[203] | 1 | from asap.asaplot import ASAPlot |
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[226] | 2 | from asap import rcParams |
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[203] | 3 | |
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| 4 | class asapplotter: |
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[226] | 5 | """ |
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| 6 | The ASAP plotter. |
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| 7 | By default the plotter is set up to plot polarisations |
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| 8 | 'colour stacked' and scantables across panels. |
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| 9 | The defaul plotter is called 'plotter'. |
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| 10 | Note: |
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| 11 | Currenly it only plots 'spectra' not Tsys or |
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| 12 | other variables. |
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| 13 | """ |
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[203] | 14 | def __init__(self): |
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| 15 | self._plotter = ASAPlot() |
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| 16 | |
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| 17 | self._tdict = {'Time':'t','time':'t','t':'t','T':'t'} |
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| 18 | self._bdict = {'Beam':'b','beam':'b','b':'b','B':'b'} |
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| 19 | self._idict = {'IF':'i','if':'i','i':'i','I':'i'} |
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| 20 | self._pdict = {'Pol':'p','pol':'p','p':'p'} |
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| 21 | self._sdict = {'scan':'s','Scan':'s','s':'s','S':'s'} |
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| 22 | self._cdict = {'t':'scan.nrow()', |
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| 23 | 'b':'scan.nbeam()', |
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| 24 | 'i':'scan.nif()', |
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| 25 | 'p':'scan.npol()', |
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| 26 | 's':'len(scans)'} |
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| 27 | self._ldict = {'b':'Beam', |
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| 28 | 'i':'IF', |
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| 29 | 'p':'Pol', |
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| 30 | 's':'Scan'} |
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| 31 | self._dicts = [self._tdict,self._bdict, |
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| 32 | self._idict,self._pdict, |
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| 33 | self._sdict] |
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| 34 | self._panels = 's' |
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[226] | 35 | self._stacking = rcParams['plotter.stacking'] |
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[203] | 36 | self._autoplot = False |
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| 37 | self._minmax = None |
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| 38 | self._data = None |
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| 39 | self._lmap = [] |
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[226] | 40 | self._title = None |
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[203] | 41 | |
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| 42 | def _translate(self, name): |
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| 43 | for d in self._dicts: |
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| 44 | if d.has_key(name): |
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| 45 | return d[name] |
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| 46 | return None |
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| 47 | |
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| 48 | def plot(self,*args): |
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| 49 | """ |
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| 50 | Plot a (list of) scantables. |
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| 51 | Parameters: |
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| 52 | one or more comma separated scantables |
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| 53 | Note: |
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| 54 | If a (list) of scantables was specified in a previous call |
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| 55 | to plot, no argument has to be given to 'replot' |
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| 56 | NO checking is done that the abscissas of the scantables |
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| 57 | are consistent e.g. all 'channel' or all 'velocity' etc. |
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| 58 | """ |
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| 59 | if self._plotter.is_dead: |
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| 60 | self._plotter = ASAPlot() |
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| 61 | self._plotter.clear() |
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| 62 | self._plotter.hold() |
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| 63 | if len(args) > 0: |
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| 64 | self._data = tuple(args) |
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| 65 | if self._panels == 't': |
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| 66 | if self._data[0].nrow() > 25: |
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| 67 | print "Scan to be plotted contains more than 25 rows.\nCan't plot that many panels..." |
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| 68 | return |
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| 69 | self._plot_time(self._data[0], self._stacking) |
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| 70 | elif self._panels == 's': |
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| 71 | self._plot_scans(self._data, self._stacking) |
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| 72 | else: |
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| 73 | self._plot_other(self._data, self._stacking) |
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| 74 | if self._minmax is not None: |
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| 75 | self._plotter.set_limits(xlim=self._minmax) |
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| 76 | self._plotter.release() |
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| 77 | return |
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| 78 | |
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| 79 | def _plot_time(self, scan, colmode): |
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| 80 | if colmode == 't': |
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| 81 | return |
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| 82 | n = scan.nrow() |
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| 83 | cdict = {'b':'scan.setbeam(j)', |
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| 84 | 'i':'scan.setif(j)', |
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| 85 | 'p':'scan.setpol(j)'} |
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| 86 | if self._stacking is not None: |
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| 87 | ncol = eval(self._cdict.get(colmode)) |
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| 88 | self._plotter.set_panels() |
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| 89 | if n > 1: |
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| 90 | self._plotter.set_panels(rows=n) |
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| 91 | for i in range(n): |
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| 92 | if n > 1: |
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| 93 | self._plotter.palette(0) |
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| 94 | self._plotter.subplot(i) |
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| 95 | for j in range(ncol): |
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| 96 | eval(cdict.get(colmode)) |
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| 97 | x = None |
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| 98 | y = None |
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| 99 | m = None |
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[226] | 100 | if not self._title: |
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| 101 | tlab = scan._getsourcename(i) |
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| 102 | else: |
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| 103 | if len(self._title) == n: |
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| 104 | tlab = self._title[i] |
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| 105 | else: |
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| 106 | tlab = scan._getsourcename(i) |
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[203] | 107 | x,xlab = scan.get_abcissa(i) |
