Esempio n. 1
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    #Detrending Flux and Levenberg-Marquardt Fitting:
    #if SDE>6
    ##########################

    #start values are correct values

    if True:  #SDE >= 6:

        #polynomial detrending
        #fluxDetrend = polynomial(flux, order=5)

        #untrendy
        #fluxDetrend, ferr = untrendy.median(time, flux)
        #fluxDetrend = [x-1.0 for x in fluxDetrend]

        fitT = FitTransit()

        fitT.add_guess_star(rho=1.5)

        fitT.add_guess_planet(period=results[1], impact=0.0, T0=3.0,
                              rprs=.2)  #need a guess rprs
        fitT.add_data(time=time, flux=fluxDetrend)

        vary_star = [
            'rho'
        ]  # not sure how to avoid free stellar parameters? ideally would not vary star at all
        vary_planet = (['period', 'rprs', 'impact', 'T0'])

        fitT.free_parameters(vary_star, vary_planet)
        fitT.do_fit()
Esempio n. 2
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def main(kic):
    client = kplr.API()
    star = client.star(kic)
    lcs = star.get_light_curves(short_cadence=False)
    time, flux, ferr, quality,quarter = [], [], [], [], []
    for lc in lcs:
            with lc.open() as f:
                # The lightcurve data are in the first FITS HDU.
                hdu_data = f[1].data
                time = np.r_[time,hdu_data["time"]]
                #fluxval = hdu_data["sap_flux"]
                #fluxmed = np.median(fluxval)
                #flux = np.r_[flux,fluxval / fluxmed]
                #ferr = np.r_[ferr,hdu_data["sap_flux_err"] / fluxmed]
                flux = np.r_[flux,hdu_data["sap_flux"]]
                ferr = np.r_[ferr,hdu_data["sap_flux_err"]]
                quality = np.r_[quality,hdu_data["sap_quality"]]
                quarter = np.r_[quarter,f[0].header["QUARTER"] +
                    np.zeros(len(hdu_data["time"]))]


    flux, ferr = byebyebaddata(flux,ferr,quality)
    time, flux, ferr, quarter, quality = i_hate_nans(time,
                                                     flux, ferr,
                                                     quarter, quality)
    flux, ferr = norm_by_quarter(flux, ferr,quarter)
    cflux = (flux / med_filt(time,flux,dt=1.0)) - 1.0



    fitT = FitTransit()
    fitT.add_guess_star(rho=2.45)
    k0 = star.kois[0]
    fitT.add_guess_planet(
        period=k0.koi_period,
        impact=k0.koi_impact,
        T0=k0.koi_time0bk,
        rprs=k0.koi_ror)

    k1 = star.kois[1]
    fitT.add_guess_planet(
        period=k1.koi_period,
        impact=k1.koi_impact,
        T0=k1.koi_time0bk,
        rprs=k1.koi_ror)

    k2 = star.kois[2]
    fitT.add_guess_planet(
        period=k2.koi_period,
        impact=k2.koi_impact,
        T0=k2.koi_time0bk,
        rprs=k2.koi_ror)

    fitT.add_data(time=time,flux=cflux,ferr=ferr)
    freeparstar = ['rho','zpt']
    freeparplanet = [
    'period','T0','impact','rprs']
    fitT.free_parameters(freeparstar,freeparplanet)

    fitT.do_fit()

    return (time,cflux,ferr),fitT
Esempio n. 3
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    plt.title("EPIC " + str(targetname) + " folded and binned LC")
    #pylab.show()

