        else:
[1697]149            if isinstance(filename, str):
[976]150                filename = os.path.expandvars(filename)
151                filename = os.path.expanduser(filename)
152                if not os.path.exists(filename):
153                    s = "File '%s' not found." % (filename)
154                    raise IOError(s)
[1697]155                if is_scantable(filename):
156                    ondisk = rcParams['scantable.storage'] == 'disk'
157                    Scantable.__init__(self, filename, ondisk)
158                    if unit is not None:
159                        self.set_fluxunit(unit)
[2008]160                    if average:
161                        self._assign( self.average_time( scanav=True ) )
[1819]162                    # do not reset to the default freqframe
163                    #self.set_freqframe(rcParams['scantable.freqframe'])
[1883]164                #elif os.path.isdir(filename) \
165                #         and not os.path.exists(filename+'/table.f1'):
166                elif is_ms(filename):
[1916]167                    # Measurement Set
168                    opts={'ms': {}}
169                    mskeys=['getpt','antenna']
170                    for key in mskeys:
171                        if key in args.keys():
172                            opts['ms'][key] = args[key]
173                    #self._fill([filename], unit, average, getpt, antenna)
174                    self._fill([filename], unit, average, opts)
[1893]175                elif os.path.isfile(filename):
[1916]176                    #self._fill([filename], unit, average, getpt, antenna)
177                    self._fill([filename], unit, average)
[1883]178                else:
[1819]179                    msg = "The given file '%s'is not a valid " \
180                          "asap table." % (filename)
[1859]181                    raise IOError(msg)
[1118]182            elif (isinstance(filename, list) or isinstance(filename, tuple)) \
[976]183                  and isinstance(filename[-1], str):
[1916]184                #self._fill(filename, unit, average, getpt, antenna)
185                self._fill(filename, unit, average)
[1586]186        self.parallactify(parallactify)
[1259]187        self._add_history("scantable", varlist)
[102]188
[1862]189    @asaplog_post_dec
[876]190    def save(self, name=None, format=None, overwrite=False):
[1846]191        """\
[1280]192        Store the scantable on disk. This can be an asap (aips++) Table,
193        SDFITS or MS2 format.
[1846]194
[116]195        Parameters:
[1846]196
[1093]197            name:        the name of the outputfile. For format "ASCII"
198                         this is the root file name (data in 'name'.txt
[497]199                         and header in 'name'_header.txt)
[1855]200
[116]201            format:      an optional file format. Default is ASAP.
[1855]202                         Allowed are:
203
204                            * 'ASAP' (save as ASAP [aips++] Table),
205                            * 'SDFITS' (save as SDFITS file)
206                            * 'ASCII' (saves as ascii text file)
207                            * 'MS2' (saves as an casacore MeasurementSet V2)
208                            * 'FITS' (save as image FITS - not readable by class)
209                            * 'CLASS' (save as FITS readable by CLASS)
210
[411]211            overwrite:   If the file should be overwritten if it exists.
[256]212                         The default False is to return with warning
[411]213                         without writing the output. USE WITH CARE.
[1855]214
[1846]215        Example::
216
[116]217            scan.save('myscan.asap')
[1118]218            scan.save('myscan.sdfits', 'SDFITS')
[1846]219
[116]220        """
[411]221        from os import path
[1593]222        format = format or rcParams['scantable.save']
[256]223        suffix = '.'+format.lower()
[1118]224        if name is None or name == "":
[256]225            name = 'scantable'+suffix
[718]226            msg = "No filename given. Using default name %s..." % name
227            asaplog.push(msg)
[411]228        name = path.expandvars(name)
[256]229        if path.isfile(name) or path.isdir(name):
230            if not overwrite:
[718]231                msg = "File %s exists." % name
[1859]232                raise IOError(msg)
[451]233        format2 = format.upper()
234        if format2 == 'ASAP':
[116]235            self._save(name)
[2029]236        elif format2 == 'MS2':
237            msopt = {'ms': {'overwrite': overwrite } }
238            from asap._asap import mswriter
239            writer = mswriter( self )
240            writer.write( name, msopt )
[116]241        else:
[989]242            from asap._asap import stwriter as stw
[1118]243            writer = stw(format2)
244            writer.write(self, name)
[116]245        return
246
[102]247    def copy(self):
[1846]248        """Return a copy of this scantable.
249
250        *Note*:
251
[1348]252            This makes a full (deep) copy. scan2 = scan1 makes a reference.
[1846]253
254        Example::
255
[102]256            copiedscan = scan.copy()
[1846]257
[102]258        """
[876]259        sd = scantable(Scantable._copy(self))
[113]260        return sd
261
[1093]262    def drop_scan(self, scanid=None):
[1846]263        """\
[1093]264        Return a new scantable where the specified scan number(s) has(have)
265        been dropped.
[1846]266
[1093]267        Parameters:
[1846]268
[1093]269            scanid:    a (list of) scan number(s)
[1846]270
[1093]271        """
272        from asap import _is_sequence_or_number as _is_valid
273        from asap import _to_list
274        from asap import unique
275        if not _is_valid(scanid):
[1859]276            raise RuntimeError( 'Please specify a scanno to drop from the scantable' )
277        scanid = _to_list(scanid)
278        allscans = unique([ self.getscan(i) for i in range(self.nrow())])
279        for sid in scanid: allscans.remove(sid)
280        if len(allscans) == 0:
281            raise ValueError("Can't remove all scans")
282        sel = selector(scans=allscans)
283        return self._select_copy(sel)
[1093]284
[1594]285    def _select_copy(self, selection):
286        orig = self.get_selection()
287        self.set_selection(orig+selection)
288        cp = self.copy()
289        self.set_selection(orig)
290        return cp
291
[102]292    def get_scan(self, scanid=None):
[1855]293        """\
[102]294        Return a specific scan (by scanno) or collection of scans (by
295        source name) in a new scantable.
[1846]296
297        *Note*:
298
[1348]299            See scantable.drop_scan() for the inverse operation.
[1846]300
[102]301        Parameters:
[1846]302
[513]303            scanid:    a (list of) scanno or a source name, unix-style
304                       patterns are accepted for source name matching, e.g.
305                       '*_R' gets all 'ref scans
[1846]306
307        Example::
308
[513]309            # get all scans containing the source '323p459'
310            newscan = scan.get_scan('323p459')
311            # get all 'off' scans
312            refscans = scan.get_scan('*_R')
313            # get a susbset of scans by scanno (as listed in scan.summary())
[1118]314            newscan = scan.get_scan([0, 2, 7, 10])
[1846]315
[102]316        """
317        if scanid is None:
[1859]318            raise RuntimeError( 'Please specify a scan no or name to '
319                                'retrieve from the scantable' )
[102]320        try:
[946]321            bsel = self.get_selection()
322            sel = selector()
[102]323            if type(scanid) is str:
[946]324                sel.set_name(scanid)
[1594]325                return self._select_copy(sel)
[102]326            elif type(scanid) is int:
[946]327                sel.set_scans([scanid])
[1594]328                return self._select_copy(sel)
[381]329            elif type(scanid) is list:
[946]330                sel.set_scans(scanid)
[1594]331                return self._select_copy(sel)
[381]332            else:
[718]333                msg = "Illegal scanid type, use 'int' or 'list' if ints."
[1859]334                raise TypeError(msg)
[102]335        except RuntimeError:
[1859]336            raise
[102]337
338    def __str__(self):
[1118]339        return Scantable._summary(self, True)
[102]340
[976]341    def summary(self, filename=None):
[1846]342        """\
[102]343        Print a summary of the contents of this scantable.
[1846]344
[102]345        Parameters:
[1846]346
[1931]347            filename:    the name of a file to write the putput to
[102]348                         Default - no file output
[1846]349
[102]350        """
[976]351        info = Scantable._summary(self, True)
[102]352        if filename is not None:
[256]353            if filename is "":
354                filename = 'scantable_summary.txt'
[415]355            from os.path import expandvars, isdir
[411]356            filename = expandvars(filename)
[415]357            if not isdir(filename):
[413]358                data = open(filename, 'w')
359                data.write(info)
360                data.close()
361            else:
[718]362                msg = "Illegal file name '%s'." % (filename)
[1859]363                raise IOError(msg)
364        return page(info)
[710]365
[1512]366    def get_spectrum(self, rowno):
[1471]367        """Return the spectrum for the current row in the scantable as a list.
[1846]368
[1471]369        Parameters:
[1846]370
[1573]371             rowno:   the row number to retrieve the spectrum from
[1846]372
[1471]373        """
374        return self._getspectrum(rowno)
[946]375
[1471]376    def get_mask(self, rowno):
377        """Return the mask for the current row in the scantable as a list.
[1846]378
[1471]379        Parameters:
[1846]380
[1573]381             rowno:   the row number to retrieve the mask from
[1846]382
[1471]383        """
384        return self._getmask(rowno)
385
386    def set_spectrum(self, spec, rowno):
[1938]387        """Set the spectrum for the current row in the scantable.
[1846]388
[1471]389        Parameters:
[1846]390
[1855]391             spec:   the new spectrum
[1846]392
[1855]393             rowno:  the row number to set the spectrum for
394
[1471]395        """
396        assert(len(spec) == self.nchan())
397        return self._setspectrum(spec, rowno)
398
[1600]399    def get_coordinate(self, rowno):
400        """Return the (spectral) coordinate for a a given 'rowno'.
[1846]401
402        *Note*:
403
[1600]404            * This coordinate is only valid until a scantable method modifies
405              the frequency axis.
406            * This coordinate does contain the original frequency set-up
407              NOT the new frame. The conversions however are done using the user
408              specified frame (e.g. LSRK/TOPO). To get the 'real' coordinate,
409              use scantable.freq_align first. Without it there is no closure,
[1846]410              i.e.::
[1600]411
[1846]412                  c = myscan.get_coordinate(0)
413                  c.to_frequency(c.get_reference_pixel()) != c.get_reference_value()
414
[1600]415        Parameters:
[1846]416
[1600]417             rowno:    the row number for the spectral coordinate
418
419        """
420        return coordinate(Scantable.get_coordinate(self, rowno))
421
[946]422    def get_selection(self):
[1846]423        """\
[1005]424        Get the selection object currently set on this scantable.
[1846]425
426        Example::
427
[1005]428            sel = scan.get_selection()
429            sel.set_ifs(0)              # select IF 0
430            scan.set_selection(sel)     # apply modified selection
[1846]431
[946]432        """
433        return selector(self._getselection())
434
[1576]435    def set_selection(self, selection=None, **kw):
[1846]436        """\
[1005]437        Select a subset of the data. All following operations on this scantable
438        are only applied to thi selection.
[1846]439
[1005]440        Parameters:
[1697]441
[1846]442            selection:    a selector object (default unset the selection), or
443                          any combination of "pols", "ifs", "beams", "scans",
444                          "cycles", "name", "query"
[1697]445
[1846]446        Examples::
[1697]447
[1005]448            sel = selector()         # create a selection object
[1118]449            self.set_scans([0, 3])    # select SCANNO 0 and 3
[1005]450            scan.set_selection(sel)  # set the selection
451            scan.summary()           # will only print summary of scanno 0 an 3
452            scan.set_selection()     # unset the selection
[1697]453            # or the equivalent
454            scan.set_selection(scans=[0,3])
455            scan.summary()           # will only print summary of scanno 0 an 3
456            scan.set_selection()     # unset the selection
[1846]457
[946]458        """
[1576]459        if selection is None:
460            # reset
461            if len(kw) == 0:
462                selection = selector()
463            else:
464                # try keywords
465                for k in kw:
466                    if k not in selector.fields:
467                        raise KeyError("Invalid selection key '%s', valid keys are %s" % (k, selector.fields))
468                selection = selector(**kw)
[946]469        self._setselection(selection)
470
[1819]471    def get_row(self, row=0, insitu=None):
[1846]472        """\
[1819]473        Select a row in the scantable.
474        Return a scantable with single row.
[1846]475
[1819]476        Parameters:
[1846]477
478            row:    row no of integration, default is 0.
479            insitu: if False a new scantable is returned. Otherwise, the
480                    scaling is done in-situ. The default is taken from .asaprc
481                    (False)
482
[1819]483        """
484        if insitu is None: insitu = rcParams['insitu']
485        if not insitu:
486            workscan = self.copy()
487        else:
488            workscan = self
489        # Select a row
490        sel=selector()
[1992]491        sel.set_rows([row])
492        #sel.set_scans([workscan.getscan(row)])
493        #sel.set_cycles([workscan.getcycle(row)])
494        #sel.set_beams([workscan.getbeam(row)])
495        #sel.set_ifs([workscan.getif(row)])
496        #sel.set_polarisations([workscan.getpol(row)])
497        #sel.set_name(workscan._getsourcename(row))
[1819]498        workscan.set_selection(sel)
499        if not workscan.nrow() == 1:
500            msg = "Cloud not identify single row. %d rows selected."%(workscan.nrow())
501            raise RuntimeError(msg)
502        del sel
503        if insitu:
504            self._assign(workscan)
505        else:
506            return workscan
507
[1862]508    @asaplog_post_dec
[1907]509    def stats(self, stat='stddev', mask=None, form='3.3f', row=None):
[1846]510        """\
[135]511        Determine the specified statistic of the current beam/if/pol
[102]512        Takes a 'mask' as an optional parameter to specify which
513        channels should be excluded.
[1846]514
[102]515        Parameters:
[1846]516
[1819]517            stat:    'min', 'max', 'min_abc', 'max_abc', 'sumsq', 'sum',
518                     'mean', 'var', 'stddev', 'avdev', 'rms', 'median'
[1855]519
[135]520            mask:    an optional mask specifying where the statistic
[102]521                     should be determined.
[1855]522
[1819]523            form:    format string to print statistic values
[1846]524
[1907]525            row:     row number of spectrum to process.
526                     (default is None: for all rows)
[1846]527
[1907]528        Example:
[113]529            scan.set_unit('channel')
[1118]530            msk = scan.create_mask([100, 200], [500, 600])
[135]531            scan.stats(stat='mean', mask=m)
[1846]532
[102]533        """
[1593]534        mask = mask or []
[876]535        if not self._check_ifs():
[1118]536            raise ValueError("Cannot apply mask as the IFs have different "
537                             "number of channels. Please use setselection() "
538                             "to select individual IFs")
[1819]539        rtnabc = False
540        if stat.lower().endswith('_abc'): rtnabc = True
541        getchan = False
542        if stat.lower().startswith('min') or stat.lower().startswith('max'):
543            chan = self._math._minmaxchan(self, mask, stat)
544            getchan = True
545            statvals = []
[1907]546        if not rtnabc:
547            if row == None:
548                statvals = self._math._stats(self, mask, stat)
549            else:
550                statvals = self._math._statsrow(self, mask, stat, int(row))
[256]551
[1819]552        #def cb(i):
553        #    return statvals[i]
[256]554
[1819]555        #return self._row_callback(cb, stat)
[102]556
[1819]557        label=stat
558        #callback=cb
559        out = ""
560        #outvec = []
561        sep = '-'*50
[1907]562
563        if row == None:
564            rows = xrange(self.nrow())
565        elif isinstance(row, int):
566            rows = [ row ]
567
568        for i in rows:
[1819]569            refstr = ''
570            statunit= ''
571            if getchan:
572                qx, qy = self.chan2data(rowno=i, chan=chan[i])
573                if rtnabc:
574                    statvals.append(qx['value'])
575                    refstr = ('(value: %'+form) % (qy['value'])+' ['+qy['unit']+'])'
576                    statunit= '['+qx['unit']+']'
577                else:
578                    refstr = ('(@ %'+form) % (qx['value'])+' ['+qx['unit']+'])'
579
580            tm = self._gettime(i)
581            src = self._getsourcename(i)
582            out += 'Scan[%d] (%s) ' % (self.getscan(i), src)
583            out += 'Time[%s]:\n' % (tm)
[1907]584            if self.nbeam(-1) > 1: out +=  ' Beam[%d] ' % (self.getbeam(i))
585            if self.nif(-1) > 1:   out +=  ' IF[%d] ' % (self.getif(i))
586            if self.npol(-1) > 1:  out +=  ' Pol[%d] ' % (self.getpol(i))
[1819]587            #outvec.append(callback(i))
[1907]588            if len(rows) > 1:
589                # out += ('= %'+form) % (outvec[i]) +'   '+refstr+'\n'
590                out += ('= %'+form) % (statvals[i]) +'   '+refstr+'\n'
591            else:
592                # out += ('= %'+form) % (outvec[0]) +'   '+refstr+'\n'
593                out += ('= %'+form) % (statvals[0]) +'   '+refstr+'\n'
[1819]594            out +=  sep+"\n"
595
[1859]596        import os
597        if os.environ.has_key( 'USER' ):
598            usr = os.environ['USER']
599        else:
600            import commands
601            usr = commands.getoutput( 'whoami' )
602        tmpfile = '/tmp/tmp_'+usr+'_casapy_asap_scantable_stats'
603        f = open(tmpfile,'w')
604        print >> f, sep
605        print >> f, ' %s %s' % (label, statunit)
606        print >> f, sep
607        print >> f, out
608        f.close()
609        f = open(tmpfile,'r')
610        x = f.readlines()
611        f.close()
612        asaplog.push(''.join(x), False)
613
[1819]614        return statvals
615
616    def chan2data(self, rowno=0, chan=0):
[1846]617        """\
[1819]618        Returns channel/frequency/velocity and spectral value
619        at an arbitrary row and channel in the scantable.