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| 108 | y = scan.getspectrum(i) |
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| 109 | ylab = 'Flux ('+scan.get_fluxunit()+')' |
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| 110 | m = scan.getmask(i) |
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[226] | 111 | if self._lmap and len(self._lmap) > 0: |
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[203] | 112 | llab = self._lmap[j] |
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| 113 | else: |
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| 114 | llab = self._ldict.get(colmode)+' '+str(j) |
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| 115 | self._plotter.set_line(label=llab) |
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| 116 | self._plotter.plot(x,y,m) |
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| 117 | xlim=[min(x),max(x)] |
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| 118 | self._plotter.axes.set_xlim(xlim) |
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| 119 | self._plotter.set_axes('xlabel',xlab) |
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| 120 | self._plotter.set_axes('ylabel',ylab) |
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| 121 | self._plotter.set_axes('title',tlab) |
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| 122 | return |
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| 123 | |
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| 124 | def _plot_scans(self, scans, colmode): |
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| 125 | if colmode == 's': |
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| 126 | return |
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| 127 | cdict = {'b':'scan.setbeam(j)', |
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| 128 | 'i':'scan.setif(j)', |
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| 129 | 'p':'scan.setpol(j)'} |
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| 130 | n = len(scans) |
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| 131 | if self._stacking is not None: |
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| 132 | scan = scans[0] |
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| 133 | ncol = eval(self._cdict.get(colmode)) |
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| 134 | self._plotter.set_panels() |
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| 135 | if n > 1: |
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| 136 | self._plotter.set_panels(rows=n) |
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| 137 | i = 0 |
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| 138 | for scan in scans: |
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| 139 | if n > 1: |
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| 140 | self._plotter.subplot(i) |
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| 141 | self._plotter.palette(0) |
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| 142 | for j in range(ncol): |
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| 143 | eval(cdict.get(colmode)) |
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| 144 | x = None |
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| 145 | y = None |
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| 146 | m = None |
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[226] | 147 | tlab = self._title |
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| 148 | if not self._title: |
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| 149 | tlab = scan._getsourcename() |
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[203] | 150 | x,xlab = scan.get_abcissa() |
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| 151 | y = scan.getspectrum() |
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| 152 | ylab = 'Flux ('+scan.get_fluxunit()+')' |
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| 153 | m = scan.getmask() |
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| 154 | if len(self._lmap) > 0: |
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| 155 | llab = self._lmap[j] |
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| 156 | else: |
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| 157 | llab = self._ldict.get(colmode)+' '+str(j) |
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| 158 | self._plotter.set_line(label=llab) |
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| 159 | self._plotter.plot(x,y,m) |
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| 160 | xlim=[min(x),max(x)] |
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| 161 | self._plotter.axes.set_xlim(xlim) |
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| 162 | |
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| 163 | self._plotter.set_axes('xlabel',xlab) |
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| 164 | self._plotter.set_axes('ylabel',ylab) |
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| 165 | self._plotter.set_axes('title',tlab) |
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| 166 | i += 1 |
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| 167 | return |
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| 168 | |
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| 169 | def _plot_other(self,scans,colmode): |
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| 170 | if colmode == self._panels: |
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| 171 | return |
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| 172 | cdict = {'b':'scan.setbeam(j)', |
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| 173 | 'i':'scan.setif(j)', |
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| 174 | 'p':'scan.setpol(j)', |
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| 175 | 's':'scans[j]'} |
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| 176 | scan = scans[0] |
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| 177 | n = eval(self._cdict.get(self._panels)) |
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| 178 | if self._stacking is not None: |
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| 179 | ncol = eval(self._cdict.get(colmode)) |
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| 180 | self._plotter.set_panels() |
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| 181 | if n > 1: |
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| 182 | self._plotter.set_panels(rows=n) |
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| 183 | for i in range(n): |
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| 184 | if n>1: |
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| 185 | self._plotter.subplot(i) |
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| 186 | self._plotter.palette(0) |
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| 187 | k=0 |
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| 188 | j=i |
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| 189 | eval(cdict.get(self._panels)) |
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| 190 | for j in range(ncol): |
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| 191 | if colmode == 's': |
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| 192 | scan = eval(cdict.get(colmode)) |
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| 193 | elif colmode == 't': |
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| 194 | k = j |
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| 195 | else: |
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| 196 | eval(cdict.get(colmode)) |
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| 197 | x = None |
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| 198 | y = None |
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| 199 | m = None |
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| 200 | x,xlab = scan.get_abcissa(k) |
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| 201 | y = scan.getspectrum(k) |
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| 202 | ylab = 'Flux ('+scan.get_fluxunit()+')' |
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| 203 | m = scan.getmask(k) |
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| 204 | if colmode == 's' or colmode == 't': |
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[226] | 205 | if not self._title: |
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| 206 | tlab = self._ldict.get(self._panels)+' '+str(i) |
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| 207 | else: |
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| 208 | if len(self.title) == n: |
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| 209 | tlab = self._title[i] |
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| 210 | else: |
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| 211 | tlab = self._ldict.get(self._panels)+' '+str(i) |
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[203] | 212 | llab = scan._getsourcename(k) |
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| 213 | else: |
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[226] | 214 | if self._title and len(self._title) > 0: |
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| 215 | tlab = self._title[k] |
