def get_luminosity_and_flux(tbdata, xmm=False):
    #
    ### Extract magnitude table and error table ###
    flux = vari_funcs.flux4_stacks(tbdata)
    flux, tbdata = vari_funcs.noneg(flux, tbdata)
    #    tbdata = tbdata[np.nanmean(flux,axis=1)>1e4]
    flux, fluxerr, tbdata = vari_funcs.create_quad_error_array(sigtb,
                                                               tbdata,
                                                               aper=4)

    ### Normalise ###
    fluxnorm, fluxerrnorm = vari_funcs.normalise_flux_and_errors(flux, fluxerr)

    ### Find luminosity distance ###
    z = tbdata['z_spec']  #[mask]
    z[z == -1] = tbdata['z_p'][z == -1]
    DL = cosmo.luminosity_distance(z)
    DL = DL.to(u.m)

    ### Get AB magnitude ###
    #    abmag = tbdata['KMAG_20']

    ### Convert to luminosity using formula worked out in lab book ###
    #    L = 10 ** (-abmag/2.5) * 3631 * 1e-26 * (3e8/0.34e-6) * 4 * np.pi * (DL.value**2) # gives luminosity in W
    L = tbdata['M_K_z_p']

    return tbdata, L, fluxnorm, fluxerrnorm
Beispiel #2
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def prep_data(tbdata):
    ### Remove edges ###
    tbdata = vari_funcs.remove_edges(tbdata)
    
    ## Create arrays of flux values ###
    flux = vari_funcs.flux4_stacks(tbdata)
    
    ### remove values that are negative ###
    flux, tbdata = vari_funcs.noneg(flux, tbdata)
    
    ### Get error arrays ###
    flux, fluxerr, tbdata = vari_funcs.create_quad_error_array(sigtb, tbdata, aper=4)
    
    return flux, fluxerr, tbdata
def get_luminosity_and_flux(tbdata, xmm=False):
    
    ### Extract magnitude table and error table ###
    flux = vari_funcs.flux4_stacks(tbdata)
    flux, tbdata = vari_funcs.noneg(flux, tbdata)
#    tbdata = tbdata[np.nanmean(flux,axis=1)>1e4]
    flux, fluxerr, tbdata = vari_funcs.create_quad_error_array(sigtb, tbdata, aper=4)
    
    ### Normalise ###
    fluxnorm, fluxerrnorm = vari_funcs.normalise_flux_and_errors(flux, fluxerr)
    
    ### Get Luminosity ###
    L = tbdata['M_K_z_p']
    L[L == 99] = np.nan
    mask = ~np.isnan(L)
    tbdata = tbdata[mask]
    L = L[mask]
    fluxnorm = fluxnorm[mask]
    fluxerrnorm = fluxerrnorm[mask]
    
    return tbdata, L, fluxnorm, fluxerrnorm
def get_luminosity_and_flux(tbdata, xmm=False):
    #
    ### Extract magnitude table and error table ###
    flux = vari_funcs.flux4_stacks(tbdata)
    flux, tbdata = vari_funcs.noneg(flux, tbdata)
    #    tbdata = tbdata[np.nanmean(flux,axis=1)>1e4]
    flux, fluxerr, tbdata = vari_funcs.create_quad_error_array(sigtb,
                                                               tbdata,
                                                               aper=4)

    ### Normalise ###
    fluxnorm, fluxerrnorm = vari_funcs.normalise_flux_and_errors(flux, fluxerr)

    L = tbdata['KFLUX_20']

    ### remove any that have -ve val ###
    L[L < 0] = np.nan  # remove those with null values
    #    L[L > -5] = np.nan # remove faintest as seem spurious
    mask = ~np.isnan(L)
    #    [mask]
    return tbdata[mask], L[mask], fluxnorm[mask], fluxerrnorm[mask]
Beispiel #5
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def run_max_likely(tbdata):
    posvar = np.linspace(0,2,5000)
    ### Remove edges ###
    tbdata = vari_funcs.remove_edges(tbdata)
    
    sigtb = Table.read('sigma_tables/quad_epoch_sigma_table_extra_clean_no06_2arcsec.fits')

    ### Extract magnitude table and error table ###
    flux = vari_funcs.flux4_stacks(tbdata)
    flux, tbdata = vari_funcs.noneg(flux, tbdata)
#    tbdata = tbdata[np.nanmean(flux,axis=1)>1e4]
    flux, fluxerr, tbdata = vari_funcs.create_quad_error_array(sigtb, tbdata, aper=4)
    
    ### Normalise ###
    fluxnorm, fluxerrnorm = vari_funcs.normalise_flux_and_errors(flux, fluxerr)
    
    ### Get sig values ###
    numobs = np.shape(fluxnorm)[0]
    meanflux = np.nanmean(fluxnorm, axis=1)
    out = np.array([vari_funcs.maximum_likelihood(fluxnorm[n,:], 
                                                  fluxerrnorm[n,:], meanflux[n], 
                                                  posvar, n=n, printn=100) for n in range(numobs)])
    return out, tbdata
def find_number(tb):
    ### Get flux ###
    flux = vari_funcs.flux4_stacks(tb)

    bins = np.array([13, 15])
    bins = np.append(bins, np.arange(16, 24, 0.2))
    bins = np.append(bins, [24])

    bins = 10**((30 - bins) / 2.5)
    bins = np.flip(bins, axis=0)
    #bins = bins[16:44] #because of flux limit

    num = np.zeros(len(bins))