[1846]620
[1819]621        Parameters:
[1846]622
[1819]623            rowno:   a row number in the scantable. Default is the
624                     first row, i.e. rowno=0
[1855]625
[1819]626            chan:    a channel in the scantable. Default is the first
627                     channel, i.e. pos=0
[1846]628
[1819]629        """
630        if isinstance(rowno, int) and isinstance(chan, int):
631            qx = {'unit': self.get_unit(),
632                  'value': self._getabcissa(rowno)[chan]}
633            qy = {'unit': self.get_fluxunit(),
634                  'value': self._getspectrum(rowno)[chan]}
635            return qx, qy
636
[1118]637    def stddev(self, mask=None):
[1846]638        """\
[135]639        Determine the standard deviation of the current beam/if/pol
640        Takes a 'mask' as an optional parameter to specify which
641        channels should be excluded.
[1846]642
[135]643        Parameters:
[1846]644
[135]645            mask:    an optional mask specifying where the standard
646                     deviation should be determined.
647
[1846]648        Example::
649
[135]650            scan.set_unit('channel')
[1118]651            msk = scan.create_mask([100, 200], [500, 600])
[135]652            scan.stddev(mask=m)
[1846]653
[135]654        """
[1118]655        return self.stats(stat='stddev', mask=mask);
[135]656
[1003]657
[1259]658    def get_column_names(self):
[1846]659        """\
[1003]660        Return a  list of column names, which can be used for selection.
661        """
[1259]662        return list(Scantable.get_column_names(self))
[1003]663
[1730]664    def get_tsys(self, row=-1):
[1846]665        """\
[113]666        Return the System temperatures.
[1846]667
668        Parameters:
669
670            row:    the rowno to get the information for. (default all rows)
671
[113]672        Returns:
[1846]673
[876]674            a list of Tsys values for the current selection
[1846]675
[113]676        """
[1730]677        if row > -1:
678            return self._get_column(self._gettsys, row)
[876]679        return self._row_callback(self._gettsys, "Tsys")
[256]680
[1730]681
682    def get_weather(self, row=-1):
[1846]683        """\
684        Return the weather informations.
685
686        Parameters:
687
688            row:    the rowno to get the information for. (default all rows)
689
690        Returns:
691
692            a dict or list of of dicts of values for the current selection
693
694        """
695
[1730]696        values = self._get_column(self._get_weather, row)
697        if row > -1:
698            return {'temperature': values[0],
699                    'pressure': values[1], 'humidity' : values[2],
700                    'windspeed' : values[3], 'windaz' : values[4]
701                    }
702        else:
703            out = []
704            for r in values:
705
706                out.append({'temperature': r[0],
707                            'pressure': r[1], 'humidity' : r[2],
708                            'windspeed' : r[3], 'windaz' : r[4]
709                    })
710            return out
711
[876]712    def _row_callback(self, callback, label):
713        out = ""
[1118]714        outvec = []
[1590]715        sep = '-'*50
[876]716        for i in range(self.nrow()):
717            tm = self._gettime(i)
718            src = self._getsourcename(i)
[1590]719            out += 'Scan[%d] (%s) ' % (self.getscan(i), src)
[876]720            out += 'Time[%s]:\n' % (tm)
[1590]721            if self.nbeam(-1) > 1:
722                out +=  ' Beam[%d] ' % (self.getbeam(i))
723            if self.nif(-1) > 1: out +=  ' IF[%d] ' % (self.getif(i))
724            if self.npol(-1) > 1: out +=  ' Pol[%d] ' % (self.getpol(i))
[876]725            outvec.append(callback(i))
726            out += '= %3.3f\n' % (outvec[i])
[1590]727            out +=  sep+'\n'
[1859]728
729        asaplog.push(sep)
730        asaplog.push(" %s" % (label))
731        asaplog.push(sep)
732        asaplog.push(out)
[1861]733        asaplog.post()
[1175]734        return outvec
[256]735
[1947]736    def _get_column(self, callback, row=-1, *args):
[1070]737        """
738        """
739        if row == -1:
[1947]740            return [callback(i, *args) for i in range(self.nrow())]
[1070]741        else:
[1819]742            if  0 <= row < self.nrow():
[1947]743                return callback(row, *args)
[256]744
[1070]745
[1948]746    def get_time(self, row=-1, asdatetime=False, prec=-1):
[1846]747        """\
[113]748        Get a list of time stamps for the observations.
[1938]749        Return a datetime object or a string (default) for each
750        integration time stamp in the scantable.
[1846]751
[113]752        Parameters:
[1846]753
[1348]754            row:          row no of integration. Default -1 return all rows
[1855]755
[1348]756            asdatetime:   return values as datetime objects rather than strings
[1846]757
[1948]758            prec:         number of digits shown. Default -1 to automatic calculation.
759                          Note this number is equals to the digits of MVTime,
760                          i.e., 0<prec<3: dates with hh:: only,
761                          <5: with hh:mm:, <7 or 0: with hh:mm:ss,
[1947]762                          and 6> : with hh:mm:ss.tt... (prec-6 t's added)
763
[113]764        """
[1175]765        from datetime import datetime
[1948]766        if prec < 0:
767            # automagically set necessary precision +1
[1950]768            prec = 7 - numpy.floor(numpy.log10(numpy.min(self.get_inttime(row))))
[1948]769            prec = max(6, int(prec))
770        else:
771            prec = max(0, prec)
772        if asdatetime:
773            #precision can be 1 millisecond at max
774            prec = min(12, prec)
775
[1947]776        times = self._get_column(self._gettime, row, prec)
[1348]777        if not asdatetime:
[1392]778            return times
[1947]779        format = "%Y/%m/%d/%H:%M:%S.%f"
780        if prec < 7:
781            nsub = 1 + (((6-prec)/2) % 3)
782            substr = [".%f","%S","%M"]
783            for i in range(nsub):
784                format = format.replace(substr[i],"")
[1175]785        if isinstance(times, list):
[1947]786            return [datetime.strptime(i, format) for i in times]
[1175]787        else:
[1947]788            return datetime.strptime(times, format)
[102]789
[1348]790
791    def get_inttime(self, row=-1):
[1846]792        """\
[1348]793        Get a list of integration times for the observations.
794        Return a time in seconds for each integration in the scantable.
[1846]795
[1348]796        Parameters:
[1846]797
[1348]798            row:    row no of integration. Default -1 return all rows.
[1846]799
[1348]800        """
[1573]801        return self._get_column(self._getinttime, row)
[1348]802
[1573]803
[714]804    def get_sourcename(self, row=-1):
[1846]805        """\
[794]806        Get a list source names for the observations.
[714]807        Return a string for each integration in the scantable.
808        Parameters:
[1846]809
[1348]810            row:    row no of integration. Default -1 return all rows.
[1846]811
[714]812        """
[1070]813        return self._get_column(self._getsourcename, row)
[714]814
[794]815    def get_elevation(self, row=-1):
[1846]816        """\
[794]817        Get a list of elevations for the observations.
818        Return a float for each integration in the scantable.
[1846]819
[794]820        Parameters:
[1846]821
[1348]822            row:    row no of integration. Default -1 return all rows.
[1846]823
[794]824        """
[1070]825        return self._get_column(self._getelevation, row)
[794]826
827    def get_azimuth(self, row=-1):
[1846]828        """\
[794]829        Get a list of azimuths for the observations.
830        Return a float for each integration in the scantable.
[1846]831
[794]832        Parameters:
[1348]833            row:    row no of integration. Default -1 return all rows.
[1846]834
[794]835        """
[1070]836        return self._get_column(self._getazimuth, row)
[794]837
838    def get_parangle(self, row=-1):
[1846]839        """\
[794]840        Get a list of parallactic angles for the observations.
841        Return a float for each integration in the scantable.
[1846]842
[794]843        Parameters:
[1846]844
[1348]845            row:    row no of integration. Default -1 return all rows.
[1846]846
[794]847        """
[1070]848        return self._get_column(self._getparangle, row)
[794]849
[1070]850    def get_direction(self, row=-1):
851        """
852        Get a list of Positions on the sky (direction) for the observations.
[1594]853        Return a string for each integration in the scantable.
[1855]854
[1070]855        Parameters:
[1855]856
[1070]857            row:    row no of integration. Default -1 return all rows
[1855]858
[1070]859        """
860        return self._get_column(self._getdirection, row)
861
[1391]862    def get_directionval(self, row=-1):
[1846]863        """\
[1391]864        Get a list of Positions on the sky (direction) for the observations.
865        Return a float for each integration in the scantable.
[1846]866
[1391]867        Parameters:
[1846]868
[1391]869            row:    row no of integration. Default -1 return all rows
[1846]870
[1391]871        """
872        return self._get_column(self._getdirectionvec, row)
873
[1862]874    @asaplog_post_dec
[102]875    def set_unit(self, unit='channel'):
[1846]876        """\
[102]877        Set the unit for all following operations on this scantable
[1846]878
[102]879        Parameters:
[1846]880
881            unit:    optional unit, default is 'channel'. Use one of '*Hz',
882                     'km/s', 'channel' or equivalent ''
883
[102]884        """
[484]885        varlist = vars()
[1118]886        if unit in ['', 'pixel', 'channel']:
[113]887            unit = ''
888        inf = list(self._getcoordinfo())
889        inf[0] = unit
890        self._setcoordinfo(inf)
[1118]891        self._add_history("set_unit", varlist)
[113]892
[1862]893    @asaplog_post_dec
[484]894    def set_instrument(self, instr):
[1846]895        """\
[1348]896        Set the instrument for subsequent processing.
[1846]897
[358]898        Parameters:
[1846]899
[710]900            instr:    Select from 'ATPKSMB', 'ATPKSHOH', 'ATMOPRA',
[407]901                      'DSS-43' (Tid), 'CEDUNA', and 'HOBART'
[1846]902
[358]903        """
904        self._setInstrument(instr)
[1118]905        self._add_history("set_instument", vars())
[358]906
[1862]907    @asaplog_post_dec
[1190]908    def set_feedtype(self, feedtype):
[1846]909        """\
[1190]910        Overwrite the feed type, which might not be set correctly.
[1846]911
[1190]912        Parameters:
[1846]913
[1190]914            feedtype:     'linear' or 'circular'
[1846]915
[1190]916        """
917        self._setfeedtype(feedtype)
918        self._add_history("set_feedtype", vars())
919
[1862]920    @asaplog_post_dec
[276]921    def set_doppler(self, doppler='RADIO'):
[1846]922        """\
[276]923        Set the doppler for all following operations on this scantable.
[1846]924
[276]925        Parameters:
[1846]926
[276]927            doppler:    One of 'RADIO', 'OPTICAL', 'Z', 'BETA', 'GAMMA'
[1846]928
[276]929        """
[484]930        varlist = vars()
[276]931        inf = list(self._getcoordinfo())
932        inf[2] = doppler
933        self._setcoordinfo(inf)
[1118]934        self._add_history("set_doppler", vars())
[710]935
[1862]936    @asaplog_post_dec
[226]937    def set_freqframe(self, frame=None):
[1846]938        """\
[113]939        Set the frame type of the Spectral Axis.
[1846]940
[113]941        Parameters:
[1846]942
[591]943            frame:   an optional frame type, default 'LSRK'. Valid frames are:
[1819]944                     'TOPO', 'LSRD', 'LSRK', 'BARY',
[1118]945                     'GEO', 'GALACTO', 'LGROUP', 'CMB'
[1846]946
947        Example::
948
[113]949            scan.set_freqframe('BARY')
[1846]950
[113]951        """
[1593]952        frame = frame or rcParams['scantable.freqframe']
[484]953        varlist = vars()
[1819]954        # "REST" is not implemented in casacore
955        #valid = ['REST', 'TOPO', 'LSRD', 'LSRK', 'BARY', \
956        #           'GEO', 'GALACTO', 'LGROUP', 'CMB']
957        valid = ['TOPO', 'LSRD', 'LSRK', 'BARY', \
[1118]958                   'GEO', 'GALACTO', 'LGROUP', 'CMB']
[591]959
[989]960        if frame in valid:
[113]961            inf = list(self._getcoordinfo())
962            inf[1] = frame
963            self._setcoordinfo(inf)
[1118]964            self._add_history("set_freqframe", varlist)
[102]965        else:
[1118]966            msg  = "Please specify a valid freq type. Valid types are:\n", valid
[1859]967            raise TypeError(msg)
[710]968
[1862]969    @asaplog_post_dec
[989]970    def set_dirframe(self, frame=""):
[1846]971        """\
[989]972        Set the frame type of the Direction on the sky.
[1846]973
[989]974        Parameters:
[1846]975
[989]976            frame:   an optional frame type, default ''. Valid frames are:
977                     'J2000', 'B1950', 'GALACTIC'
[1846]978
979        Example:
980
[989]981            scan.set_dirframe('GALACTIC')
[1846]982
[989]983        """
984        varlist = vars()
[1859]985        Scantable.set_dirframe(self, frame)
[1118]986        self._add_history("set_dirframe", varlist)
[989]987
[113]988    def get_unit(self):
[1846]989        """\
[113]990        Get the default unit set in this scantable
[1846]991
[113]992        Returns:
[1846]993
[113]994            A unit string
[1846]995
[113]996        """
997        inf = self._getcoordinfo()
998        unit = inf[0]
999        if unit == '': unit = 'channel'
1000        return unit
[102]1001
[1862]1002    @asaplog_post_dec
[158]1003    def get_abcissa(self, rowno=0):
[1846]1004        """\
[158]1005        Get the abcissa in the current coordinate setup for the currently
[113]1006        selected Beam/IF/Pol
[1846]1007
[113]1008        Parameters:
[1846]1009
[226]1010            rowno:    an optional row number in the scantable. Default is the
1011                      first row, i.e. rowno=0
[1846]1012
[113]1013        Returns:
[1846]1014
[1348]1015            The abcissa values and the format string (as a dictionary)
[1846]1016
[113]1017        """
[256]1018        abc = self._getabcissa(rowno)
[710]1019        lbl = self._getabcissalabel(rowno)
[158]1020        return abc, lbl
[113]1021
[1862]1022    @asaplog_post_dec
[1994]1023    def flag(self, row=-1, mask=None, unflag=False):
[1846]1024        """\
[1001]1025        Flag the selected data using an optional channel mask.
[1846]1026
[1001]1027        Parameters:
[1846]1028
[1994]1029            row:    an optional row number in the scantable.