    ###################################################################################

    high = results[3] * results[4]
    low = high - results[3]

    fit = np.zeros(nbins) + high  # H
    fit[results[5]:results[6] + 1] = low  # L

    depth = high - low

    print('Guess rprs: ' + str(p(depth)))

    fitT = FitTransit()
    fitT.add_guess_star(rho=1.5)
    fitT.add_guess_planet(period=results[1],
                          impact=0.0,
                          T0=2425,
                          rprs=p(depth))
    fitT.add_data(time=time, flux=mergedfluxDetrend)

    vary_star = []  # free stellar parameters
    vary_planet = ([
        'period',  # free planetary parameters
        'rprs'
    ])  # free planet parameters are the same for every planet you model

    fitT.free_parameters(vary_star, vary_planet)
    fitT.do_fit()  # run the fitting
    rverr = rvdat[..., 2]
    return rvtime, rvval, rverr


def get_lc():
    time, flux, ferr = np.genfromtxt('../data/lc.dat', unpack=True)
    return time, flux, ferr


if __name__ == '__main__':
    import ktransit
    from ktransit import FitTransit
    import matplotlib.pyplot as plt
    import numpy

    fitT = FitTransit()
    fitT.add_guess_star(
        rho=43.47,
        ld1=0.43,
        ld2=0.27,
        ld3=0.0,
        ld4=0.0,
        dil=0.0,
        zpt=-56.8E-6,
        veloffset=
        15.6  # new keyword, the radial velocity zero-point offset in m/s
    )
    fitT.add_guess_planet(T0=136.3837,
                          period=6.246696,
                          impact=0.865,
                          rprs=0.019429,
Esempio n. 5
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def main(kic):
    client = kplr.API()
    star = client.star(kic)
    lcs = star.get_light_curves(short_cadence=False)
    time, flux, ferr, quality, quarter = [], [], [], [], []
    for lc in lcs:
        with lc.open() as f:
            # The lightcurve data are in the first FITS HDU.
            hdu_data = f[1].data
            time = np.r_[time, hdu_data["time"]]
            #fluxval = hdu_data["sap_flux"]
            #fluxmed = np.median(fluxval)
            #flux = np.r_[flux,fluxval / fluxmed]
            #ferr = np.r_[ferr,hdu_data["sap_flux_err"] / fluxmed]
            flux = np.r_[flux, hdu_data["sap_flux"]]
            ferr = np.r_[ferr, hdu_data["sap_flux_err"]]
            quality = np.r_[quality, hdu_data["sap_quality"]]
            quarter = np.r_[quarter, f[0].header["QUARTER"] +
                            np.zeros(len(hdu_data["time"]))]

    flux, ferr = byebyebaddata(flux, ferr, quality)
    time, flux, ferr, quarter, quality = i_hate_nans(time, flux, ferr, quarter,
                                                     quality)
    flux, ferr = norm_by_quarter(flux, ferr, quarter)
    cflux = (flux / med_filt(time, flux, dt=1.0)) - 1.0

    fitT = FitTransit()
    fitT.add_guess_star(rho=2.45)
    k0 = star.kois[0]
    fitT.add_guess_planet(period=k0.koi_period,
                          impact=k0.koi_impact,
                          T0=k0.koi_time0bk,
                          rprs=k0.koi_ror)

    k1 = star.kois[1]
    fitT.add_guess_planet(period=k1.koi_period,
                          impact=k1.koi_impact,
                          T0=k1.koi_time0bk,
                          rprs=k1.koi_ror)

    k2 = star.kois[2]
    fitT.add_guess_planet(period=k2.koi_period,
                          impact=k2.koi_impact,
                          T0=k2.koi_time0bk,
                          rprs=k2.koi_ror)

    fitT.add_data(time=time, flux=cflux, ferr=ferr)
    freeparstar = ['rho', 'zpt']
    freeparplanet = ['period', 'T0', 'impact', 'rprs']
    fitT.free_parameters(freeparstar, freeparplanet)

    fitT.do_fit()

    return (time, cflux, ferr), fitT
Esempio n. 6
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def build_ktransit_model(ticid, lc, rprs=0.02, vary_transit=True):
    from ktransit import FitTransit
    fitT = FitTransit()

    model = BoxLeastSquares(lc.time, lc.flux)
    results = model.autopower(0.16, minimum_period=2., maximum_period=21.)
    period = results.period[np.argmax(results.power)]
    t0 = results.transit_time[np.argmax(results.power)]
    if rprs is None:
        depth = results.depth[np.argmax(results.power)]
        rprs = depth ** 2