    ### Bin data ###
    for n, binedge in enumerate(bins):
        #    print(binedge)
        if n == np.size(bins) - 1:
            break
        mag, _ = vari_funcs.fluxbin(binedge, bins[n + 1], flux, tb)
        num[n] = len(mag)

    return num, bins
Beispiel #7
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plt.close('all') #close any open plots
from matplotlib.offsetbox import OffsetImage, AnnotationBbox

font = {'family' : 'DejaVu Sans',
        'weight' : 'normal',
        'size'   : 14}

plt.rc('font', **font)

### Open the fits files and get data ###
varys = fits.open('variable_tables/no06_variables_chi30_2arcsec.fits')[1].data
sigtb = Table.read('sigma_tables/quad_epoch_sigma_table_extra_clean_no06_2arcsec.fits')

#varys = vari_funcs.chandra_only(varys)

flux = vari_funcs.flux4_stacks(varys)
flux, varys = vari_funcs.noneg(flux, varys)
flux, fluxerr, newvarys = vari_funcs.create_quad_error_array(sigtb, varys, aper=4)
#flux,fluxerr = vari_funcs.normalise_flux_and_errors(flux, fluxerr)

#set up time variable for plot
t = np.linspace(1, 8, num=8)
years = ['05B', '06B', '07B', '08B', '09B', '10B', '11B', '12B']
xcurve = [1,3,4,5,6,7,8]

### reduce to just single lightcurve ###
obnum = 62243
mask = newvarys['NUMBER_05B'] == obnum
flux = flux[mask].reshape(len(xcurve))
fluxerr = fluxerr[mask].reshape(len(xcurve))
obdata = newvarys[mask]
Beispiel #8
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def get_mean_flux(tbdata):
    flux = vari_funcs.flux4_stacks(tbdata)
    meanflux = np.nanmean(flux, axis=1)
    return meanflux
quaddata = vari_funcs.quadrants(tbdata, '05B')
chanquaddata = vari_funcs.quadrants(chandata, '05B')
squaddata = vari_funcs.quadrants(sdata, '05B')

sigsqdict = {}
sigdict = {}
finalchisq = np.array([])
galchisq = np.array([])
oldchisq = np.array([])
for m, qtbdata in enumerate(quaddata):
    ### get quad arrays for chan and stars ###
    qchandata = chanquaddata[m]
    qsdata = squaddata[m]

    ## Create arrays of flux values ###
    fluxn = vari_funcs.flux4_stacks(qtbdata)
    fluxchann = vari_funcs.flux4_stacks(qchandata)
    sfluxn = vari_funcs.flux4_stacks(qsdata)

    ### remove values that are negative ###
    fluxn, qtbdata = vari_funcs.noneg(fluxn, qtbdata)
    fluxchann, qchandata = vari_funcs.noneg(fluxchann, qchandata)
    sfluxn, qsdata = vari_funcs.noneg(sfluxn, qsdata)

    fluxerr = vari_funcs.fluxerr4_stacks(qtbdata)
    fluxerrchan = vari_funcs.fluxerr4_stacks(qchandata)
    sfluxerr = vari_funcs.fluxerr4_stacks(qsdata)

    print(len(fluxn) + len(sfluxn))

    if m == 3:
Beispiel #10
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    return I1minI2, z, zlimsmask, Iuplimsmask, Ilolimsmask, tbdata[mask]


I1minI2, z, zlimsmask, Iuplimsmask, Ilolimsmask, tbdata = get_data(tbdata)
varyI1minI2, varyz, varyzlimsmask, varyIuplimsmask, varyIlolimsmask, varydata = get_data(
    varydata)
noxvaryI1minI2, noxvaryz, noxvaryzlimsmask, noxvaryIuplimsmask, noxvaryIlolimsmask, noxvarydata = get_data(
    noxvarydata)
xvaryI1minI2, xvaryz, xvaryzlimsmask, xvaryIuplimsmask, xvaryIlolimsmask, xvarydata = get_data(
    xvarydata)
devI1minI2, devz, devzlimsmask, devIuplimsmask, devIlolimsmask, devdata = get_data(
    devdata)
xI1minI2, xz, xzlimsmask, xIuplimsmask, xIlolimsmask, xdata = get_data(xdata)

### flux ###
varyL = vari_funcs.flux4_stacks(varydata)
varyL = np.nanmean(varyL, axis=1)
xvaryL = vari_funcs.flux4_stacks(xvarydata)
xvaryL = np.nanmean(xvaryL, axis=1)
noxvaryL = vari_funcs.flux4_stacks(noxvarydata)
noxvaryL = np.nanmean(noxvaryL, axis=1)
#colmap = 'cool'
#
#### M_star ###
#varyL = varydata['Mstar_z_p']
#xvaryL = xvarydata['Mstar_z_p']
#noxvaryL = noxvarydata['Mstar_z_p']
#def ignore_zeros(m, z, I1minI2, zlimsmask, Iuplimsmask, Ilolimsmask, tbdata):
#    m[m==0] = np.nan
#    mask = ~np.isnan(m)
#    z = z[mask]