def get_targets(nspec, program, tileid=None, seed=None, specify_targets=dict(), specmin=0): """ Generates a set of targets for the requested program Args: nspec: (int) number of targets to generate program: (str) program name DARK, BRIGHT, GRAY, MWS, BGS, LRG, ELG, ... Options: * tileid: (int) tileid, used for setting RA,dec * seed: (int) random number seed * specify_targets: (dict of dicts) Define target properties like magnitude and redshift for each target class. Each objtype has its own key,value pair see simspec.templates.specify_galparams_dict() or simsepc.templates.specify_starparams_dict() * specmin: (int) first spectrum number (0-indexed) Returns: * fibermap * targets as tuple of (flux, wave, meta) """ if tileid is None: tile_ra, tile_dec = 0.0, 0.0 else: tile_ra, tile_dec = io.get_tile_radec(tileid) program = program.upper() log.debug('Using random seed {}'.format(seed)) np.random.seed(seed) #- Get distribution of target types true_objtype, target_objtype = sample_objtype(nspec, program) #- Get DESI wavelength coverage wavemin = desimodel.io.load_throughput('b').wavemin wavemax = desimodel.io.load_throughput('z').wavemax dw = 0.2 wave = np.arange(round(wavemin, 1), wavemax, dw) nwave = len(wave) flux = np.zeros((nspec, len(wave))) meta = empty_metatable(nmodel=nspec, objtype='SKY') fibermap = empty_fibermap(nspec) for objtype in set(true_objtype): ii = np.where(true_objtype == objtype)[0] nobj = len(ii) fibermap['OBJTYPE'][ii] = target_objtype[ii] if objtype in specify_targets.keys(): obj_kwargs = specify_targets[objtype] else: obj_kwargs = dict() # Simulate spectra if objtype == 'SKY': fibermap['DESI_TARGET'][ii] = desi_mask.SKY continue elif objtype == 'ELG': from desisim.templates import ELG elg = ELG(wave=wave) simflux, wave1, meta1 = elg.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.ELG elif objtype == 'LRG': from desisim.templates import LRG lrg = LRG(wave=wave) simflux, wave1, meta1 = lrg.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.LRG elif objtype == 'BGS': from desisim.templates import BGS bgs = BGS(wave=wave) simflux, wave1, meta1 = bgs.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.BGS_ANY fibermap['BGS_TARGET'][ii] = bgs_mask.BGS_BRIGHT elif objtype == 'QSO': from desisim.templates import QSO qso = QSO(wave=wave) simflux, wave1, meta1 = qso.make_templates(nmodel=nobj, seed=seed, lyaforest=False, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.QSO # For a "bad" QSO simulate a normal star without color cuts, which isn't # right. We need to apply the QSO color-cuts to the normal stars to pull # out the correct population of contaminating stars. # Note by @moustakas: we can now do this using desisim/#150, but we are # going to need 'noisy' photometry (because the QSO color-cuts # explicitly avoid the stellar locus). elif objtype == 'QSO_BAD': from desisim.templates import STAR #from desitarget.cuts import isQSO #star = STAR(wave=wave, colorcuts_function=isQSO) star = STAR(wave=wave) simflux, wave1, meta1 = star.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.QSO elif objtype == 'STD': from desisim.templates import FSTD fstd = FSTD(wave=wave) simflux, wave1, meta1 = fstd.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.STD_FSTAR elif objtype == 'MWS_STAR': from desisim.templates import MWS_STAR mwsstar = MWS_STAR(wave=wave) # todo: mag ranges for different programs of STAR targets should be in desimodel if 'rmagrange' not in obj_kwargs.keys(): obj_kwargs['rmagrange'] = (15.0, 20.0) simflux, wave1, meta1 = mwsstar.