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| 216 | else: |
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| 217 | tlab = scan._getsourcename(k) |
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| 218 | if self._lmap and len(self._lmap) > 0: |
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[203] | 219 | llab = self._lmap[j] |
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| 220 | else: |
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| 221 | llab = self._ldict.get(colmode)+' '+str(j) |
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| 222 | self._plotter.set_line(label=llab) |
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| 223 | self._plotter.plot(x,y,m) |
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| 224 | xlim=[min(x),max(x)] |
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| 225 | self._plotter.axes.set_xlim(xlim) |
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| 226 | |
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| 227 | self._plotter.set_axes('xlabel',xlab) |
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| 228 | self._plotter.set_axes('ylabel',ylab) |
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| 229 | self._plotter.set_axes('title',tlab) |
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| 230 | |
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| 231 | return |
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| 232 | |
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| 233 | |
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[226] | 234 | def set_mode(self, stacking=None, panelling=None): |
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[203] | 235 | """ |
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| 236 | Parameters: |
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| 237 | stacking: tell the plotter which variable to plot |
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| 238 | as line colour overlays (default 'pol') |
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| 239 | panelling: tell the plotter which variable to plot |
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| 240 | across multiple panels (default 'scan' |
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| 241 | Note: |
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| 242 | Valid modes are: |
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| 243 | 'beam' 'Beam' 'b': Beams |
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| 244 | 'if' 'IF' 'i': IFs |
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| 245 | 'pol' 'Pol' 'p': Polarisations |
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| 246 | 'scan' 'Scan' 's': Scans |
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| 247 | 'time' 'Time' 't': Times |
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| 248 | """ |
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| 249 | if not self.set_panels(panelling): |
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| 250 | print "Invalid mode" |
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[226] | 251 | return |
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[203] | 252 | if not self.set_stacking(stacking): |
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| 253 | print "Invalid mode" |
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[226] | 254 | return |
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| 255 | if self._data: self.plot() |
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[203] | 256 | return |
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| 257 | |
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[226] | 258 | def set_panels(self, what=None): |
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| 259 | if not what: |
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| 260 | what = rcParams['plotter.panelling'] |
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[203] | 261 | md = self._translate(what) |
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| 262 | if md: |
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[226] | 263 | self._panels = md |
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| 264 | self._title = None |
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[203] | 265 | return True |
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| 266 | return False |
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| 267 | |
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[226] | 268 | def set_stacking(self, what=None): |
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| 269 | if not what: |
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| 270 | what = rcParams['plotter.stacking'] |
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[203] | 271 | md = self._translate(what) |
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| 272 | if md: |
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| 273 | self._stacking = md |
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[226] | 274 | self._lmap = None |
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[203] | 275 | return True |
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| 276 | return False |
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| 277 | |
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| 278 | def set_range(self,start=None,end=None): |
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| 279 | """ |
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| 280 | Set the range of interest on the abcissa of the plot |
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| 281 | Parameters: |
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| 282 | start,end: The start an end point of the 'zoom' window |
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| 283 | Note: |
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| 284 | These become non-sensical when the unit changes. |
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| 285 | use plotter.set_range() without parameters to reset |
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| 286 | |
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| 287 | """ |
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| 288 | if start is None and end is None: |
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| 289 | self._minmax = None |
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[226] | 290 | if self._data: self.plot() |
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[203] | 291 | else: |
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| 292 | self._minmax = [start,end] |
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[226] | 293 | if self._data: self.plot() |
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[203] | 294 | return |
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| 295 | |
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[226] | 296 | def set_legend_map(self, mp=[]): |
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[203] | 297 | """ |
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| 298 | Specify a mapping for the legend instead of using the default |
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| 299 | indices: |
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| 300 | Parameters: |
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| 301 | mp: a list of 'strings'. This should have the same length |
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| 302 | as the number of elements on the legend and then maps |
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| 303 | to the indeces in order |
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| 304 | |
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| 305 | Example: |
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| 306 | If the data has to IFs/rest frequencies with index 0 and 1 |
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| 307 | for CO and SiO: |
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| 308 | plotter.set_stacking('i') |
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| 309 | plotter.set_legend_map(['CO','SiO']) |
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| 310 | plotter.plot() |
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| 311 | """ |
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| 312 | self._lmap = mp |
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[226] | 313 | if self._data: self.plot() |
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| 314 | return |
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| 315 | |
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| 316 | def set_title(self, title=None): |
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| 317 | self._title = title |
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| 318 | if self._data: self.plot() |
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| 319 | return |
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| 320 | |
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[203] | 321 | if __name__ == '__main__': |
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| 322 | plotter = asapplotter() |
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