1030                      Default -1 flags all rows
1031                     
[1001]1032            mask:   an optional channel mask, created with create_mask. Default
1033                    (no mask) is all channels.
[1855]1034
[1819]1035            unflag:    if True, unflag the data
[1846]1036
[1001]1037        """
1038        varlist = vars()
[1593]1039        mask = mask or []
[1994]1040        self._flag(row, mask, unflag)
[1001]1041        self._add_history("flag", varlist)
1042
[1862]1043    @asaplog_post_dec
[1819]1044    def flag_row(self, rows=[], unflag=False):
[1846]1045        """\
[1819]1046        Flag the selected data in row-based manner.
[1846]1047
[1819]1048        Parameters:
[1846]1049
[1843]1050            rows:   list of row numbers to be flagged. Default is no row
1051                    (must be explicitly specified to execute row-based flagging).
[1855]1052
[1819]1053            unflag: if True, unflag the data.
[1846]1054
[1819]1055        """
1056        varlist = vars()
[1859]1057        self._flag_row(rows, unflag)
[1819]1058        self._add_history("flag_row", varlist)
1059
[1862]1060    @asaplog_post_dec
[1819]1061    def clip(self, uthres=None, dthres=None, clipoutside=True, unflag=False):
[1846]1062        """\
[1819]1063        Flag the selected data outside a specified range (in channel-base)
[1846]1064
[1819]1065        Parameters:
[1846]1066
[1819]1067            uthres:      upper threshold.
[1855]1068
[1819]1069            dthres:      lower threshold
[1846]1070
[1819]1071            clipoutside: True for flagging data outside the range [dthres:uthres].
[1928]1072                         False for flagging data inside the range.
[1855]1073
[1846]1074            unflag:      if True, unflag the data.
1075
[1819]1076        """
1077        varlist = vars()
[1859]1078        self._clip(uthres, dthres, clipoutside, unflag)
[1819]1079        self._add_history("clip", varlist)
1080
[1862]1081    @asaplog_post_dec
[1584]1082    def lag_flag(self, start, end, unit="MHz", insitu=None):
[1846]1083        """\
[1192]1084        Flag the data in 'lag' space by providing a frequency to remove.
[1584]1085        Flagged data in the scantable gets interpolated over the region.
[1192]1086        No taper is applied.
[1846]1087
[1192]1088        Parameters:
[1846]1089
[1579]1090            start:    the start frequency (really a period within the
1091                      bandwidth)  or period to remove
[1855]1092
[1579]1093            end:      the end frequency or period to remove
[1855]1094
[1584]1095            unit:     the frequency unit (default "MHz") or "" for
[1579]1096                      explicit lag channels
[1846]1097
1098        *Notes*:
1099
[1579]1100            It is recommended to flag edges of the band or strong
[1348]1101            signals beforehand.
[1846]1102
[1192]1103        """
1104        if insitu is None: insitu = rcParams['insitu']
1105        self._math._setinsitu(insitu)
1106        varlist = vars()
[1579]1107        base = { "GHz": 1000000000., "MHz": 1000000., "kHz": 1000., "Hz": 1.}
1108        if not (unit == "" or base.has_key(unit)):
[1192]1109            raise ValueError("%s is not a valid unit." % unit)
[1859]1110        if unit == "":
1111            s = scantable(self._math._lag_flag(self, start, end, "lags"))
1112        else:
1113            s = scantable(self._math._lag_flag(self, start*base[unit],
1114                                               end*base[unit], "frequency"))
[1192]1115        s._add_history("lag_flag", varlist)
1116        if insitu:
1117            self._assign(s)
1118        else:
1119            return s
[1001]1120
[1862]1121    @asaplog_post_dec
[113]1122    def create_mask(self, *args, **kwargs):
[1846]1123        """\
[1118]1124        Compute and return a mask based on [min, max] windows.
[189]1125        The specified windows are to be INCLUDED, when the mask is
[113]1126        applied.
[1846]1127
[102]1128        Parameters:
[1846]1129
[1118]1130            [min, max], [min2, max2], ...
[1024]1131                Pairs of start/end points (inclusive)specifying the regions
[102]1132                to be masked
[1855]1133
[189]1134            invert:     optional argument. If specified as True,
1135                        return an inverted mask, i.e. the regions
1136                        specified are EXCLUDED
[1855]1137
[513]1138            row:        create the mask using the specified row for
1139                        unit conversions, default is row=0
1140                        only necessary if frequency varies over rows.
[1846]1141
1142        Examples::
1143
[113]1144            scan.set_unit('channel')
[1846]1145            # a)
[1118]1146            msk = scan.create_mask([400, 500], [800, 900])
[189]1147            # masks everything outside 400 and 500
[113]1148            # and 800 and 900 in the unit 'channel'
1149
[1846]1150            # b)
[1118]1151            msk = scan.create_mask([400, 500], [800, 900], invert=True)
[189]1152            # masks the regions between 400 and 500
[113]1153            # and 800 and 900 in the unit 'channel'
[1846]1154
1155            # c)
1156            #mask only channel 400
[1554]1157            msk =  scan.create_mask([400])
[1846]1158
[102]1159        """
[1554]1160        row = kwargs.get("row", 0)
[513]1161        data = self._getabcissa(row)
[113]1162        u = self._getcoordinfo()[0]
[1859]1163        if u == "":
1164            u = "channel"
1165        msg = "The current mask window unit is %s" % u
1166        i = self._check_ifs()
1167        if not i:
1168            msg += "\nThis mask is only valid for IF=%d" % (self.getif(i))
1169        asaplog.push(msg)
[102]1170        n = self.nchan()
[1295]1171        msk = _n_bools(n, False)
[710]1172        # test if args is a 'list' or a 'normal *args - UGLY!!!
1173
[1118]1174        ws = (isinstance(args[-1][-1], int) or isinstance(args[-1][-1], float)) \
1175             and args or args[0]
[710]1176        for window in ws:
[1554]1177            if len(window) == 1:
1178                window = [window[0], window[0]]
1179            if len(window) == 0 or  len(window) > 2:
1180                raise ValueError("A window needs to be defined as [start(, end)]")
[1545]1181            if window[0] > window[1]:
1182                tmp = window[0]
1183                window[0] = window[1]
1184                window[1] = tmp
[102]1185            for i in range(n):
[1024]1186                if data[i] >= window[0] and data[i] <= window[1]:
[1295]1187                    msk[i] = True
[113]1188        if kwargs.has_key('invert'):
1189            if kwargs.get('invert'):
[1295]1190                msk = mask_not(msk)
[102]1191        return msk
[710]1192
[1931]1193    def get_masklist(self, mask=None, row=0, silent=False):
[1846]1194        """\
[1819]1195        Compute and return a list of mask windows, [min, max].
[1846]1196
[1819]1197        Parameters:
[1846]1198
[1819]1199            mask:       channel mask, created with create_mask.
[1855]1200
[1819]1201            row:        calcutate the masklist using the specified row
1202                        for unit conversions, default is row=0
1203                        only necessary if frequency varies over rows.
[1846]1204
[1819]1205        Returns:
[1846]1206
[1819]1207            [min, max], [min2, max2], ...
1208                Pairs of start/end points (inclusive)specifying
1209                the masked regions
[1846]1210
[1819]1211        """
1212        if not (isinstance(mask,list) or isinstance(mask, tuple)):
1213            raise TypeError("The mask should be list or tuple.")
1214        if len(mask) < 2:
1215            raise TypeError("The mask elements should be > 1")
1216        if self.nchan() != len(mask):
1217            msg = "Number of channels in scantable != number of mask elements"
1218            raise TypeError(msg)
1219        data = self._getabcissa(row)
1220        u = self._getcoordinfo()[0]
[1859]1221        if u == "":
1222            u = "channel"
1223        msg = "The current mask window unit is %s" % u
1224        i = self._check_ifs()
1225        if not i:
1226            msg += "\nThis mask is only valid for IF=%d" % (self.getif(i))
[1931]1227        if not silent:
1228            asaplog.push(msg)
[1819]1229        masklist=[]
1230        ist, ien = None, None
1231        ist, ien=self.get_mask_indices(mask)
1232        if ist is not None and ien is not None:
1233            for i in xrange(len(ist)):
1234                range=[data[ist[i]],data[ien[i]]]
1235                range.sort()
1236                masklist.append([range[0],range[1]])
1237        return masklist
1238
1239    def get_mask_indices(self, mask=None):
[1846]1240        """\
[1819]1241        Compute and Return lists of mask start indices and mask end indices.
[1855]1242
1243        Parameters:
1244
[1819]1245            mask:       channel mask, created with create_mask.
[1846]1246
[1819]1247        Returns:
[1846]1248
[1819]1249            List of mask start indices and that of mask end indices,
1250            i.e., [istart1,istart2,....], [iend1,iend2,....].
[1846]1251
[1819]1252        """
1253        if not (isinstance(mask,list) or isinstance(mask, tuple)):
1254            raise TypeError("The mask should be list or tuple.")
1255        if len(mask) < 2:
1256            raise TypeError("The mask elements should be > 1")
1257        istart=[]
1258        iend=[]
1259        if mask[0]: istart.append(0)
1260        for i in range(len(mask)-1):
1261            if not mask[i] and mask[i+1]:
1262                istart.append(i+1)
1263            elif mask[i] and not mask[i+1]:
1264                iend.append(i)
1265        if mask[len(mask)-1]: iend.append(len(mask)-1)
1266        if len(istart) != len(iend):
1267            raise RuntimeError("Numbers of mask start != mask end.")
1268        for i in range(len(istart)):
1269            if istart[i] > iend[i]:
1270                raise RuntimeError("Mask start index > mask end index")
1271                break
1272        return istart,iend
1273
[2013]1274    @asaplog_post_dec
1275    def parse_maskexpr(self,maskstring):
1276        """
1277        Parse CASA type mask selection syntax (IF dependent).
1278
1279        Parameters:
1280            maskstring : A string mask selection expression.
1281                         A comma separated selections mean different IF -
1282                         channel combinations. IFs and channel selections
1283                         are partitioned by a colon, ':'.
1284                     examples:
[2015]1285                         ''          = all IFs (all channels)
[2013]1286                         '<2,4~6,9'  = IFs 0,1,4,5,6,9 (all channels)
1287                         '3:3~45;60' = channels 3 to 45 and 60 in IF 3
1288                         '0~1:2~6,8' = channels 2 to 6 in IFs 0,1, and
1289                                       all channels in IF8
1290        Returns:
1291        A dictionary of selected (valid) IF and masklist pairs,
1292        e.g. {'0': [[50,250],[350,462]], '2': [[100,400],[550,974]]}
1293        """
1294        if not isinstance(maskstring,str):
1295            asaplog.post()
1296            asaplog.push("Invalid mask expression")
1297            asaplog.post("ERROR")
1298       
1299        valid_ifs = self.getifnos()
1300        frequnit = self.get_unit()
1301        seldict = {}
[2015]1302        if maskstring == "":
1303            maskstring = str(valid_ifs)[1:-1]
[2013]1304        ## split each selection
1305        sellist = maskstring.split(',')
1306        for currselstr in sellist:
1307            selset = currselstr.split(':')
1308            # spw and mask string (may include ~, < or >)
1309            spwmasklist = self._parse_selection(selset[0],typestr='integer',
1310                                               offset=1,minval=min(valid_ifs),
1311                                               maxval=max(valid_ifs))
1312            for spwlist in spwmasklist:
1313                selspws = []
1314                for ispw in range(spwlist[0],spwlist[1]+1):
1315                    # Put into the list only if ispw exists
1316                    if valid_ifs.count(ispw):
1317                        selspws.append(ispw)
1318            del spwmasklist, spwlist
1319
1320            # parse frequency mask list
1321            if len(selset) > 1:
1322                freqmasklist = self._parse_selection(selset[1],typestr='float',
1323                                                    offset=0.)
1324            else:
1325                # want to select the whole spectrum
1326                freqmasklist = [None]
1327
1328            ## define a dictionary of spw - masklist combination
1329            for ispw in selspws:
1330                #print "working on", ispw
1331                spwstr = str(ispw)
1332                if len(selspws) == 0:
1333                    # empty spw
1334                    continue
1335                else:
1336                    ## want to get min and max of the spw and
1337                    ## offset to set for '<' and '>'
1338                    if frequnit == 'channel':
1339                        minfreq = 0
1340                        maxfreq = self.nchan(ifno=ispw)
1341                        offset = 0.5
1342                    else:
1343                        ## This is ugly part. need improvement
1344                        for ifrow in xrange(self.nrow()):
1345                            if self.getif(ifrow) == ispw:
1346                                #print "IF",ispw,"found in row =",ifrow
1347                                break
1348                        freqcoord = self.get_coordinate(ifrow)
1349                        freqs = self._getabcissa(ifrow)
1350                        minfreq = min(freqs)
1351                        maxfreq = max(freqs)
1352                        if len(freqs) == 1:
1353                            offset = 0.5
1354                        elif frequnit.find('Hz') > 0:
1355                            offset = abs(freqcoord.to_frequency(1,unit=frequnit)
1356                                      -freqcoord.to_frequency(0,unit=frequnit))*0.5
1357                        elif frequnit.find('m/s') > 0:
1358                            offset = abs(freqcoord.to_velocity(1,unit=frequnit)
1359                                      -freqcoord.to_velocity(0,unit=frequnit))*0.5
1360                        else:
1361                            asaplog.post()
1362                            asaplog.push("Invalid frequency unit")
1363                            asaplog.post("ERROR")
1364                        del freqs, freqcoord, ifrow
1365                    for freq in freqmasklist:
1366                        selmask = freq or [minfreq, maxfreq]
1367                        if selmask[0] == None:
1368                            ## selection was "<freq[1]".
1369                            if selmask[1] < minfreq:
1370                                ## avoid adding region selection
1371                                selmask = None
1372                            else:
1373                                selmask = [minfreq,selmask[1]-offset]
1374                        elif selmask[1] == None:
1375                            ## selection was ">freq[0]"
1376                            if selmask[0] > maxfreq:
1377                                ## avoid adding region selection
1378                                selmask = None
1379                            else:
1380                                selmask = [selmask[0]+offset,maxfreq]
1381                        if selmask:
1382                            if not seldict.has_key(spwstr):
1383                                # new spw selection
1384                                seldict[spwstr] = []
1385                            seldict[spwstr] += [selmask]
1386                    del minfreq,maxfreq,offset,freq,selmask
1387                del spwstr
1388            del freqmasklist
1389        del valid_ifs
1390        if len(seldict) == 0:
1391            asaplog.post()
1392            asaplog.push("No valid selection in the mask expression: "+maskstring)
1393            asaplog.post("WARN")
1394            return None
1395        msg = "Selected masklist:\n"
1396        for sif, lmask in seldict.iteritems():
1397            msg += "   IF"+sif+" - "+str(lmask)+"\n"
1398        asaplog.push(msg)
1399        return seldict
1400
1401    def _parse_selection(self,selstr,typestr='float',offset=0.,minval=None,maxval=None):
1402        """
1403        Parameters:
1404            selstr :    The Selection string, e.g., '<3;5~7;100~103;9'
1405            typestr :   The type of the values in returned list
1406                        ('integer' or 'float')
1407            offset :    The offset value to subtract from or add to
1408                        the boundary value if the selection string
1409                        includes '<' or '>'
1410            minval, maxval :  The minimum/maximum values to set if the
1411                              selection string includes '<' or '>'.