    fitT.add_guess_star(rho=0.022, zpt=0, ld1=0.6505,ld2=0.1041) #come up with better way to estimate this using AS
    fitT.add_guess_planet(T0=t0, period=period, impact=0.5, rprs=rprs)

    ferr = np.ones_like(lc.time) * 0.00001
    fitT.add_data(time=lc.time,flux=lc.flux,ferr=ferr)#*1e-3)

    vary_star = ['zpt']      # free stellar parameters
    if vary_transit:
        vary_planet = (['period', 'impact',       # free planetary parameters
            'T0', #'esinw', 'ecosw',
            'rprs']) #'impact',               # free planet parameters are the same for every planet you model
    else:
        vary_planet = (['rprs'])

    fitT.free_parameters(vary_star, vary_planet)
    fitT.do_fit()                   # run the fitting

    return fitT
Esempio n. 7
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    t = newtimes
    y = newfluxes
print("finish lengths:", len(t), len(y))

#median filter and remove outliers
y -= scipy.ndimage.filters.median_filter(y, size=150)  #50 datapts ~ 1 day

#2287: remove edge effect during midcampaign break
edgemask = (t > 6.5) * (t < 22.5)
t = t[-edgemask]
y = y[-edgemask]

from ktransit import FitTransit
import ktransit

fitT = FitTransit()

#EPIC2287
fitT.add_guess_star(rho=0.0264, zpt=0, ld1=0.6505, ld2=0.1041)
fitT.add_guess_planet(T0=7.5,
                      period=9.17,
                      impact=0.8,
                      rprs=0.03,
                      ecosw=0.0,
                      esinw=0.0)  #simult, sff

fitT.add_data(time=t, flux=np.array(y))

vary_star = ['zpt']  #, 'ld1', 'ld2']      # free stellar parameters
vary_planet = ([
    'period',  # free planetary parameters
Esempio n. 8
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def fit_data(data,
             star=[1.4,0,0,0,0,0,1], 
             planet=[365,0.0,0.0,.009155, 0.0, 0.0, 0.0],
             star_vary=[''],
             planet_vary=[''], auto=True, fold=False):
    """solves problems in assignment 2
       star = stellar density, limb darkening parameters (4), dilution, zpt
       planet = T0, period, impact, rprs, ecosw, esinw, occ
    """
    

    # Estimating basic input parameters, unless we give them in the call
    if auto:
        box = 5; sm_flux = msmooth(data[1],box)
        
        star[-1] = np.median(sm_flux) # Establishing photometric zero-point
        if fold:
            star[-1] += np.std(data[1])

        ind = np.where(sm_flux < star[-1]-np.std(data[1]))[0]
        ind = ind[np.where(ind > box)]
        ind = ind[0]
        planet[0] = data[0][ind] # Estimating something close to a transit midpoint
        if fold: 
            if star[0] > 15: planet[0] = 0.8 
    
        planet[3] = (data[1].max()-data[1].min())**0.5 # Estimating the depth

    
    # Performing the actual fit
    fitT = FitTransit()
    fitT.add_guess_star(rho=star[0],
                        ld1=star[1], ld2=star[2],ld3=star[3],ld4=star[4],
                        dil=star[5], zpt=star[6])
    fitT.add_guess_planet(T0=planet[0], period=planet[1],impact=planet[2],
                          rprs=planet[3],ecosw=planet[4],esinw=planet[5],
                          occ=planet[6])
    fitT.add_data(time=data[0],flux=data[1],ferr=data[2])
    fitT.free_parameters(star_vary, planet_vary)

    fitT.do_fit()
    return fitT.__dict__['fitresultstellar'], \
        fitT.__dict__['fitresultplanets'], \
        fitT.transitmodel, star, planet
Esempio n. 9
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def transit_fit(t1, cfflux):
    addtime = 4833  # convert from trappist time to kepler time