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.MWS_ANY #- MWS bit names changed after desitarget 0.6.0 so use number #- instead of name for now (bit 0 = mask 1 = MWS_MAIN currently) fibermap['MWS_TARGET'][ii] = 1 else: raise ValueError('Unable to simulate OBJTYPE={}'.format(objtype)) flux[ii] = simflux meta[ii] = meta1 fibermap['FILTER'][ii, :6] = [ 'DECAM_G', 'DECAM_R', 'DECAM_Z', 'WISE_W1', 'WISE_W2' ] fibermap['MAG'][ii, 0] = 22.5 - 2.5 * np.log10(meta['FLUX_G'][ii]) fibermap['MAG'][ii, 1] = 22.5 - 2.5 * np.log10(meta['FLUX_R'][ii]) fibermap['MAG'][ii, 2] = 22.5 - 2.5 * np.log10(meta['FLUX_Z'][ii]) fibermap['MAG'][ii, 3] = 22.5 - 2.5 * np.log10(meta['FLUX_W1'][ii]) fibermap['MAG'][ii, 4] = 22.5 - 2.5 * np.log10(meta['FLUX_W2'][ii]) #- Load fiber -> positioner mapping and tile information fiberpos = desimodel.io.load_fiberpos() #- Where are these targets? Centered on positioners for now. x = fiberpos['X'][specmin:specmin + nspec] y = fiberpos['Y'][specmin:specmin + nspec] fp = FocalPlane(tile_ra, tile_dec) ra = np.zeros(nspec) dec = np.zeros(nspec) for i in range(nspec): ra[i], dec[i] = fp.xy2radec(x[i], y[i]) #- Fill in the rest of the fibermap structure fibermap['FIBER'] = np.arange(nspec, dtype='i4') fibermap['POSITIONER'] = fiberpos['POSITIONER'][specmin:specmin + nspec] fibermap['SPECTROID'] = fiberpos['SPECTROGRAPH'][specmin:specmin + nspec] fibermap['TARGETID'] = np.random.randint(sys.maxsize, size=nspec) fibermap['TARGETCAT'] = np.zeros(nspec, dtype=(str, 20)) fibermap['LAMBDAREF'] = np.ones(nspec, dtype=np.float32) * 5400 fibermap['RA_TARGET'] = ra fibermap['DEC_TARGET'] = dec fibermap['X_TARGET'] = x fibermap['Y_TARGET'] = y fibermap['X_FVCOBS'] = fibermap['X_TARGET'] fibermap['Y_FVCOBS'] = fibermap['Y_TARGET'] fibermap['X_FVCERR'] = np.zeros(nspec, dtype=np.float32) fibermap['Y_FVCERR'] = np.zeros(nspec, dtype=np.float32) fibermap['RA_OBS'] = fibermap['RA_TARGET'] fibermap['DEC_OBS'] = fibermap['DEC_TARGET'] fibermap['BRICKNAME'] = brick.brickname(ra, dec) return fibermap, (flux, wave, meta)
def get_targets(nspec, program, tileid=None, seed=None, specify_targets=dict(), specmin=0): """ Generates a set of targets for the requested program Args: nspec: (int) number of targets to generate program: (str) program name DARK, BRIGHT, GRAY, MWS, BGS, LRG, ELG, ... Options: * tileid: (int) tileid, used for setting RA,dec * seed: (int) random number seed * specify_targets: (dict of dicts) Define target properties like magnitude and redshift for each target class. Each objtype has its own key,value pair see simspec.templates.specify_galparams_dict() or simsepc.templates.specify_starparams_dict() * specmin: (int) first spectrum number (0-indexed) Returns: * fibermap * targets as tuple of (flux, wave, meta) """ if tileid is None: tile_ra, tile_dec = 0.0, 0.0 else: tile_ra, tile_dec = io.get_tile_radec(tileid) program = program.upper() log.debug('Using random seed {}'.format(seed)) np.random.seed(seed) #- Get distribution of target types true_objtype, target_objtype = sample_objtype(nspec, program) #- Get DESI wavelength coverage try: params = desimodel.io.load_desiparams() wavemin = params['ccd']['b']['wavemin'] wavemax = params['ccd']['z']['wavemax'] except KeyError: wavemin = desimodel.io.load_throughput('b').wavemin wavemax = desimodel.io.load_throughput('z').wavemax dw = 0.2 wave = np.arange(round(wavemin, 1), wavemax, dw) nwave = len(wave) flux = np.zeros( (nspec, len(wave)) ) meta, _ = empty_metatable(nmodel=nspec, objtype='SKY') objmeta = dict() fibermap = empty_fibermap(nspec) targetid = np.random.randint(sys.maxsize, size=nspec).astype(np.int64) meta['TARGETID'] = targetid fibermap['TARGETID'] = targetid for objtype in set(true_objtype): ii = np.where(true_objtype == objtype)[0] nobj = len(ii) fibermap['OBJTYPE'][ii] = target_objtype[ii] if objtype in specify_targets.keys(): obj_kwargs = specify_targets[objtype] else: obj_kwargs = dict() # Simulate spectra if objtype == 'SKY': fibermap['DESI_TARGET'][ii] = desi_mask.SKY continue elif objtype == 'ELG': from desisim.templates import ELG elg = ELG(wave=wave) simflux, wave1, meta1, objmeta1 = elg.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.ELG elif objtype == 'LRG': from desisim.templates import LRG lrg = LRG(wave=wave) simflux, wave1, meta1, objmeta1 = lrg.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.LRG elif objtype == 'BGS': from desisim.templates import BGS bgs = BGS(wave=wave) simflux, wave1, meta1, objmeta1 = bgs.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.BGS_ANY fibermap['BGS_TARGET'][ii] = bgs_mask.BGS_BRIGHT elif objtype == 'QSO': from desisim.templates import QSO qso = QSO(wave=wave) simflux, wave1, meta1, objmeta1 = qso.make_templates(nmodel=nobj, seed=seed, lyaforest=False, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.QSO # For a "bad" QSO simulate a normal star without color cuts, which isn't # right. We need to apply the QSO color-cuts to the normal stars to pull # out the correct population of contaminating stars. # Note by @moustakas: we can now do this using desisim/#150, but we are # going to need 'noisy' photometry (because the QSO color-cuts # explicitly avoid the stellar locus). elif objtype == 'QSO_BAD': from desisim.templates import STAR #from desitarget.cuts import isQSO #star = STAR(wave=wave, colorcuts_function=isQSO) star = STAR(wave=wave) simflux, wave1, meta1, objmeta1 = star.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.QSO elif objtype == 'STD': from desisim.templates import STD std = STD(wave=wave) simflux, wave1, meta1, objmeta1 = std.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) #- Loop options for forwards/backwards compatibility for name in ['STD_FAINT', 'STD_FSTAR', 'STD']: if name in desi_mask.names(): fibermap['DESI_TARGET'][ii] |= desi_mask[name] break elif objtype == 'MWS_STAR': from desisim.templates import MWS_STAR mwsstar = MWS_STAR(wave=wave) # TODO: mag ranges for different programs of STAR targets should be in desimodel if 'magrange' not in obj_kwargs.keys(): obj_kwargs['magrange'] = (15.0,20.0) simflux, wave1, meta1, objmeta1 = mwsstar.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] |= desi_mask.MWS_ANY #- MWS bit names changed after desitarget 0.6.0 so use number #- instead of name for now (bit 0 = mask 1 = MWS_MAIN currently) fibermap['MWS_TARGET'][ii] = 1 else: raise ValueError('Unable to simulate OBJTYPE={}'.format(objtype)) # Assign targetid meta1['TARGETID'] = targetid[ii] if hasattr(objmeta1, 'data'): # simqso.sqgrids.QsoSimPoints object objmeta1.data['TARGETID'] = targetid[ii] else: if len(objmeta1) > 0: objmeta1['TARGETID'] = targetid[ii] # We want the dict key tied to the "true" object type (e.g., STAR), # not, e.g., QSO_BAD. objmeta[meta1['OBJTYPE'][0]] = objmeta1 flux[ii] = simflux meta[ii] = meta1 for band in ['G', 'R', 'Z', 'W1', 'W2']: key = 'FLUX_'+band fibermap[key][ii] = meta[key][ii] #- TODO: FLUX_IVAR #- Load