1412                              The list element is filled with None by default.
1413        Returns:
1414            A list of min/max pair of selections.
1415        Example:
1416            _parseSelection('<3;5~7;9',typestr='int',offset=1,minval=0)
1417            returns [[0,2],[5,7],[9,9]]
1418        """
1419        selgroups = selstr.split(';')
1420        sellists = []
1421        if typestr.lower().startswith('int'):
1422            formatfunc = int
1423        else:
1424            formatfunc = float
1425       
1426        for currsel in  selgroups:
1427            if currsel.find('~') > 0:
1428                minsel = formatfunc(currsel.split('~')[0].strip())
1429                maxsel = formatfunc(currsel.split('~')[1].strip())
1430            elif currsel.strip().startswith('<'):
1431                minsel = minval
1432                maxsel = formatfunc(currsel.split('<')[1].strip()) \
1433                         - formatfunc(offset)
1434            elif currsel.strip().startswith('>'):
1435                minsel = formatfunc(currsel.split('>')[1].strip()) \
1436                         + formatfunc(offset)
1437                maxsel = maxval
1438            else:
1439                minsel = formatfunc(currsel)
1440                maxsel = formatfunc(currsel)
1441            sellists.append([minsel,maxsel])
1442        return sellists
1443
[1819]1444#    def get_restfreqs(self):
1445#        """
1446#        Get the restfrequency(s) stored in this scantable.
1447#        The return value(s) are always of unit 'Hz'
1448#        Parameters:
1449#            none
1450#        Returns:
1451#            a list of doubles
1452#        """
1453#        return list(self._getrestfreqs())
1454
1455    def get_restfreqs(self, ids=None):
[1846]1456        """\
[256]1457        Get the restfrequency(s) stored in this scantable.
1458        The return value(s) are always of unit 'Hz'
[1846]1459
[256]1460        Parameters:
[1846]1461
[1819]1462            ids: (optional) a list of MOLECULE_ID for that restfrequency(s) to
1463                 be retrieved
[1846]1464
[256]1465        Returns:
[1846]1466
[1819]1467            dictionary containing ids and a list of doubles for each id
[1846]1468
[256]1469        """
[1819]1470        if ids is None:
1471            rfreqs={}
1472            idlist = self.getmolnos()
1473            for i in idlist:
1474                rfreqs[i]=list(self._getrestfreqs(i))
1475            return rfreqs
1476        else:
1477            if type(ids)==list or type(ids)==tuple:
1478                rfreqs={}
1479                for i in ids:
1480                    rfreqs[i]=list(self._getrestfreqs(i))
1481                return rfreqs
1482            else:
1483                return list(self._getrestfreqs(ids))
1484            #return list(self._getrestfreqs(ids))
[102]1485
[931]1486    def set_restfreqs(self, freqs=None, unit='Hz'):
[1846]1487        """\
[931]1488        Set or replace the restfrequency specified and
[1938]1489        if the 'freqs' argument holds a scalar,
[931]1490        then that rest frequency will be applied to all the selected
1491        data.  If the 'freqs' argument holds
1492        a vector, then it MUST be of equal or smaller length than
1493        the number of IFs (and the available restfrequencies will be
1494        replaced by this vector).  In this case, *all* data have
1495        the restfrequency set per IF according
1496        to the corresponding value you give in the 'freqs' vector.
[1118]1497        E.g. 'freqs=[1e9, 2e9]'  would mean IF 0 gets restfreq 1e9 and
[931]1498        IF 1 gets restfreq 2e9.
[1846]1499
[1395]1500        You can also specify the frequencies via a linecatalog.
[1153]1501
[931]1502        Parameters:
[1846]1503
[931]1504            freqs:   list of rest frequency values or string idenitfiers
[1855]1505
[931]1506            unit:    unit for rest frequency (default 'Hz')
[402]1507
[1846]1508
1509        Example::
1510
[1819]1511            # set the given restfrequency for the all currently selected IFs
[931]1512            scan.set_restfreqs(freqs=1.4e9)
[1845]1513            # set restfrequencies for the n IFs  (n > 1) in the order of the
1514            # list, i.e
1515            # IF0 -> 1.4e9, IF1 ->  1.41e9, IF3 -> 1.42e9
1516            # len(list_of_restfreqs) == nIF
1517            # for nIF == 1 the following will set multiple restfrequency for
1518            # that IF
[1819]1519            scan.set_restfreqs(freqs=[1.4e9, 1.41e9, 1.42e9])
[1845]1520            # set multiple restfrequencies per IF. as a list of lists where
1521            # the outer list has nIF elements, the inner s arbitrary
1522            scan.set_restfreqs(freqs=[[1.4e9, 1.41e9], [1.67e9]])
[391]1523
[1846]1524       *Note*:
[1845]1525
[931]1526            To do more sophisticate Restfrequency setting, e.g. on a
1527            source and IF basis, use scantable.set_selection() before using
[1846]1528            this function::
[931]1529
[1846]1530                # provided your scantable is called scan
1531                selection = selector()
1532                selection.set_name("ORION*")
1533                selection.set_ifs([1])
1534                scan.set_selection(selection)
1535                scan.set_restfreqs(freqs=86.6e9)
1536
[931]1537        """
1538        varlist = vars()
[1157]1539        from asap import linecatalog
1540        # simple  value
[1118]1541        if isinstance(freqs, int) or isinstance(freqs, float):
[1845]1542            self._setrestfreqs([freqs], [""], unit)
[1157]1543        # list of values
[1118]1544        elif isinstance(freqs, list) or isinstance(freqs, tuple):
[1157]1545            # list values are scalars
[1118]1546            if isinstance(freqs[-1], int) or isinstance(freqs[-1], float):
[1845]1547                if len(freqs) == 1:
1548                    self._setrestfreqs(freqs, [""], unit)
1549                else:
1550                    # allow the 'old' mode of setting mulitple IFs
1551                    sel = selector()
1552                    savesel = self._getselection()
1553                    iflist = self.getifnos()
1554                    if len(freqs)>len(iflist):
1555                        raise ValueError("number of elements in list of list "
1556                                         "exeeds the current IF selections")
1557                    iflist = self.getifnos()
1558                    for i, fval in enumerate(freqs):
1559                        sel.set_ifs(iflist[i])
1560                        self._setselection(sel)
1561                        self._setrestfreqs([fval], [""], unit)
1562                    self._setselection(savesel)
1563
1564            # list values are dict, {'value'=, 'name'=)
[1157]1565            elif isinstance(freqs[-1], dict):
[1845]1566                values = []
1567                names = []
1568                for d in freqs:
1569                    values.append(d["value"])
1570                    names.append(d["name"])
1571                self._setrestfreqs(values, names, unit)
[1819]1572            elif isinstance(freqs[-1], list) or isinstance(freqs[-1], tuple):
[1157]1573                sel = selector()
1574                savesel = self._getselection()
[1322]1575                iflist = self.getifnos()
[1819]1576                if len(freqs)>len(iflist):
[1845]1577                    raise ValueError("number of elements in list of list exeeds"
1578                                     " the current IF selections")
1579                for i, fval in enumerate(freqs):
[1322]1580                    sel.set_ifs(iflist[i])
[1259]1581                    self._setselection(sel)
[1845]1582                    self._setrestfreqs(fval, [""], unit)
[1157]1583                self._setselection(savesel)
1584        # freqs are to be taken from a linecatalog
[1153]1585        elif isinstance(freqs, linecatalog):
1586            sel = selector()
1587            savesel = self._getselection()
1588            for i in xrange(freqs.nrow()):
[1322]1589                sel.set_ifs(iflist[i])
[1153]1590                self._setselection(sel)
[1845]1591                self._setrestfreqs([freqs.get_frequency(i)],
1592                                   [freqs.get_name(i)], "MHz")
[1153]1593                # ensure that we are not iterating past nIF
1594                if i == self.nif()-1: break
1595            self._setselection(savesel)
[931]1596        else:
1597            return
1598        self._add_history("set_restfreqs", varlist)
1599
[1360]1600    def shift_refpix(self, delta):
[1846]1601        """\
[1589]1602        Shift the reference pixel of the Spectra Coordinate by an
1603        integer amount.
[1846]1604
[1589]1605        Parameters:
[1846]1606
[1589]1607            delta:   the amount to shift by
[1846]1608
1609        *Note*:
1610
[1589]1611            Be careful using this with broadband data.
[1846]1612
[1360]1613        """
[1731]1614        Scantable.shift_refpix(self, delta)
[931]1615
[1862]1616    @asaplog_post_dec
[1259]1617    def history(self, filename=None):
[1846]1618        """\
[1259]1619        Print the history. Optionally to a file.
[1846]1620
[1348]1621        Parameters:
[1846]1622
[1928]1623            filename:    The name of the file to save the history to.
[1846]1624
[1259]1625        """
[484]1626        hist = list(self._gethistory())
[794]1627        out = "-"*80
[484]1628        for h in hist:
[489]1629            if h.startswith("---"):
[1857]1630                out = "\n".join([out, h])
[489]1631            else:
1632                items = h.split("##")
1633                date = items[0]
1634                func = items[1]
1635                items = items[2:]
[794]1636                out += "\n"+date+"\n"
1637                out += "Function: %s\n  Parameters:" % (func)
[489]1638                for i in items:
[1938]1639                    if i == '':
1640                        continue
[489]1641                    s = i.split("=")
[1118]1642                    out += "\n   %s = %s" % (s[0], s[1])
[1857]1643                out = "\n".join([out, "-"*80])
[1259]1644        if filename is not None:
1645            if filename is "":
1646                filename = 'scantable_history.txt'
1647            import os
1648            filename = os.path.expandvars(os.path.expanduser(filename))
1649            if not os.path.isdir(filename):
1650                data = open(filename, 'w')
1651                data.write(out)
1652                data.close()
1653            else:
1654                msg = "Illegal file name '%s'." % (filename)
[1859]1655                raise IOError(msg)
1656        return page(out)
[513]1657    #
1658    # Maths business
1659    #
[1862]1660    @asaplog_post_dec
[931]1661    def average_time(self, mask=None, scanav=False, weight='tint', align=False):
[1846]1662        """\
[1070]1663        Return the (time) weighted average of a scan.
[1846]1664
1665        *Note*:
1666
[1070]1667            in channels only - align if necessary
[1846]1668
[513]1669        Parameters:
[1846]1670
[513]1671            mask:     an optional mask (only used for 'var' and 'tsys'
1672                      weighting)
[1855]1673
[558]1674            scanav:   True averages each scan separately
1675                      False (default) averages all scans together,
[1855]1676
[1099]1677            weight:   Weighting scheme.
1678                      'none'     (mean no weight)
1679                      'var'      (1/var(spec) weighted)
1680                      'tsys'     (1/Tsys**2 weighted)
1681                      'tint'     (integration time weighted)
1682                      'tintsys'  (Tint/Tsys**2)
1683                      'median'   ( median averaging)
[535]1684                      The default is 'tint'
[1855]1685
[931]1686            align:    align the spectra in velocity before averaging. It takes
1687                      the time of the first spectrum as reference time.
[1846]1688
1689        Example::
1690
[513]1691            # time average the scantable without using a mask
[710]1692            newscan = scan.average_time()
[1846]1693
[513]1694        """
1695        varlist = vars()
[1593]1696        weight = weight or 'TINT'
1697        mask = mask or ()
1698        scanav = (scanav and 'SCAN') or 'NONE'
[1118]1699        scan = (self, )
[1859]1700
1701        if align:
1702            scan = (self.freq_align(insitu=False), )
1703        s = None
1704        if weight.upper() == 'MEDIAN':
1705            s = scantable(self._math._averagechannel(scan[0], 'MEDIAN',
1706                                                     scanav))
1707        else:
1708            s = scantable(self._math._average(scan, mask, weight.upper(),
1709                          scanav))
[1099]1710        s._add_history("average_time", varlist)
[513]1711        return s
[710]1712
[1862]1713    @asaplog_post_dec
[876]1714    def convert_flux(self, jyperk=None, eta=None, d=None, insitu=None):
[1846]1715        """\
[513]1716        Return a scan where all spectra are converted to either
1717        Jansky or Kelvin depending upon the flux units of the scan table.
1718        By default the function tries to look the values up internally.
1719        If it can't find them (or if you want to over-ride), you must
1720        specify EITHER jyperk OR eta (and D which it will try to look up
1721        also if you don't set it). jyperk takes precedence if you set both.
[1846]1722
[513]1723        Parameters:
[1846]1724
[513]1725            jyperk:      the Jy / K conversion factor
[1855]1726
[513]1727            eta:         the aperture efficiency
[1855]1728
[1928]1729            d:           the geometric diameter (metres)
[1855]1730
[513]1731            insitu:      if False a new scantable is returned.
1732                         Otherwise, the scaling is done in-situ
1733                         The default is taken from .asaprc (False)
[1846]1734
[513]1735        """
1736        if insitu is None: insitu = rcParams['insitu']
[876]1737        self._math._setinsitu(insitu)
[513]1738        varlist = vars()
[1593]1739        jyperk = jyperk or -1.0
1740        d = d or -1.0
1741        eta = eta or -1.0
[876]1742        s = scantable(self._math._convertflux(self, d, eta, jyperk))
1743        s._add_history("convert_flux", varlist)
1744        if insitu: self._assign(s)
1745        else: return s
[513]1746
[1862]1747    @asaplog_post_dec
[876]1748    def gain_el(self, poly=None, filename="", method="linear", insitu=None):
[1846]1749        """\
[513]1750        Return a scan after applying a gain-elevation correction.
1751        The correction can be made via either a polynomial or a
1752        table-based interpolation (and extrapolation if necessary).
1753        You specify polynomial coefficients, an ascii table or neither.
1754        If you specify neither, then a polynomial correction will be made
1755        with built in coefficients known for certain telescopes (an error
1756        will occur if the instrument is not known).
1757        The data and Tsys are *divided* by the scaling factors.
[1846]1758
[513]1759        Parameters:
[1846]1760
[513]1761            poly:        Polynomial coefficients (default None) to compute a
1762                         gain-elevation correction as a function of
1763                         elevation (in degrees).
[1855]1764
[513]1765            filename:    The name of an ascii file holding correction factors.
1766                         The first row of the ascii file must give the column
1767                         names and these MUST include columns
1768                         "ELEVATION" (degrees) and "FACTOR" (multiply data
1769                         by this) somewhere.
1770                         The second row must give the data type of the
1771                         column. Use 'R' for Real and 'I' for Integer.
1772                         An example file would be
1773                         (actual factors are arbitrary) :
1774
1775                         TIME ELEVATION FACTOR
1776                         R R R
1777                         0.1 0 0.8
1778                         0.2 20 0.85
1779                         0.3 40 0.9
1780                         0.4 60 0.85
1781                         0.5 80 0.8
1782                         0.6 90 0.75
[1855]1783
[513]1784            method:      Interpolation method when correcting from a table.
1785                         Values are  "nearest", "linear" (default), "cubic"
1786                         and "spline"
[1855]1787
[513]1788            insitu:      if False a new scantable is returned.
1789                         Otherwise, the scaling is done in-situ
1790                         The default is taken from .asaprc (False)
[1846]1791
[513]1792        """
1793
1794        if insitu is None: insitu = rcParams['insitu']
[876]1795        self._math._setinsitu(insitu)
[513]1796        varlist = vars()
[1593]1797        poly = poly or ()
[513]1798        from os.path import expandvars
1799        filename = expandvars(filename)
[876]1800        s = scantable(self._math._gainel(self, poly, filename, method))
1801        s._add_history("gain_el", varlist)
[1593]1802        if insitu:
1803            self._assign(s)
1804        else:
1805            return s
[710]1806
[1862]1807    @asaplog_post_dec
[931]1808    def freq_align(self, reftime=None, method='cubic', insitu=None):
[1846]1809        """\
[513]1810        Return a scan where all rows have been aligned in frequency/velocity.
1811        The alignment frequency frame (e.g. LSRK) is that set by function
1812        set_freqframe.
[1846]1813
[513]1814        Parameters:
[1855]1815
[513]1816            reftime:     reference time to align at. By default, the time of
1817                         the first row of data is used.
[1855]1818
[513]1819            method:      Interpolation method for regridding the spectra.
1820                         Choose from "nearest", "linear", "cubic" (default)
1821                         and "spline"
[1855]1822
[513]1823            insitu:      if False a new scantable is returned.
