Esempio n. 1
0
def lnlike2(par, data_table, ebv_map=0, gaussian_ebv=False, return_fit=False):
    g1, Teff1, g2, Teff2, EBV, sig_ext = par

    if (g1 <= 5) or (g1 > 25): return -np.inf
    if (g2 <= 5) or (g2 > 25): return -np.inf
    if (Teff1 <= 3450) or (Teff1 > 8600): return -np.inf
    if (Teff2 <= 3450) or (Teff2 > 8600): return -np.inf
    if (sig_ext < 0): return -np.inf
    if (EBV < 0): return -np.inf
    if gaussian_ebv:
        j = np.where(data_table['type'] == 'ebv')
        v = data_table['value'][j]
        s = data_table['error'][j]
        lnprior = -0.5 * np.sum(((v - EBV) / s)**2)
    elif (EBV > ebv_map):
        lnprior = -0.5 * ((EBV - ebv_map) / 0.034)**2
    else:
        lnprior = 0.0

    t = synth_binary(g1, Teff1, g2, Teff2, EBV)
    j = joinTables(data_table, t, keys=("band", "type"))
    wt = weights(j, sig_ext)
    z2 = (j["value_1"] - j["value_2"])**2 * wt
    j.add_column(Column(np.sqrt(z2), name="z", format="%.2f"))
    if return_fit:
        return j
    else:
        lnlike = -0.5 * (np.sum(z2 - np.log(wt)))
        if np.isfinite(lnlike):
            return lnlike + lnprior
        else:
            return -np.inf
Esempio n. 2
0
def chisqd(param, data_table, sig_ext):
    g1, Teff1, dg, Teff2, EBV = param
    g2 = g1 + dg
    t = synth_binary(g1, Teff1, g2, Teff2, EBV)
    j = joinTables(data_table, t, keys=["band", "type"])
    c = np.sum((j["value_1"] - j["value_2"])**2 * weights(j, sig_ext))
    return c
Esempio n. 3
0
def lnlike3(par,
            data_table,
            ebv_map=0,
            ms_interp=None,
            gaussian_ebv=False,
            return_fit=False):
    g1, Teff1, g2, Teff2, g3, Teff3, EBV, sig_ext = par

    if (g1 <= 5) or (g1 > 25): return -np.inf
    if (g2 <= 5) or (g2 > 25): return -np.inf
    if (g3 <= 5) or (g3 > 25): return -np.inf
    if (Teff1 <= 3450) or (Teff1 > 8600): return -np.inf
    if (Teff2 <= 3450) or (Teff2 > 8600): return -np.inf
    if (Teff3 <= 3450) or (Teff3 > 8600): return -np.inf
    if (sig_ext < 0): return -np.inf
    if (EBV < 0): return -np.inf
    if gaussian_ebv:
        j = np.where(data_table['type'] == 'ebv')
        v = data_table['value'][j]
        s = data_table['error'][j]
        lnprior = -0.5 * np.sum(((v - EBV) / s)**2)
    elif (EBV > ebv_map):
        lnprior = -0.5 * ((EBV - ebv_map) / 0.033)**2
    else:
        lnprior = 0.0
    if ms_interp is not None:
        g_ZAMS_3, g_TAMS_3 = ms_interp(Teff3)
        if g2 > g1:
            g_ZAMS_B, g_TAMS_B = ms_interp(Teff2)
            if ((g3 - g2) < (g_ZAMS_3 - g_ZAMS_B)):
                return -np.inf
            if ((g3 - g2) > (g_TAMS_3 - g_TAMS_B)):
                return -np.inf
        else:
            g_ZAMS_B, g_TAMS_B = ms_interp(Teff1)
            if ((g3 - g1) < (g_ZAMS_3 - g_ZAMS_B)):
                return -np.inf
            if ((g3 - g1) > (g_TAMS_3 - g_TAMS_B)):
                return -np.inf

    t = synth_triple(g1, Teff1, g2, Teff2, g3, Teff3, EBV)
    j = joinTables(data_table, t, keys=("band", "type"))
    wt = weights(j, sig_ext)
    z2 = (j["value_1"] - j["value_2"])**2 * wt
    j.add_column(Column(np.sqrt(z2), name="Z", format="%.3f"))
    if return_fit:
        return j
    else:
        lnlike = -0.5 * (np.sum(z2 - np.log(wt)))
        if np.isfinite(lnlike):
            return lnlike + lnprior
        else:
            return -np.inf
Esempio n. 4
0
def chisq3(param, data_table, sig_ext):
    g1, Teff1, g2, Teff2, g3, Teff3, EBV = param
    t = synth_triple(g1, Teff1, g2, Teff2, g3, Teff3, EBV)
    j = joinTables(data_table, t, keys=["band", "type"])
    c = np.sum((j["value_1"] - j["value_2"])**2 * weights(j, sig_ext))
    return c
Esempio n. 5
0
def chisq1(param, data_table, sig_ext):
    g1, Teff1, EBV = param
    t = gTeff_to_magTable(g1, Teff1, EBV)
    j = joinTables(data_table, t, keys=["band", "type"])
    c = np.sum((j["value_1"] - j["value_2"])**2 * weights(j, sig_ext))
    return c