fiber -> positioner mapping and tile information fiberpos = desimodel.io.load_fiberpos() #- Where are these targets? Centered on positioners for now. x = fiberpos['X'][specmin:specmin+nspec] y = fiberpos['Y'][specmin:specmin+nspec] fp = FocalPlane(tile_ra, tile_dec) ra = np.zeros(nspec) dec = np.zeros(nspec) for i in range(nspec): ra[i], dec[i] = fp.xy2radec(x[i], y[i]) #- Fill in the rest of the fibermap structure fibermap['FIBER'] = np.arange(nspec, dtype='i4') fibermap['POSITIONER'] = fiberpos['POSITIONER'][specmin:specmin+nspec] fibermap['SPECTROID'] = fiberpos['SPECTROGRAPH'][specmin:specmin+nspec] fibermap['TARGETCAT'] = np.zeros(nspec, dtype=(str, 20)) fibermap['LAMBDA_REF'] = np.ones(nspec, dtype=np.float32)*5400 fibermap['TARGET_RA'] = ra fibermap['TARGET_DEC'] = dec fibermap['FIBERASSIGN_X'] = x fibermap['FIBERASSIGN_Y'] = y fibermap['FIBER_RA'] = fibermap['TARGET_RA'] fibermap['FIBER_DEC'] = fibermap['TARGET_DEC'] fibermap['BRICKNAME'] = brick.brickname(ra, dec) return fibermap, (flux, wave, meta, objmeta)
def get_targets(nspec, program, tileid=None, seed=None, specify_targets=dict(), specmin=0): """ Generates a set of targets for the requested program Args: nspec: (int) number of targets to generate program: (str) program name DARK, BRIGHT, GRAY, MWS, BGS, LRG, ELG, ... Options: * tileid: (int) tileid, used for setting RA,dec * seed: (int) random number seed * specify_targets: (dict of dicts) Define target properties like magnitude and redshift for each target class. Each objtype has its own key,value pair see simspec.templates.specify_galparams_dict() or simsepc.templates.specify_starparams_dict() * specmin: (int) first spectrum number (0-indexed) Returns: * fibermap * targets as tuple of (flux, wave, meta) """ if tileid is None: tile_ra, tile_dec = 0.0, 0.0 else: tile_ra, tile_dec = io.get_tile_radec(tileid) program = program.upper() log.debug('Using random seed {}'.format(seed)) np.random.seed(seed) #- Get distribution of target types true_objtype, target_objtype = sample_objtype(nspec, program) #- Get DESI wavelength coverage try: params = desimodel.io.load_desiparams() wavemin = params['ccd']['b']['wavemin'] wavemax = params['ccd']['z']['wavemax'] except KeyError: wavemin = desimodel.io.load_throughput('b').wavemin wavemax = desimodel.io.load_throughput('z').wavemax dw = 0.2 wave = np.arange(round(wavemin, 1), wavemax, dw) nwave = len(wave) flux = np.zeros( (nspec, len(wave)) ) meta, _ = empty_metatable(nmodel=nspec, objtype='SKY') objmeta = dict() fibermap = empty_fibermap(nspec) targetid = np.random.randint(sys.maxsize, size=nspec).astype(np.int64) meta['TARGETID'] = targetid fibermap['TARGETID'] = targetid for objtype in set(true_objtype): ii = np.where(true_objtype == objtype)[0] nobj = len(ii) fibermap['OBJTYPE'][ii] = target_objtype[ii] if objtype in specify_targets.keys(): obj_kwargs = specify_targets[objtype] else: obj_kwargs = dict() # Simulate spectra if objtype == 'SKY': fibermap['DESI_TARGET'][ii] = desi_mask.SKY continue elif objtype == 'ELG': from desisim.templates import ELG elg = ELG(wave=wave) simflux, wave1, meta1, objmeta1 = elg.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.ELG elif objtype == 'LRG': from desisim.templates import LRG lrg = LRG(wave=wave) simflux, wave1, meta1, objmeta1 = lrg.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.LRG elif objtype == 'BGS': from desisim.templates import BGS bgs = BGS(wave=wave) simflux, wave1, meta1, objmeta1 = bgs.