1824                         Otherwise, the scaling is done in-situ
1825                         The default is taken from .asaprc (False)
[1846]1826
[513]1827        """
[931]1828        if insitu is None: insitu = rcParams["insitu"]
[876]1829        self._math._setinsitu(insitu)
[513]1830        varlist = vars()
[1593]1831        reftime = reftime or ""
[931]1832        s = scantable(self._math._freq_align(self, reftime, method))
[876]1833        s._add_history("freq_align", varlist)
1834        if insitu: self._assign(s)
1835        else: return s
[513]1836
[1862]1837    @asaplog_post_dec
[1725]1838    def opacity(self, tau=None, insitu=None):
[1846]1839        """\
[513]1840        Apply an opacity correction. The data
1841        and Tsys are multiplied by the correction factor.
[1846]1842
[513]1843        Parameters:
[1855]1844
[1689]1845            tau:         (list of) opacity from which the correction factor is
[513]1846                         exp(tau*ZD)
[1689]1847                         where ZD is the zenith-distance.
1848                         If a list is provided, it has to be of length nIF,
1849                         nIF*nPol or 1 and in order of IF/POL, e.g.
1850                         [opif0pol0, opif0pol1, opif1pol0 ...]
[1725]1851                         if tau is `None` the opacities are determined from a
1852                         model.
[1855]1853
[513]1854            insitu:      if False a new scantable is returned.
1855                         Otherwise, the scaling is done in-situ
1856                         The default is taken from .asaprc (False)
[1846]1857
[513]1858        """
1859        if insitu is None: insitu = rcParams['insitu']
[876]1860        self._math._setinsitu(insitu)
[513]1861        varlist = vars()
[1689]1862        if not hasattr(tau, "__len__"):
1863            tau = [tau]
[876]1864        s = scantable(self._math._opacity(self, tau))
1865        s._add_history("opacity", varlist)
1866        if insitu: self._assign(s)
1867        else: return s
[513]1868
[1862]1869    @asaplog_post_dec
[513]1870    def bin(self, width=5, insitu=None):
[1846]1871        """\
[513]1872        Return a scan where all spectra have been binned up.
[1846]1873
[1348]1874        Parameters:
[1846]1875
[513]1876            width:       The bin width (default=5) in pixels
[1855]1877
[513]1878            insitu:      if False a new scantable is returned.
1879                         Otherwise, the scaling is done in-situ
1880                         The default is taken from .asaprc (False)
[1846]1881
[513]1882        """
1883        if insitu is None: insitu = rcParams['insitu']
[876]1884        self._math._setinsitu(insitu)
[513]1885        varlist = vars()
[876]1886        s = scantable(self._math._bin(self, width))
[1118]1887        s._add_history("bin", varlist)
[1589]1888        if insitu:
1889            self._assign(s)
1890        else:
1891            return s
[513]1892
[1862]1893    @asaplog_post_dec
[513]1894    def resample(self, width=5, method='cubic', insitu=None):
[1846]1895        """\
[1348]1896        Return a scan where all spectra have been binned up.
[1573]1897
[1348]1898        Parameters:
[1846]1899
[513]1900            width:       The bin width (default=5) in pixels
[1855]1901
[513]1902            method:      Interpolation method when correcting from a table.
1903                         Values are  "nearest", "linear", "cubic" (default)
1904                         and "spline"
[1855]1905
[513]1906            insitu:      if False a new scantable is returned.
1907                         Otherwise, the scaling is done in-situ
1908                         The default is taken from .asaprc (False)
[1846]1909
[513]1910        """
1911        if insitu is None: insitu = rcParams['insitu']
[876]1912        self._math._setinsitu(insitu)
[513]1913        varlist = vars()
[876]1914        s = scantable(self._math._resample(self, method, width))
[1118]1915        s._add_history("resample", varlist)
[876]1916        if insitu: self._assign(s)
1917        else: return s
[513]1918
[1862]1919    @asaplog_post_dec
[946]1920    def average_pol(self, mask=None, weight='none'):
[1846]1921        """\
[946]1922        Average the Polarisations together.
[1846]1923
[946]1924        Parameters:
[1846]1925
[946]1926            mask:        An optional mask defining the region, where the
1927                         averaging will be applied. The output will have all
1928                         specified points masked.
[1855]1929
[946]1930            weight:      Weighting scheme. 'none' (default), 'var' (1/var(spec)
1931                         weighted), or 'tsys' (1/Tsys**2 weighted)
[1846]1932
[946]1933        """
1934        varlist = vars()
[1593]1935        mask = mask or ()
[1010]1936        s = scantable(self._math._averagepol(self, mask, weight.upper()))
[1118]1937        s._add_history("average_pol", varlist)
[992]1938        return s
[513]1939
[1862]1940    @asaplog_post_dec
[1145]1941    def average_beam(self, mask=None, weight='none'):
[1846]1942        """\
[1145]1943        Average the Beams together.
[1846]1944
[1145]1945        Parameters:
1946            mask:        An optional mask defining the region, where the
1947                         averaging will be applied. The output will have all
1948                         specified points masked.
[1855]1949
[1145]1950            weight:      Weighting scheme. 'none' (default), 'var' (1/var(spec)
1951                         weighted), or 'tsys' (1/Tsys**2 weighted)
[1846]1952
[1145]1953        """
1954        varlist = vars()
[1593]1955        mask = mask or ()
[1145]1956        s = scantable(self._math._averagebeams(self, mask, weight.upper()))
1957        s._add_history("average_beam", varlist)
1958        return s
1959
[1586]1960    def parallactify(self, pflag):
[1846]1961        """\
[1843]1962        Set a flag to indicate whether this data should be treated as having
[1617]1963        been 'parallactified' (total phase == 0.0)
[1846]1964
[1617]1965        Parameters:
[1855]1966
[1843]1967            pflag:  Bool indicating whether to turn this on (True) or
[1617]1968                    off (False)
[1846]1969
[1617]1970        """
[1586]1971        varlist = vars()
1972        self._parallactify(pflag)
1973        self._add_history("parallactify", varlist)
1974
[1862]1975    @asaplog_post_dec
[992]1976    def convert_pol(self, poltype=None):
[1846]1977        """\
[992]1978        Convert the data to a different polarisation type.
[1565]1979        Note that you will need cross-polarisation terms for most conversions.
[1846]1980
[992]1981        Parameters:
[1855]1982
[992]1983            poltype:    The new polarisation type. Valid types are:
[1565]1984                        "linear", "circular", "stokes" and "linpol"
[1846]1985
[992]1986        """
1987        varlist = vars()
[1859]1988        s = scantable(self._math._convertpol(self, poltype))
[1118]1989        s._add_history("convert_pol", varlist)
[992]1990        return s
1991
[1862]1992    @asaplog_post_dec
[1819]1993    def smooth(self, kernel="hanning", width=5.0, order=2, plot=False, insitu=None):
[1846]1994        """\
[513]1995        Smooth the spectrum by the specified kernel (conserving flux).
[1846]1996
[513]1997        Parameters:
[1846]1998
[513]1999            kernel:     The type of smoothing kernel. Select from
[1574]2000                        'hanning' (default), 'gaussian', 'boxcar', 'rmedian'
2001                        or 'poly'
[1855]2002
[513]2003            width:      The width of the kernel in pixels. For hanning this is
2004                        ignored otherwise it defauls to 5 pixels.
2005                        For 'gaussian' it is the Full Width Half
2006                        Maximum. For 'boxcar' it is the full width.
[1574]2007                        For 'rmedian' and 'poly' it is the half width.
[1855]2008
[1574]2009            order:      Optional parameter for 'poly' kernel (default is 2), to
2010                        specify the order of the polnomial. Ignored by all other
2011                        kernels.
[1855]2012
[1819]2013            plot:       plot the original and the smoothed spectra.
2014                        In this each indivual fit has to be approved, by
2015                        typing 'y' or 'n'
[1855]2016
[513]2017            insitu:     if False a new scantable is returned.
2018                        Otherwise, the scaling is done in-situ
2019                        The default is taken from .asaprc (False)
[1846]2020
[513]2021        """
2022        if insitu is None: insitu = rcParams['insitu']
[876]2023        self._math._setinsitu(insitu)
[513]2024        varlist = vars()
[1819]2025
2026        if plot: orgscan = self.copy()
2027
[1574]2028        s = scantable(self._math._smooth(self, kernel.lower(), width, order))
[876]2029        s._add_history("smooth", varlist)
[1819]2030
2031        if plot:
2032            if rcParams['plotter.gui']:
2033                from asap.asaplotgui import asaplotgui as asaplot
2034            else:
2035                from asap.asaplot import asaplot
2036            self._p=asaplot()
2037            self._p.set_panels()
2038            ylab=s._get_ordinate_label()
2039            #self._p.palette(0,["#777777","red"])
2040            for r in xrange(s.nrow()):
2041                xsm=s._getabcissa(r)
2042                ysm=s._getspectrum(r)
2043                xorg=orgscan._getabcissa(r)
2044                yorg=orgscan._getspectrum(r)
2045                self._p.clear()
2046                self._p.hold()
2047                self._p.set_axes('ylabel',ylab)
2048                self._p.set_axes('xlabel',s._getabcissalabel(r))
2049                self._p.set_axes('title',s._getsourcename(r))
2050                self._p.set_line(label='Original',color="#777777")
2051                self._p.plot(xorg,yorg)
2052                self._p.set_line(label='Smoothed',color="red")
2053                self._p.plot(xsm,ysm)
2054                ### Ugly part for legend
2055                for i in [0,1]:
2056                    self._p.subplots[0]['lines'].append([self._p.subplots[0]['axes'].lines[i]])
2057                self._p.release()
2058                ### Ugly part for legend
2059                self._p.subplots[0]['lines']=[]
2060                res = raw_input("Accept smoothing ([y]/n): ")
2061                if res.upper() == 'N':
2062                    s._setspectrum(yorg, r)
2063            self._p.unmap()
2064            self._p = None
2065            del orgscan
2066
[876]2067        if insitu: self._assign(s)
2068        else: return s
[513]2069
[2012]2070
[1862]2071    @asaplog_post_dec
[2081]2072    def sinusoid_baseline(self, insitu=None, mask=None, nwave=None, maxwavelength=None,
2073                          clipthresh=None, clipniter=None, plot=None, getresidual=None, outlog=None, blfile=None):
[2047]2074        """\
[2081]2075        Return a scan which has been baselined (all rows) by sinusoidal functions.
[2047]2076        Parameters:
[2081]2077            insitu:        If False a new scantable is returned.
2078                           Otherwise, the scaling is done in-situ
2079                           The default is taken from .asaprc (False)
2080            mask:          An optional mask
2081            nwave:         the maximum wave number of sinusoids within
2082                           maxwavelength * (spectral range).
2083                           The default is 3 (i.e., sinusoids with wave
2084                           number of 0(=constant), 1, 2, and 3 are
2085                           used for fitting). Also it is possible to
2086                           explicitly specify all the wave numbers to
2087                           be used, by giving a list including them
2088                           (e.g. [0,1,2,15,16]).
2089            maxwavelength: the longest sinusoidal wavelength. The
2090                           default is 1.0 (unit: spectral range).
2091            clipthresh:    Clipping threshold. (default is 3.0, unit: sigma)
2092            clipniter:     maximum number of iteration of 'clipthresh'-sigma clipping (default is 1)
2093            plot:      *** CURRENTLY UNAVAILABLE, ALWAYS FALSE ***
2094                           plot the fit and the residual. In this each
2095                           indivual fit has to be approved, by typing 'y'
2096                           or 'n'
2097            getresidual:   if False, returns best-fit values instead of
2098                           residual. (default is True)
2099            outlog:        Output the coefficients of the best-fit
2100                           function to logger (default is False)
2101            blfile:        Name of a text file in which the best-fit
2102                           parameter values to be written
2103                           (default is "": no file/logger output)
[2047]2104
2105        Example:
2106            # return a scan baselined by a combination of sinusoidal curves having
[2081]2107            # wave numbers in spectral window up to 10,
[2047]2108            # also with 3-sigma clipping, iteration up to 4 times
[2081]2109            bscan = scan.sinusoid_baseline(nwave=10,clipthresh=3.0,clipniter=4)
2110
2111        Note:
2112            The best-fit parameter values output in logger and/or blfile are now
2113            based on specunit of 'channel'.
[2047]2114        """
2115       
2116        varlist = vars()
2117       
2118        if insitu is None: insitu = rcParams["insitu"]
2119        if insitu:
2120            workscan = self
2121        else:
2122            workscan = self.copy()
2123
2124        nchan = workscan.nchan()
2125       
[2081]2126        if mask          is None: mask          = [True for i in xrange(nchan)]
2127        if nwave         is None: nwave         = 3
2128        if maxwavelength is None: maxwavelength = 1.0
2129        if clipthresh    is None: clipthresh    = 3.0
2130        if clipniter     is None: clipniter     = 1
2131        if plot          is None: plot          = False
2132        if getresidual   is None: getresidual   = True
2133        if outlog        is None: outlog        = False
2134        if blfile        is None: blfile        = ""
[2047]2135
[2081]2136        if isinstance(nwave, int):
2137            in_nwave = nwave
2138            nwave = []
2139            for i in xrange(in_nwave+1): nwave.append(i)
2140       
[2047]2141        outblfile = (blfile != "") and os.path.exists(os.path.expanduser(os.path.expandvars(blfile)))
2142       
2143        try:
[2081]2144            #CURRENTLY, PLOT=true is UNAVAILABLE UNTIL sinusoidal fitting is implemented as a fitter method.
2145            workscan._sinusoid_baseline(mask, nwave, maxwavelength, clipthresh, clipniter, getresidual, outlog, blfile)
[2047]2146           
2147            workscan._add_history("sinusoid_baseline", varlist)
2148           
2149            if insitu:
2150                self._assign(workscan)
2151            else:
2152                return workscan
2153           
2154        except RuntimeError, e:
2155            msg = "The fit failed, possibly because it didn't converge."
2156            if rcParams["verbose"]:
2157                asaplog.push(str(e))
2158                asaplog.push(str(msg))
2159                return
2160            else:
2161                raise RuntimeError(str(e)+'\n'+msg)
2162
2163
[2081]2164    def auto_sinusoid_baseline(self, insitu=None, mask=None, nwave=None, maxwavelength=None,
[2047]2165                               clipthresh=None, clipniter=None, edge=None, threshold=None,
[2081]2166                               chan_avg_limit=None, plot=None, getresidual=None, outlog=None, blfile=None):
[2047]2167        """\
2168        Return a scan which has been baselined (all rows) by cubic spline
2169        function (piecewise cubic polynomial).
2170        Spectral lines are detected first using linefinder and masked out
2171        to avoid them affecting the baseline solution.
2172
2173        Parameters:
[2081]2174            insitu:        if False a new scantable is returned.
2175                           Otherwise, the scaling is done in-situ
2176                           The default is taken from .asaprc (False)
2177            mask:          an optional mask retreived from scantable
2178            nwave:         the maximum wave number of sinusoids within
2179                           maxwavelength * (spectral range).
2180                           The default is 3 (i.e., sinusoids with wave
2181                           number of 0(=constant), 1, 2, and 3 are
2182                           used for fitting). Also it is possible to
2183                           explicitly specify all the wave numbers to
2184                           be used, by giving a list including them
2185                           (e.g. [0,1,2,15,16]).
2186            maxwavelength: the longest sinusoidal wavelength. The
2187                           default is 1.0 (unit: spectral range).
2188            clipthresh:    Clipping threshold. (default is 3.0, unit: sigma)
2189            clipniter:     maximum number of iteration of 'clipthresh'-sigma clipping (default is 1)
2190            edge:          an optional number of channel to drop at
2191                           the edge of spectrum. If only one value is
2192                           specified, the same number will be dropped
2193                           from both sides of the spectrum. Default
2194                           is to keep all channels. Nested tuples
2195                           represent individual edge selection for
2196                           different IFs (a number of spectral channels
2197                           can be different)
2198            threshold:     the threshold used by line finder. It is
2199                           better to keep it large as only strong lines
2200                           affect the baseline solution.