    time = t1[(cfflux < 0.005) *
              (cfflux > -0.015)] + addtime  # you need a time and a flux
    flux = cfflux[(cfflux < 0.005) *
                  (cfflux > -0.015)]  # there are no transits here :(
    ferr = np.ones_like(time) * 0.001  # uncertainty on the data

    fitT = FitTransit()
    fitT.add_guess_star(rho=50.0, ld1=0.43,
                        ld2=0.14)  # fixed because I'm sleepy

    for planet in [planetb, planetc, planetd, planete, planetf, planetg]:
        fitT.add_guess_planet(period=planet['period_days'][0],
                              impact=planet['impact'][0],
                              T0=planet['t0'][0],
                              rprs=(planet['td_percent'][0] / 100)**0.5)

    fitT.add_data(time=time,
                  flux=flux,
                  ferr=ferr,
                  itime=np.ones_like(time) * 0.0188)

    vary_star = ['rho', 'zpt']  # free stellar parameters
    vary_planet = ([
        'period',  # free planetary parameters
        'T0',
        'impact',
        'rprs'
    ])  # free planet parameters are the same for every planet you model

    fitT.free_parameters(vary_star, vary_planet)
    fitT.do_fit()  # run the fitting

    return time, flux, fitT
Esempio n. 10
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def fitModel(time, flux, guessDict, freeParPlanet, ferr = 0):
	if not np.all(ferr): ferr = np.ones_like(flux)*1.E-5
	freeParStar = ['rho']
	# Make the fitting object according to guess dictionary
	fitT = FitTransit()
	fitT.add_guess_star(ld1 = 0, ld2 = 0)
	fitT.add_guess_planet(period = guessDict['period'],
							  T0 = guessDict['T0'])
	fitT.add_data(time = time, flux = flux, ferr = ferr)
	fitT.free_parameters(freeParStar, freeParPlanet)
	fitT.do_fit()
	return fitT
Esempio n. 11
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    show()

    ##########################
    #Detrending Flux and Levenberg-Marquardt Fitting:
    #if SDE>6
    ##########################

    #start values are correct values

    if True:  #if SDE >= 6

        print('rprs guess ' + str(p(depth)))

        rprsguess = p(depth)

        fitT = FitTransit()
        fitT.add_guess_star(rho=rho)
        fitT.add_guess_planet(period=results[1],
                              impact=impact,
                              T0=T0,
                              rprs=rprsguess)
        fitT.add_data(time=time, flux=mergedfluxDetrend)

        vary_star = ['rho']  # free stellar parameters
        vary_planet = ([
            'period',  # free planetary parameters 
            'rprs'
        ])  # free planet parameters are the same for every planet you model

        fitT.free_parameters(vary_star, vary_planet)
        fitT.do_fit()  # run the fitting
Esempio n. 12
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def fitt_bootstrap(time, flux, ferr, resid, fitp, fits):
    T0, period, impact = fitp['pnum0']['T0'], fitp['pnum0']['period'], fitp[
        'pnum0']['impact']
    rprs, ecosw, esinw = fitp['pnum0']['rprs'], fitp['pnum0']['ecosw'], fitp[
        'pnum0']['esinw']
    zpt, rho, ld1, ld2 = fits['zpt'], fits['rho'], fits['ld1'], fits['ld2']
    fitT = FitTransit()
    fitT.add_guess_star(rho=rho, zpt=zpt, ld1=ld1, ld2=ld2)
    fitT.add_guess_planet(period=period,
                          impact=impact,
                          T0=T0,
                          rprs=rprs,
                          ecosw=ecosw,
                          esinw=esinw)
    flux_resid = flux + choice(resid, size=len(flux))