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.BGS_ANY fibermap['BGS_TARGET'][ii] = bgs_mask.BGS_BRIGHT elif objtype == 'QSO': from desisim.templates import QSO qso = QSO(wave=wave) simflux, wave1, meta1, objmeta1 = qso.make_templates(nmodel=nobj, seed=seed, lyaforest=False, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.QSO # For a "bad" QSO simulate a normal star without color cuts, which isn't # right. We need to apply the QSO color-cuts to the normal stars to pull # out the correct population of contaminating stars. # Note by @moustakas: we can now do this using desisim/#150, but we are # going to need 'noisy' photometry (because the QSO color-cuts # explicitly avoid the stellar locus). elif objtype == 'QSO_BAD': from desisim.templates import STAR #from desitarget.cuts import isQSO #star = STAR(wave=wave, colorcuts_function=isQSO) star = STAR(wave=wave) simflux, wave1, meta1, objmeta1 = star.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] = desi_mask.QSO elif objtype == 'STD': from desisim.templates import STD std = STD(wave=wave) simflux, wave1, meta1, objmeta1 = std.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) #- Loop options for forwards/backwards compatibility for name in ['STD_FAINT', 'STD_FSTAR', 'STD']: if name in desi_mask.names(): fibermap['DESI_TARGET'][ii] |= desi_mask[name] break elif objtype == 'MWS_STAR': from desisim.templates import MWS_STAR mwsstar = MWS_STAR(wave=wave) # TODO: mag ranges for different programs of STAR targets should be in desimodel if 'magrange' not in obj_kwargs.keys(): obj_kwargs['magrange'] = (15.0,20.0) simflux, wave1, meta1, objmeta1 = mwsstar.make_templates(nmodel=nobj, seed=seed, **obj_kwargs) fibermap['DESI_TARGET'][ii] |= desi_mask.MWS_ANY #- MWS bit names changed after desitarget 0.6.0 so use number #- instead of name for now (bit 0 = mask 1 = MWS_MAIN currently) fibermap['MWS_TARGET'][ii] = 1 else: raise ValueError('Unable to simulate OBJTYPE={}'.format(objtype)) # Assign targetid meta1['TARGETID'] = targetid[ii] if hasattr(objmeta1, 'data'): # simqso.sqgrids.QsoSimPoints object objmeta1.data['TARGETID'] = targetid[ii] else: if len(objmeta1) > 0: objmeta1['TARGETID'] = targetid[ii] # We want the dict key tied to the "true" object type (e.g., STAR), # not, e.g., QSO_BAD. objmeta[meta1['OBJTYPE'][0]] = objmeta1 flux[ii] = simflux meta[ii] = meta1 for band in ['G', 'R', 'Z', 'W1', 'W2']: key = 'FLUX_'+band fibermap[key][ii] = meta[key][ii] #- TODO: FLUX_IVAR #- Load fiber -> positioner mapping and tile information fiberpos = desimodel.io.load_fiberpos() #- Where are these targets? Centered on positioners for now. x = fiberpos['X'][specmin:specmin+nspec] y = fiberpos['Y'][specmin:specmin+nspec] fp = FocalPlane(tile_ra, tile_dec) ra = np.zeros(nspec) dec = np.zeros(nspec) for i in range(nspec): ra[i], dec[i] = fp.xy2radec(x[i], y[i]) #- Fill in the rest of the fibermap structure fibermap['FIBER'] = np.arange(nspec, dtype='i4') fibermap['POSITIONER'] = fiberpos['POSITIONER'][specmin:specmin+nspec] fibermap['SPECTROID'] = fiberpos['SPECTROGRAPH'][specmin:specmin+nspec] fibermap['TARGETCAT'] = np.zeros(nspec, dtype=(str, 20)) fibermap['LAMBDA_REF'] = np.ones(nspec, dtype=np.float32)*5400 fibermap['TARGET_RA'] = ra fibermap['TARGET_DEC'] = dec fibermap['DESIGN_X'] = x fibermap['DESIGN_Y'] = y fibermap['FIBER_RA'] = fibermap['TARGET_RA'] fibermap['FIBER_DEC'] = fibermap['TARGET_DEC'] fibermap['BRICKNAME'] = brick.brickname(ra, dec) return fibermap, (flux, wave, meta, objmeta)