2201            chan_avg_limit:a maximum number of consequtive spectral
2202                           channels to average during the search of
2203                           weak and broad lines. The default is no
2204                           averaging (and no search for weak lines).
2205                           If such lines can affect the fitted baseline
2206                           (e.g. a high order polynomial is fitted),
2207                           increase this parameter (usually values up
2208                           to 8 are reasonable). Most users of this
2209                           method should find the default value sufficient.
2210            plot:      *** CURRENTLY UNAVAILABLE, ALWAYS FALSE ***
2211                           plot the fit and the residual. In this each
2212                           indivual fit has to be approved, by typing 'y'
2213                           or 'n'
2214            getresidual:   if False, returns best-fit values instead of
2215                           residual. (default is True)
2216            outlog:        Output the coefficients of the best-fit
2217                           function to logger (default is False)
2218            blfile:        Name of a text file in which the best-fit
2219                           parameter values to be written
2220                           (default is "": no file/logger output)
[2047]2221
2222        Example:
[2081]2223            bscan = scan.auto_sinusoid_baseline(nwave=10, insitu=False)
2224       
2225        Note:
2226            The best-fit parameter values output in logger and/or blfile are now
2227            based on specunit of 'channel'.
[2047]2228        """
2229
2230        varlist = vars()
2231
2232        if insitu is None: insitu = rcParams['insitu']
2233        if insitu:
2234            workscan = self
2235        else:
2236            workscan = self.copy()
2237
2238        nchan = workscan.nchan()
2239       
[2081]2240        if mask           is None: mask           = [True for i in xrange(nchan)]
2241        if nwave          is None: nwave          = 3
2242        if maxwavelength  is None: maxwavelength  = 1.0
2243        if clipthresh     is None: clipthresh     = 3.0
2244        if clipniter      is None: clipniter      = 1
2245        if edge           is None: edge           = (0,0)
2246        if threshold      is None: threshold      = 3
[2047]2247        if chan_avg_limit is None: chan_avg_limit = 1
[2081]2248        if plot           is None: plot           = False
2249        if getresidual    is None: getresidual    = True
2250        if outlog         is None: outlog         = False
2251        if blfile         is None: blfile         = ""
[2047]2252
2253        outblfile = (blfile != "") and os.path.exists(os.path.expanduser(os.path.expandvars(blfile)))
2254       
2255        from asap.asaplinefind import linefinder
2256        from asap import _is_sequence_or_number as _is_valid
2257
[2081]2258        if isinstance(nwave, int):
2259            in_nwave = nwave
2260            nwave = []
2261            for i in xrange(in_nwave+1): nwave.append(i)
2262
[2047]2263        if not (isinstance(edge, list) or isinstance(edge, tuple)): edge = [ edge ]
2264        individualedge = False;
2265        if len(edge) > 1: individualedge = isinstance(edge[0], list) or isinstance(edge[0], tuple)
2266
2267        if individualedge:
2268            for edgepar in edge:
2269                if not _is_valid(edgepar, int):
2270                    raise ValueError, "Each element of the 'edge' tuple has \
2271                                       to be a pair of integers or an integer."
2272        else:
2273            if not _is_valid(edge, int):
2274                raise ValueError, "Parameter 'edge' has to be an integer or a \
2275                                   pair of integers specified as a tuple. \
2276                                   Nested tuples are allowed \
2277                                   to make individual selection for different IFs."
2278
2279            if len(edge) > 1:
2280                curedge = edge
2281            else:
2282                curedge = edge + edge
2283
2284        try:
[2081]2285            #CURRENTLY, PLOT=true is UNAVAILABLE UNTIL sinusoidal fitting is implemented as a fitter method.
[2047]2286            if individualedge:
2287                curedge = []
2288                for i in xrange(len(edge)):
2289                    curedge += edge[i]
2290               
[2081]2291            workscan._auto_sinusoid_baseline(mask, nwave, maxwavelength, clipthresh, clipniter, curedge, threshold, chan_avg_limit, getresidual, outlog, blfile)
[2047]2292
2293            workscan._add_history("auto_sinusoid_baseline", varlist)
2294           
2295            if insitu:
2296                self._assign(workscan)
2297            else:
2298                return workscan
2299           
2300        except RuntimeError, e:
2301            msg = "The fit failed, possibly because it didn't converge."
2302            if rcParams["verbose"]:
2303                asaplog.push(str(e))
2304                asaplog.push(str(msg))
2305                return
2306            else:
2307                raise RuntimeError(str(e)+'\n'+msg)
2308
2309
2310    @asaplog_post_dec
[2012]2311    def cspline_baseline(self, insitu=None, mask=None, npiece=None, clipthresh=None, clipniter=None, plot=None, outlog=None, blfile=None):
[1846]2312        """\
[2012]2313        Return a scan which has been baselined (all rows) by cubic spline function (piecewise cubic polynomial).
[513]2314        Parameters:
[2012]2315            insitu:     If False a new scantable is returned.
2316                        Otherwise, the scaling is done in-situ
2317                        The default is taken from .asaprc (False)
2318            mask:       An optional mask
2319            npiece:     Number of pieces. (default is 2)
2320            clipthresh: Clipping threshold. (default is 3.0, unit: sigma)
2321            clipniter:  maximum number of iteration of 'clipthresh'-sigma clipping (default is 1)
2322            plot:   *** CURRENTLY UNAVAILABLE, ALWAYS FALSE ***
2323                        plot the fit and the residual. In this each
2324                        indivual fit has to be approved, by typing 'y'
2325                        or 'n'
2326            outlog:     Output the coefficients of the best-fit
2327                        function to logger (default is False)
2328            blfile:     Name of a text file in which the best-fit
2329                        parameter values to be written
2330                        (default is "": no file/logger output)
[1846]2331
[2012]2332        Example:
2333            # return a scan baselined by a cubic spline consisting of 2 pieces (i.e., 1 internal knot),
2334            # also with 3-sigma clipping, iteration up to 4 times
2335            bscan = scan.cspline_baseline(npiece=2,clipthresh=3.0,clipniter=4)
[2081]2336       
2337        Note:
2338            The best-fit parameter values output in logger and/or blfile are now
2339            based on specunit of 'channel'.
[2012]2340        """
2341       
2342        varlist = vars()
2343       
2344        if insitu is None: insitu = rcParams["insitu"]
2345        if insitu:
2346            workscan = self
2347        else:
2348            workscan = self.copy()
[1855]2349
[2012]2350        nchan = workscan.nchan()
2351       
2352        if mask is None: mask = [True for i in xrange(nchan)]
2353        if npiece is None: npiece = 2
2354        if clipthresh is None: clipthresh = 3.0
2355        if clipniter is None: clipniter = 1
2356        if plot is None: plot = False
2357        if outlog is None: outlog = False
2358        if blfile is None: blfile = ""
[1855]2359
[2012]2360        outblfile = (blfile != "") and os.path.exists(os.path.expanduser(os.path.expandvars(blfile)))
2361       
2362        try:
2363            #CURRENTLY, PLOT=true UNAVAILABLE UNTIL cubic spline fitting is implemented as a fitter method.
2364            workscan._cspline_baseline(mask, npiece, clipthresh, clipniter, outlog, blfile)
2365           
2366            workscan._add_history("cspline_baseline", varlist)
2367           
2368            if insitu:
2369                self._assign(workscan)
2370            else:
2371                return workscan
2372           
2373        except RuntimeError, e:
2374            msg = "The fit failed, possibly because it didn't converge."
2375            if rcParams["verbose"]:
2376                asaplog.push(str(e))
2377                asaplog.push(str(msg))
2378                return
2379            else:
2380                raise RuntimeError(str(e)+'\n'+msg)
[1855]2381
2382
[2012]2383    def auto_cspline_baseline(self, insitu=None, mask=None, npiece=None, clipthresh=None,
2384                              clipniter=None, edge=None, threshold=None,
2385                              chan_avg_limit=None, plot=None, outlog=None, blfile=None):
2386        """\
2387        Return a scan which has been baselined (all rows) by cubic spline
2388        function (piecewise cubic polynomial).
2389        Spectral lines are detected first using linefinder and masked out
2390        to avoid them affecting the baseline solution.
2391
2392        Parameters:
[794]2393            insitu:     if False a new scantable is returned.
2394                        Otherwise, the scaling is done in-situ
2395                        The default is taken from .asaprc (False)
[2012]2396            mask:       an optional mask retreived from scantable
2397            npiece:     Number of pieces. (default is 2)
2398            clipthresh: Clipping threshold. (default is 3.0, unit: sigma)
2399            clipniter:  maximum number of iteration of 'clipthresh'-sigma clipping (default is 1)
2400            edge:       an optional number of channel to drop at
2401                        the edge of spectrum. If only one value is
2402                        specified, the same number will be dropped
2403                        from both sides of the spectrum. Default
2404                        is to keep all channels. Nested tuples
2405                        represent individual edge selection for
2406                        different IFs (a number of spectral channels
2407                        can be different)
2408            threshold:  the threshold used by line finder. It is
2409                        better to keep it large as only strong lines
2410                        affect the baseline solution.
2411            chan_avg_limit:
2412                        a maximum number of consequtive spectral
2413                        channels to average during the search of
2414                        weak and broad lines. The default is no
2415                        averaging (and no search for weak lines).
2416                        If such lines can affect the fitted baseline
2417                        (e.g. a high order polynomial is fitted),
2418                        increase this parameter (usually values up
2419                        to 8 are reasonable). Most users of this
2420                        method should find the default value sufficient.
2421            plot:   *** CURRENTLY UNAVAILABLE, ALWAYS FALSE ***
2422                        plot the fit and the residual. In this each
2423                        indivual fit has to be approved, by typing 'y'
2424                        or 'n'
2425            outlog:     Output the coefficients of the best-fit
2426                        function to logger (default is False)
2427            blfile:     Name of a text file in which the best-fit
2428                        parameter values to be written
2429                        (default is "": no file/logger output)
[1846]2430
[1907]2431        Example:
[2012]2432            bscan = scan.auto_cspline_baseline(npiece=3, insitu=False)
[2081]2433       
2434        Note:
2435            The best-fit parameter values output in logger and/or blfile are now
2436            based on specunit of 'channel'.
[2012]2437        """
[1846]2438
[2012]2439        varlist = vars()
2440
[513]2441        if insitu is None: insitu = rcParams['insitu']
[2012]2442        if insitu:
2443            workscan = self
2444        else:
[1819]2445            workscan = self.copy()
[2012]2446
2447        nchan = workscan.nchan()
2448       
2449        if mask is None: mask = [True for i in xrange(nchan)]
2450        if npiece is None: npiece = 2
2451        if clipthresh is None: clipthresh = 3.0
2452        if clipniter is None: clipniter = 1
2453        if edge is None: edge = (0, 0)
2454        if threshold is None: threshold = 3
2455        if chan_avg_limit is None: chan_avg_limit = 1
2456        if plot is None: plot = False
2457        if outlog is None: outlog = False
2458        if blfile is None: blfile = ""
2459
2460        outblfile = (blfile != "") and os.path.exists(os.path.expanduser(os.path.expandvars(blfile)))
2461       
2462        from asap.asaplinefind import linefinder
2463        from asap import _is_sequence_or_number as _is_valid
2464
2465        if not (isinstance(edge, list) or isinstance(edge, tuple)): edge = [ edge ]
2466        individualedge = False;
2467        if len(edge) > 1: individualedge = isinstance(edge[0], list) or isinstance(edge[0], tuple)
2468
2469        if individualedge:
2470            for edgepar in edge:
2471                if not _is_valid(edgepar, int):
2472                    raise ValueError, "Each element of the 'edge' tuple has \
2473                                       to be a pair of integers or an integer."
[1819]2474        else:
[2012]2475            if not _is_valid(edge, int):
2476                raise ValueError, "Parameter 'edge' has to be an integer or a \
2477                                   pair of integers specified as a tuple. \
2478                                   Nested tuples are allowed \
2479                                   to make individual selection for different IFs."
[1819]2480
[2012]2481            if len(edge) > 1:
2482                curedge = edge
[1391]2483            else:
[2012]2484                curedge = edge + edge
[1819]2485
[2012]2486        try:
2487            #CURRENTLY, PLOT=true UNAVAILABLE UNTIL cubic spline fitting is implemented as a fitter method.
2488            if individualedge:
2489                curedge = []
2490                for i in xrange(len(edge)):
2491                    curedge += edge[i]
2492               
2493            workscan._auto_cspline_baseline(mask, npiece, clipthresh, clipniter, curedge, threshold, chan_avg_limit, outlog, blfile)
2494
2495            workscan._add_history("auto_cspline_baseline", varlist)
[1907]2496           
[1856]2497            if insitu:
2498                self._assign(workscan)
2499            else:
2500                return workscan
[2012]2501           
2502        except RuntimeError, e:
[1217]2503            msg = "The fit failed, possibly because it didn't converge."
[2012]2504            if rcParams["verbose"]:
2505                asaplog.push(str(e))
2506                asaplog.push(str(msg))
2507                return
2508            else:
2509                raise RuntimeError(str(e)+'\n'+msg)
[513]2510
[2012]2511
[1931]2512    @asaplog_post_dec
[2012]2513    def poly_baseline(self, insitu=None, mask=None, order=None, plot=None, outlog=None, blfile=None):
[1907]2514        """\
2515        Return a scan which has been baselined (all rows) by a polynomial.
2516        Parameters:
[2012]2517            insitu:     if False a new scantable is returned.
2518                        Otherwise, the scaling is done in-situ
2519                        The default is taken from .asaprc (False)
[1907]2520            mask:       an optional mask
2521            order:      the order of the polynomial (default is 0)
2522            plot:       plot the fit and the residual. In this each
2523                        indivual fit has to be approved, by typing 'y'
[2012]2524                        or 'n'
2525            outlog:     Output the coefficients of the best-fit
2526                        function to logger (default is False)
2527            blfile:     Name of a text file in which the best-fit
2528                        parameter values to be written
2529                        (default is "": no file/logger output)
2530
[1907]2531        Example:
2532            # return a scan baselined by a third order polynomial,
2533            # not using a mask
2534            bscan = scan.poly_baseline(order=3)
2535        """
[1931]2536       
2537        varlist = vars()
2538       
[1907]2539        if insitu is None: insitu = rcParams["insitu"]
2540        if insitu:
2541            workscan = self
2542        else:
2543            workscan = self.copy()
2544
2545        nchan = workscan.nchan()
2546       
[2012]2547        if mask is None: mask = [True for i in xrange(nchan)]
2548        if order is None: order = 0
2549        if plot is None: plot = False
2550        if outlog is None: outlog = False
2551        if blfile is None: blfile = ""
[1907]2552
[2012]2553        outblfile = (blfile != "") and os.path.exists(os.path.expanduser(os.path.expandvars(blfile)))
2554       
[1907]2555        try:
[2012]2556            rows = xrange(workscan.nrow())
[1907]2557           
[2012]2558            #if len(rows) > 0: workscan._init_blinfo()
[1907]2559
[2012]2560            if plot:
2561                if outblfile: blf = open(blfile, "a")
2562               
[1907]2563                f = fitter()
2564                f.set_function(lpoly=order)
2565                for r in rows:
2566                    f.x = workscan._getabcissa(r)
2567                    f.y = workscan._getspectrum(r)
2568                    f.mask = mask_and(mask, workscan._getmask(r))    # (CAS-1434)
2569                    f.data = None
2570                    f.fit()
2571                   
2572                    f.plot(residual=True)
2573                    accept_fit = raw_input("Accept fit ( [y]/n ): ")
2574                    if accept_fit.upper() == "N":
[2012]2575                        #workscan._append_blinfo(None, None, None)
[1907]2576                        continue
[2012]2577                   
2578                    blpars = f.get_parameters()
2579                    masklist = workscan.get_masklist(f.mask, row=r, silent=True)
2580                    #workscan._append_blinfo(blpars, masklist, f.mask)
[1907]2581                    workscan._setspectrum(f.fitter.getresidual(), r)
2582                   
[2012]2583                    if outblfile:
2584                        rms = workscan.get_rms(f.mask, r)
2585                        dataout = workscan.format_blparams_row(blpars["params"], blpars["fixed"], rms, str(masklist), r, True)
2586                        blf.write(dataout)
2587
[1907]2588                f._p.unmap()
2589                f._p = None
[2012]2590
2591                if outblfile: blf.close()
[1907]2592            else:
[2012]2593                workscan._poly_baseline(mask, order, outlog, blfile)
[1907]2594           
2595            workscan._add_history("poly_baseline", varlist)
2596           
2597            if insitu:
2598                self._assign(workscan)
2599            else:
2600                return workscan
2601           
[1919]2602        except RuntimeError, e:
[1907]2603            msg = "The fit failed, possibly because it didn't converge."