    fitT.add_data(time=time, flux=flux_resid, ferr=ferr)
    vary_star = ['rho', 'zpt', 'ld1', 'ld2']  # free stellar parameters
    vary_planet = ([
        'period',  # free planetary parameters
        'T0',
        'impact',
        'rprs',
        'ecosw',
        'esinw'
    ])
    fitT.free_parameters(vary_star, vary_planet)
    fitT.do_fit()  # run the fitting
    return fitT.fitresult
Esempio n. 13
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        'ecosw',
        'esinw'
    ])
    fitT.free_parameters(vary_star, vary_planet)
    fitT.do_fit()  # run the fitting
    return fitT.fitresult


fn = '/Users/tom/gitcode/GP_model_Kepler_data/data/koi2133_np1_priorTrue_dil0.0GP.hdf5'
f = h5py.File(fn)

time = f['time'][:61000]
flux = f['flux'][:61000]
ferr = f['err'][:61000]

fitT = FitTransit()
fitT.add_guess_star(rho=43.47 / 1000.,
                    zpt=-5.68308831e-05,
                    ld1=4.32157219e-01,
                    ld2=2.69514828e-01)
fitT.add_guess_planet(period=6.2467332,
                      impact=0.09,
                      T0=1.36383739e+02,
                      rprs=0.019429,
                      ecosw=0.0,
                      esinw=0.0)
fitT.add_data(time=time[:61000], flux=flux[:61000], ferr=ferr[:61000])
vary_star = ['rho', 'zpt', 'ld1', 'ld2']  # free stellar parameters
vary_planet = ([
    'period',  # free planetary parameters
    'T0',
Esempio n. 14
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def fitModel(time, flux, guessDict, freeParPlanet, ferr = 0):
	if not np.all(ferr): ferr = np.ones_like(flux)*1.E-5
	freeParStar = ['rho']

	# Make the fitting object according to guess dictionary
	fitT = FitTransit()
	fitT.add_guess_star(ld1 = 0, ld2 = 0)
	fitT.add_guess_planet(period = guessDict['period'],
							  T0 = guessDict['T0'])
	fitT.add_data(time = time, flux = flux, ferr = ferr)
	fitT.free_parameters(freeParStar, freeParPlanet)
	fitT.do_fit()
	return fitT
    rvval = rvdat[...,1] - np.median(rvdat[...,1])
    rverr = rvdat[...,2]
    return rvtime,rvval,rverr

def get_lc():
    time,flux,ferr = np.genfromtxt(
        '../data/lc.dat',unpack=True)
    return time,flux,ferr

if __name__ == '__main__':
    import ktransit
    from ktransit import FitTransit
    import matplotlib.pyplot as plt
    import numpy

    fitT = FitTransit()
    fitT.add_guess_star(
            rho=43.47,
            ld1=0.43,
            ld2=0.27,
            ld3=0.0,
            ld4=0.0,
            dil=0.0,
            zpt=-56.8E-6,
            veloffset=15.6 # new keyword, the radial velocity zero-point offset in m/s
            )
    fitT.add_guess_planet(
            T0=136.3837,
            period=6.246696,
            impact=0.865,
            rprs= 0.019429,
Esempio n. 16
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M.add_planet()  # you can add as many planets as you like (up to 10)

M.add_data(
    time=np.arange(0, 10, 0.0188),  # timestamps to evaluate the model on
    itime=np.zeros_like(np.arange(0, 10, 0.0188)) +
    0.0188)  # integration time of each timestamp

tmod = M.transitmodel  # the out of transit data will be 0.0 unless you specify zpt
plt.plot(M.time, tmod)

####################

from ktransit import FitTransit
# uncertainty on the data

fitT = FitTransit()
fitT.add_guess_star(rho=7.0)
fitT.add_guess_planet(period=365.25, impact=0.0, T0=0.0, rprs=0.009155)
fitT.add_data(time=M.time, flux=tmod)

vary_star = ['rho', 'zpt']  # free stellar parameters
vary_planet = ([
    'period',  # free planetary parameters
    'T0',
    'impact',
    'rprs'
])  # free planet parameters are the same for every planet you model

fitT.free_parameters(vary_star, vary_planet)
fitT.do_fit()  # run the fitting