2604            if rcParams["verbose"]:
[1919]2605                asaplog.push(str(e))
[1907]2606                asaplog.push(str(msg))
2607                return
2608            else:
[1919]2609                raise RuntimeError(str(e)+'\n'+msg)
[1907]2610
2611
[2012]2612    def auto_poly_baseline(self, insitu=None, mask=None, order=None, edge=None, threshold=None,
2613                           chan_avg_limit=None, plot=None, outlog=None, blfile=None):
[1846]2614        """\
[1931]2615        Return a scan which has been baselined (all rows) by a polynomial.
[880]2616        Spectral lines are detected first using linefinder and masked out
2617        to avoid them affecting the baseline solution.
2618
2619        Parameters:
[2012]2620            insitu:     if False a new scantable is returned.
2621                        Otherwise, the scaling is done in-situ
2622                        The default is taken from .asaprc (False)
[880]2623            mask:       an optional mask retreived from scantable
2624            order:      the order of the polynomial (default is 0)
[2012]2625            edge:       an optional number of channel to drop at
2626                        the edge of spectrum. If only one value is
2627                        specified, the same number will be dropped
2628                        from both sides of the spectrum. Default
2629                        is to keep all channels. Nested tuples
2630                        represent individual edge selection for
2631                        different IFs (a number of spectral channels
2632                        can be different)
2633            threshold:  the threshold used by line finder. It is
2634                        better to keep it large as only strong lines
2635                        affect the baseline solution.
[1280]2636            chan_avg_limit:
[2012]2637                        a maximum number of consequtive spectral
2638                        channels to average during the search of
2639                        weak and broad lines. The default is no
2640                        averaging (and no search for weak lines).
2641                        If such lines can affect the fitted baseline
2642                        (e.g. a high order polynomial is fitted),
2643                        increase this parameter (usually values up
2644                        to 8 are reasonable). Most users of this
2645                        method should find the default value sufficient.
[1061]2646            plot:       plot the fit and the residual. In this each
2647                        indivual fit has to be approved, by typing 'y'
2648                        or 'n'
[2012]2649            outlog:     Output the coefficients of the best-fit
2650                        function to logger (default is False)
2651            blfile:     Name of a text file in which the best-fit
2652                        parameter values to be written
2653                        (default is "": no file/logger output)
[1846]2654
[2012]2655        Example:
2656            bscan = scan.auto_poly_baseline(order=7, insitu=False)
2657        """
[880]2658
[2012]2659        varlist = vars()
[1846]2660
[2012]2661        if insitu is None: insitu = rcParams['insitu']
2662        if insitu:
2663            workscan = self
2664        else:
2665            workscan = self.copy()
[1846]2666
[2012]2667        nchan = workscan.nchan()
2668       
2669        if mask is None: mask = [True for i in xrange(nchan)]
2670        if order is None: order = 0
2671        if edge is None: edge = (0, 0)
2672        if threshold is None: threshold = 3
2673        if chan_avg_limit is None: chan_avg_limit = 1
2674        if plot is None: plot = False
2675        if outlog is None: outlog = False
2676        if blfile is None: blfile = ""
[1846]2677
[2012]2678        outblfile = (blfile != "") and os.path.exists(os.path.expanduser(os.path.expandvars(blfile)))
2679       
[880]2680        from asap.asaplinefind import linefinder
2681        from asap import _is_sequence_or_number as _is_valid
2682
[2012]2683        if not (isinstance(edge, list) or isinstance(edge, tuple)): edge = [ edge ]
[1118]2684        individualedge = False;
[2012]2685        if len(edge) > 1: individualedge = isinstance(edge[0], list) or isinstance(edge[0], tuple)
[907]2686
[1118]2687        if individualedge:
2688            for edgepar in edge:
2689                if not _is_valid(edgepar, int):
2690                    raise ValueError, "Each element of the 'edge' tuple has \
2691                                       to be a pair of integers or an integer."
[907]2692        else:
[2012]2693            if not _is_valid(edge, int):
2694                raise ValueError, "Parameter 'edge' has to be an integer or a \
2695                                   pair of integers specified as a tuple. \
2696                                   Nested tuples are allowed \
2697                                   to make individual selection for different IFs."
[880]2698
[2012]2699            if len(edge) > 1:
2700                curedge = edge
2701            else:
2702                curedge = edge + edge
[1907]2703
[2012]2704        try:
2705            rows = xrange(workscan.nrow())
2706           
2707            #if len(rows) > 0: workscan._init_blinfo()
[880]2708
[2012]2709            if plot:
2710                if outblfile: blf = open(blfile, "a")
2711               
2712                fl = linefinder()
2713                fl.set_options(threshold=threshold,avg_limit=chan_avg_limit)
2714                fl.set_scan(workscan)
2715                f = fitter()
2716                f.set_function(lpoly=order)
[880]2717
[2012]2718                for r in rows:
2719                    if individualedge:
2720                        if len(edge) <= workscan.getif(r):
2721                            raise RuntimeError, "Number of edge elements appear to " \
2722                                  "be less than the number of IFs"
2723                        else:
2724                            curedge = edge[workscan.getif(r)]
[907]2725
[2012]2726                    fl.find_lines(r, mask_and(mask, workscan._getmask(r)), curedge)  # (CAS-1434)
2727
2728                    f.x = workscan._getabcissa(r)
2729                    f.y = workscan._getspectrum(r)
2730                    f.mask = fl.get_mask()
2731                    f.data = None
2732                    f.fit()
2733
2734                    f.plot(residual=True)
2735                    accept_fit = raw_input("Accept fit ( [y]/n ): ")
2736                    if accept_fit.upper() == "N":
2737                        #workscan._append_blinfo(None, None, None)
2738                        continue
2739
2740                    blpars = f.get_parameters()
2741                    masklist = workscan.get_masklist(f.mask, row=r, silent=True)
2742                    #workscan._append_blinfo(blpars, masklist, f.mask)
2743                    workscan._setspectrum(f.fitter.getresidual(), r)
2744
2745                    if outblfile:
2746                        rms = workscan.get_rms(f.mask, r)
2747                        dataout = workscan.format_blparams_row(blpars["params"], blpars["fixed"], rms, str(masklist), r, True)
2748                        blf.write(dataout)
2749                   
2750                f._p.unmap()
2751                f._p = None
2752
2753                if outblfile: blf.close()
2754               
2755            else:
2756                if individualedge:
2757                    curedge = []
2758                    for i in xrange(len(edge)):
2759                        curedge += edge[i]
2760               
2761                workscan._auto_poly_baseline(mask, order, curedge, threshold, chan_avg_limit, outlog, blfile)
2762
2763            workscan._add_history("auto_poly_baseline", varlist)
2764           
2765            if insitu:
2766                self._assign(workscan)
2767            else:
2768                return workscan
2769           
2770        except RuntimeError, e:
2771            msg = "The fit failed, possibly because it didn't converge."
2772            if rcParams["verbose"]:
2773                asaplog.push(str(e))
2774                asaplog.push(str(msg))
2775                return
2776            else:
2777                raise RuntimeError(str(e)+'\n'+msg)
2778
2779
2780    ### OBSOLETE ##################################################################
2781    @asaplog_post_dec
2782    def old_poly_baseline(self, mask=None, order=0, plot=False, uselin=False, insitu=None, rows=None):
2783        """
2784        Return a scan which has been baselined (all rows) by a polynomial.
[1907]2785       
[2012]2786        Parameters:
2787
2788            mask:       an optional mask
2789
2790            order:      the order of the polynomial (default is 0)
2791
2792            plot:       plot the fit and the residual. In this each
2793                        indivual fit has to be approved, by typing 'y'
2794                        or 'n'
2795
2796            uselin:     use linear polynomial fit
2797
2798            insitu:     if False a new scantable is returned.
2799                        Otherwise, the scaling is done in-situ
2800                        The default is taken from .asaprc (False)
2801
2802            rows:       row numbers of spectra to be processed.
2803                        (default is None: for all rows)
[1907]2804       
[2012]2805        Example:
2806            # return a scan baselined by a third order polynomial,
2807            # not using a mask
2808            bscan = scan.poly_baseline(order=3)
[907]2809
[2012]2810        """
2811        if insitu is None: insitu = rcParams['insitu']
2812        if not insitu:
2813            workscan = self.copy()
2814        else:
2815            workscan = self
2816        varlist = vars()
2817        if mask is None:
2818            mask = [True for i in xrange(self.nchan())]
[919]2819
[2012]2820        try:
2821            f = fitter()
2822            if uselin:
2823                f.set_function(lpoly=order)
2824            else:
2825                f.set_function(poly=order)
[1819]2826
[2012]2827            if rows == None:
2828                rows = xrange(workscan.nrow())
2829            elif isinstance(rows, int):
2830                rows = [ rows ]
[1907]2831           
[2012]2832            if len(rows) > 0:
2833                self.blpars = []
2834                self.masklists = []
2835                self.actualmask = []
2836           
2837            for r in rows:
2838                f.x = workscan._getabcissa(r)
2839                f.y = workscan._getspectrum(r)
2840                f.mask = mask_and(mask, workscan._getmask(r))    # (CAS-1434)
2841                f.data = None
2842                f.fit()
2843                if plot:
2844                    f.plot(residual=True)
2845                    x = raw_input("Accept fit ( [y]/n ): ")
2846                    if x.upper() == 'N':
2847                        self.blpars.append(None)
2848                        self.masklists.append(None)
2849                        self.actualmask.append(None)
2850                        continue
2851                workscan._setspectrum(f.fitter.getresidual(), r)
2852                self.blpars.append(f.get_parameters())
2853                self.masklists.append(workscan.get_masklist(f.mask, row=r, silent=True))
2854                self.actualmask.append(f.mask)
[1819]2855
[1061]2856            if plot:
[2012]2857                f._p.unmap()
2858                f._p = None
2859            workscan._add_history("poly_baseline", varlist)
2860            if insitu:
2861                self._assign(workscan)
2862            else:
2863                return workscan
2864        except RuntimeError:
2865            msg = "The fit failed, possibly because it didn't converge."
2866            raise RuntimeError(msg)
[1819]2867
[2012]2868    def _init_blinfo(self):
2869        """\
2870        Initialise the following three auxiliary members:
2871           blpars : parameters of the best-fit baseline,
2872           masklists : mask data (edge positions of masked channels) and
2873           actualmask : mask data (in boolean list),
2874        to keep for use later (including output to logger/text files).
2875        Used by poly_baseline() and auto_poly_baseline() in case of
2876        'plot=True'.
2877        """
2878        self.blpars = []
2879        self.masklists = []
2880        self.actualmask = []
2881        return
[880]2882
[2012]2883    def _append_blinfo(self, data_blpars, data_masklists, data_actualmask):
2884        """\
2885        Append baseline-fitting related info to blpars, masklist and
2886        actualmask.
2887        """
2888        self.blpars.append(data_blpars)
2889        self.masklists.append(data_masklists)
2890        self.actualmask.append(data_actualmask)
2891        return
2892       
[1862]2893    @asaplog_post_dec
[914]2894    def rotate_linpolphase(self, angle):
[1846]2895        """\
[914]2896        Rotate the phase of the complex polarization O=Q+iU correlation.
2897        This is always done in situ in the raw data.  So if you call this
2898        function more than once then each call rotates the phase further.
[1846]2899
[914]2900        Parameters:
[1846]2901
[914]2902            angle:   The angle (degrees) to rotate (add) by.
[1846]2903
2904        Example::
2905
[914]2906            scan.rotate_linpolphase(2.3)
[1846]2907
[914]2908        """
2909        varlist = vars()
[936]2910        self._math._rotate_linpolphase(self, angle)
[914]2911        self._add_history("rotate_linpolphase", varlist)
2912        return
[710]2913
[1862]2914    @asaplog_post_dec
[914]2915    def rotate_xyphase(self, angle):
[1846]2916        """\
[914]2917        Rotate the phase of the XY correlation.  This is always done in situ
2918        in the data.  So if you call this function more than once
2919        then each call rotates the phase further.
[1846]2920
[914]2921        Parameters:
[1846]2922
[914]2923            angle:   The angle (degrees) to rotate (add) by.
[1846]2924
2925        Example::
2926
[914]2927            scan.rotate_xyphase(2.3)
[1846]2928
[914]2929        """
2930        varlist = vars()
[936]2931        self._math._rotate_xyphase(self, angle)
[914]2932        self._add_history("rotate_xyphase", varlist)
2933        return
2934
[1862]2935    @asaplog_post_dec
[914]2936    def swap_linears(self):
[1846]2937        """\
[1573]2938        Swap the linear polarisations XX and YY, or better the first two
[1348]2939        polarisations as this also works for ciculars.
[914]2940        """
2941        varlist = vars()
[936]2942        self._math._swap_linears(self)
[914]2943        self._add_history("swap_linears", varlist)
2944        return
2945
[1862]2946    @asaplog_post_dec
[914]2947    def invert_phase(self):
[1846]2948        """\
[914]2949        Invert the phase of the complex polarisation
2950        """
2951        varlist = vars()
[936]2952        self._math._invert_phase(self)
[914]2953        self._add_history("invert_phase", varlist)
2954        return
2955
[1862]2956    @asaplog_post_dec
[876]2957    def add(self, offset, insitu=None):
[1846]2958        """\
[513]2959        Return a scan where all spectra have the offset added
[1846]2960
[513]2961        Parameters:
[1846]2962
[513]2963            offset:      the offset
[1855]2964
[513]2965            insitu:      if False a new scantable is returned.
2966                         Otherwise, the scaling is done in-situ
2967                         The default is taken from .asaprc (False)
[1846]2968
[513]2969        """
2970        if insitu is None: insitu = rcParams['insitu']
[876]2971        self._math._setinsitu(insitu)
[513]2972        varlist = vars()
[876]2973        s = scantable(self._math._unaryop(self, offset, "ADD", False))
[1118]2974        s._add_history("add", varlist)
[876]2975        if insitu:
2976            self._assign(s)
2977        else:
[513]2978            return s
2979
[1862]2980    @asaplog_post_dec
[1308]2981    def scale(self, factor, tsys=True, insitu=None):
[1846]2982        """\
2983
[1938]2984        Return a scan where all spectra are scaled by the given 'factor'
[1846]2985
[513]2986        Parameters:
[1846]2987
[1819]2988            factor:      the scaling factor (float or 1D float list)
[1855]2989
[513]2990            insitu:      if False a new scantable is returned.
2991                         Otherwise, the scaling is done in-situ
2992                         The default is taken from .asaprc (False)
[1855]2993
[513]2994            tsys:        if True (default) then apply the operation to Tsys
2995                         as well as the data
[1846]2996
[513]2997        """
2998        if insitu is None: insitu = rcParams['insitu']
[876]2999        self._math._setinsitu(insitu)
[513]3000        varlist = vars()
[1819]3001        s = None
3002        import numpy
3003        if isinstance(factor, list) or isinstance(factor, numpy.ndarray):
3004            if isinstance(factor[0], list) or isinstance(factor[0], numpy.ndarray):
3005                from asapmath import _array2dOp
3006                s = _array2dOp( self.copy(), factor, "MUL", tsys )
3007            else:
3008                s = scantable( self._math._arrayop( self.copy(), factor, "MUL", tsys ) )
3009        else:
3010            s = scantable(self._math._unaryop(self.copy(), factor, "MUL", tsys))
[1118]3011        s._add_history("scale", varlist)
[876]3012        if insitu:
3013            self._assign(s)
3014        else:
[513]3015            return s
3016
[1504]3017    def set_sourcetype(self, match, matchtype="pattern",
3018                       sourcetype="reference"):
[1846]3019        """\
[1502]3020        Set the type of the source to be an source or reference scan
[1846]3021        using the provided pattern.
3022
[1502]3023        Parameters:
[1846]3024
[1504]3025            match:          a Unix style pattern, regular expression or selector
[1855]3026
[1504]3027            matchtype:      'pattern' (default) UNIX style pattern or
3028                            'regex' regular expression
[1855]3029
[1502]3030            sourcetype:     the type of the source to use (source/reference)
[1846]3031
[1502]3032        """
3033        varlist = vars()
3034        basesel = self.get_selection()
3035        stype = -1
3036        if sourcetype.lower().startswith("r"):
3037            stype = 1
3038        elif sourcetype.lower().startswith("s"):
3039            stype = 0
[1504]3040        else:
[1502]3041            raise ValueError("Illegal sourcetype use s(ource) or r(eference)")
[1504]3042        if matchtype.lower().startswith("p"):
3043            matchtype = "pattern"
3044        elif matchtype.lower().startswith("r"):
3045            matchtype = "regex"
3046        else:
3047            raise ValueError("Illegal matchtype, use p(attern) or r(egex)")
[1502]3048        sel = selector()
3049        if isinstance(match, selector):
3050            sel = match
3051        else:
[1504]3052            sel.set_query("SRCNAME == %s('%s')" % (matchtype, match))
[1502]3053        self.set_selection(basesel+sel)
3054        self._setsourcetype(stype)
3055        self.set_selection(basesel)
[1573]3056        self._add_history("set_sourcetype", varlist)
[1502]3057
[1862]3058    @asaplog_post_dec
[1857]3059    @preserve_selection
[1819]3060    def auto_quotient(self, preserve=True, mode='paired', verify=False):
[1846]3061        """\
[670]3062        This function allows to build quotients automatically.
[1819]3063        It assumes the observation to have the same number of
[670]3064        "ons" and "offs"
[1846]3065
[670]3066        Parameters:
[1846]3067
[710]3068            preserve:       you can preserve (default) the continuum or
3069                            remove it.  The equations used are
[1857]3070
[670]3071                            preserve: Output = Toff * (on/off) - Toff
[1857]3072
[1070]3073                            remove:   Output = Toff * (on/off) - Ton
[1855]3074
[1573]3075            mode:           the on/off detection mode
[1348]3076                            'paired' (default)
3077                            identifies 'off' scans by the
3078                            trailing '_R' (Mopra/Parkes) or
3079                            '_e'/'_w' (Tid) and matches
3080                            on/off pairs from the observing pattern
[1502]3081                            'time'
3082                            finds the closest off in time
[1348]3083
[1857]3084        .. todo:: verify argument is not implemented
3085
[670]3086        """
[1857]3087        varlist = vars()
[1348]3088        modes = ["time", "paired"]
[670]3089        if not mode in modes:
[876]3090            msg = "please provide valid mode. Valid modes are %s" % (modes)
3091            raise ValueError(msg)
[1348]3092        s = None
3093        if mode.lower() == "paired":
[1857]3094            sel = self.get_selection()
[1875]3095            sel.set_query("SRCTYPE==psoff")
[1356]3096            self.set_selection(sel)
[1348]3097            offs = self.copy()
[1875]3098            sel.set_query("SRCTYPE==pson")
[1356]3099            self.set_selection(sel)
[1348]3100            ons = self.copy()
3101            s = scantable(self._math._quotient(ons, offs, preserve))
3102        elif mode.lower() == "time":
3103            s = scantable(self._math._auto_quotient(self, mode, preserve))
[1118]3104        s._add_history("auto_quotient", varlist)
[876]3105        return s
[710]3106
[1862]3107    @asaplog_post_dec
[1145]3108    def mx_quotient(self, mask = None, weight='median', preserve=True):
[1846]3109        """\
[1143]3110        Form a quotient using "off" beams when observing in "MX" mode.
[1846]3111
[1143]3112        Parameters:
[1846]3113
[1145]3114            mask:           an optional mask to be used when weight == 'stddev'
[1855]3115
[1143]3116            weight:         How to average the off beams.  Default is 'median'.
[1855]3117
[1145]3118            preserve:       you can preserve (default) the continuum or
[1855]3119                            remove it.  The equations used are:
[1846]3120
[1855]3121                                preserve: Output = Toff * (on/off) - Toff
3122
3123                                remove:   Output = Toff * (on/off) - Ton
3124
[1217]3125        """
[1593]3126        mask = mask or ()
[1141]3127        varlist = vars()
3128        on = scantable(self._math._mx_extract(self, 'on'))
[1143]3129        preoff = scantable(self._math._mx_extract(self, 'off'))
3130        off = preoff.average_time(mask=mask, weight=weight, scanav=False)
[1217]3131        from asapmath  import quotient
[1145]3132        q = quotient(on, off, preserve)
[1143]3133        q._add_history("mx_quotient", varlist)
[1217]3134        return q
[513]3135
[1862]3136    @asaplog_post_dec
[718]3137    def freq_switch(self, insitu=None):
[1846]3138        """\
[718]3139        Apply frequency switching to the data.
[1846]3140
[718]3141        Parameters:
[1846]3142
[718]3143            insitu:      if False a new scantable is returned.
3144                         Otherwise, the swictching is done in-situ
3145                         The default is taken from .asaprc (False)
[1846]3146
[718]3147        """
3148        if insitu is None: insitu = rcParams['insitu']
[876]3149        self._math._setinsitu(insitu)
[718]3150        varlist = vars()
[876]3151        s = scantable(self._math._freqswitch(self))
[1118]3152        s._add_history("freq_switch", varlist)
[1856]3153        if insitu:
3154            self._assign(s)
3155        else:
3156            return s
[718]3157
[1862]3158    @asaplog_post_dec
[780]3159    def recalc_azel(self):
[1846]3160        """Recalculate the azimuth and elevation for each position."""
[780]3161        varlist = vars()
[876]3162        self._recalcazel()
[780]3163        self._add_history("recalc_azel", varlist)
3164        return
3165
[1862]3166    @asaplog_post_dec
[513]3167    def __add__(self, other):
3168        varlist = vars()
3169        s = None
3170        if isinstance(other, scantable):
[1573]3171            s = scantable(self._math._binaryop(self, other, "ADD"))
[513]3172        elif isinstance(other, float):
[876]3173            s = scantable(self._math._unaryop(self, other, "ADD", False))
[513]3174        else:
[718]3175            raise TypeError("Other input is not a scantable or float value")
[513]3176        s._add_history("operator +", varlist)
3177        return s
3178
[1862]3179    @asaplog_post_dec
[513]3180    def __sub__(self, other):
3181        """
3182        implicit on all axes and on Tsys
3183        """
3184        varlist = vars()
3185        s = None
3186        if isinstance(other, scantable):
[1588]3187            s = scantable(self._math._binaryop(self, other, "SUB"))
[513]3188        elif isinstance(other, float):
[876]3189            s = scantable(self._math._unaryop(self, other, "SUB", False))
[513]3190        else:
[718]3191            raise TypeError("Other input is not a scantable or float value")
[513]3192        s._add_history("operator -", varlist)
3193        return s
[710]3194
[1862]3195    @asaplog_post_dec
[513]3196    def __mul__(self, other):
3197        """
3198        implicit on all axes and on Tsys
3199        """
3200        varlist = vars()
3201        s = None
3202        if isinstance(other, scantable):
[1588]3203            s = scantable(self._math._binaryop(self, other, "MUL"))
[513]3204        elif isinstance(other, float):
[876]3205            s = scantable(self._math._unaryop(self, other, "MUL", False))
[513]3206        else:
[718]3207            raise TypeError("Other input is not a scantable or float value")
[513]3208        s._add_history("operator *", varlist)
3209        return s
3210
[710]3211
[1862]3212    @asaplog_post_dec
[513]3213    def __div__(self, other):
3214        """
3215        implicit on all axes and on Tsys
3216        """
3217        varlist = vars()
3218        s = None
3219        if isinstance(other, scantable):
[1589]3220            s = scantable(self._math._binaryop(self, other, "DIV"))
[513]3221        elif isinstance(other, float):
3222            if other == 0.0:
[718]3223                raise ZeroDivisionError("Dividing by zero is not recommended")
[876]3224            s = scantable(self._math._unaryop(self, other, "DIV", False))
[513]3225        else:
[718]3226            raise TypeError("Other input is not a scantable or float value")
[513]3227        s._add_history("operator /", varlist)
3228        return s
3229
[1862]3230    @asaplog_post_dec
[530]3231    def get_fit(self, row=0):
[1846]3232        """\
[530]3233        Print or return the stored fits for a row in the scantable
[1846]3234
[530]3235        Parameters:
[1846]3236
[530]3237            row:    the row which the fit has been applied to.
[1846]3238
[530]3239        """
3240        if row > self.nrow():
3241            return
[976]3242        from asap.asapfit import asapfit
[530]3243        fit = asapfit(self._getfit(row))
[1859]3244        asaplog.push( '%s' %(fit) )
3245        return fit.as_dict()
[530]3246
[1483]3247    def flag_nans(self):
[1846]3248        """\
[1483]3249        Utility function to flag NaN values in the scantable.
3250        """
3251        import numpy
3252        basesel = self.get_selection()
3253        for i in range(self.nrow()):
[1589]3254            sel = self.get_row_selector(i)
3255            self.set_selection(basesel+sel)
[1483]3256            nans = numpy.isnan(self._getspectrum(0))
3257        if numpy.any(nans):
3258            bnans = [ bool(v) for v in nans]
3259            self.flag(bnans)
3260        self.set_selection(basesel)
3261
[1588]3262    def get_row_selector(self, rowno):
[1992]3263        #return selector(beams=self.getbeam(rowno),
3264        #                ifs=self.getif(rowno),
3265        #                pols=self.getpol(rowno),
3266        #                scans=self.getscan(rowno),
3267        #                cycles=self.getcycle(rowno))
3268        return selector(rows=[rowno])
[1573]3269
[484]3270    def _add_history(self, funcname, parameters):
[1435]3271        if not rcParams['scantable.history']:
3272            return
[484]3273        # create date
3274        sep = "##"
3275        from datetime import datetime
3276        dstr = datetime.now().strftime('%Y/%m/%d %H:%M:%S')
3277        hist = dstr+sep
3278        hist += funcname+sep#cdate+sep
3279        if parameters.has_key('self'): del parameters['self']
[1118]3280        for k, v in parameters.iteritems():
[484]3281            if type(v) is dict:
[1118]3282                for k2, v2 in v.iteritems():
[484]3283                    hist += k2
3284                    hist += "="
[1118]3285                    if isinstance(v2, scantable):
[484]3286                        hist += 'scantable'
3287                    elif k2 == 'mask':
[1118]3288                        if isinstance(v2, list) or isinstance(v2, tuple):
[513]3289                            hist += str(self._zip_mask(v2))
3290                        else:
3291                            hist += str(v2)
[484]3292                    else:
[513]3293                        hist += str(v2)
[484]3294            else:
3295                hist += k
3296                hist += "="
[1118]3297                if isinstance(v, scantable):
[484]3298                    hist += 'scantable'
3299                elif k == 'mask':
[1118]3300                    if isinstance(v, list) or isinstance(v, tuple):
[513]3301                        hist += str(self._zip_mask(v))
3302                    else:
3303                        hist += str(v)
[484]3304                else:
3305                    hist += str(v)
3306            hist += sep
3307        hist = hist[:-2] # remove trailing '##'
3308        self._addhistory(hist)
3309
[710]3310
[484]3311    def _zip_mask(self, mask):
3312        mask = list(mask)
3313        i = 0
3314        segments = []
3315        while mask[i:].count(1):
3316            i += mask[i:].index(1)
3317            if mask[i:].count(0):
3318                j = i + mask[i:].index(0)
3319            else:
[710]3320                j = len(mask)
[1118]3321            segments.append([i, j])
[710]3322            i = j
[484]3323        return segments
[714]3324
[626]3325    def _get_ordinate_label(self):
3326        fu = "("+self.get_fluxunit()+")"
3327        import re
3328        lbl = "Intensity"
[1118]3329        if re.match(".K.", fu):
[626]3330            lbl = "Brightness Temperature "+ fu
[1118]3331        elif re.match(".Jy.", fu):
[626]3332            lbl = "Flux density "+ fu
3333        return lbl
[710]3334
[876]3335    def _check_ifs(self):
[1986]3336        #nchans = [self.nchan(i) for i in range(self.nif(-1))]
3337        nchans = [self.nchan(i) for i in self.getifnos()]
[2004]3338        nchans = filter(lambda t: t > 0, nchans)
[876]3339        return (sum(nchans)/len(nchans) == nchans[0])
[976]3340
[1862]3341    @asaplog_post_dec
[1916]3342    #def _fill(self, names, unit, average, getpt, antenna):
3343    def _fill(self, names, unit, average, opts={}):
[976]3344        first = True
3345        fullnames = []
3346        for name in names:
3347            name = os.path.expandvars(name)
3348            name = os.path.expanduser(name)
3349            if not os.path.exists(name):
3350                msg = "File '%s' does not exists" % (name)
3351                raise IOError(msg)
3352            fullnames.append(name)
3353        if average:
3354            asaplog.push('Auto averaging integrations')
[1079]3355        stype = int(rcParams['scantable.storage'].lower() == 'disk')
[976]3356        for name in fullnames:
[1073]3357            tbl = Scantable(stype)
[2004]3358            if is_ms( name ):
3359                r = msfiller( tbl )
3360            else:
3361                r = filler( tbl )
3362                rx = rcParams['scantable.reference']
3363                r.setreferenceexpr(rx)
3364            #r = filler(tbl)
3365            #rx = rcParams['scantable.reference']
3366            #r.setreferenceexpr(rx)
[976]3367            msg = "Importing %s..." % (name)
[1118]3368            asaplog.push(msg, False)
[1916]3369            #opts = {'ms': {'antenna' : antenna, 'getpt': getpt} }
[1904]3370            r.open(name, opts)# antenna, -1, -1, getpt)
[1843]3371            r.fill()
[976]3372            if average:
[1118]3373                tbl = self._math._average((tbl, ), (), 'NONE', 'SCAN')
[976]3374            if not first:
3375                tbl = self._math._merge([self, tbl])
3376            Scantable.__init__(self, tbl)
[1843]3377            r.close()
[1118]3378            del r, tbl
[976]3379            first = False
[1861]3380            #flush log
3381        asaplog.post()
[976]3382        if unit is not None:
3383            self.set_fluxunit(unit)
[1824]3384        if not is_casapy():
3385            self.set_freqframe(rcParams['scantable.freqframe'])
[976]3386
[2012]3387
[1402]3388    def __getitem__(self, key):
3389        if key < 0:
3390            key += self.nrow()
3391        if key >= self.nrow():
3392            raise IndexError("Row index out of range.")
3393        return self._getspectrum(key)
3394
3395    def __setitem__(self, key, value):
3396        if key < 0:
3397            key += self.nrow()
3398        if key >= self.nrow():
3399            raise IndexError("Row index out of range.")
3400        if not hasattr(value, "__len__") or \
3401                len(value) > self.nchan(self.getif(key)):
3402            raise ValueError("Spectrum length doesn't match.")
3403        return self._setspectrum(value, key)
3404
3405    def __len__(self):
3406        return self.nrow()
3407
3408    def __iter__(self):
3409        for i in range(len(self)):
3410            yield self[i]
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