using_initialisation.py 1.71 KB
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import pyfstat
import numpy as np

# Properties of the GW data
sqrtSX = 1e-23
tstart = 1000000000
duration = 100*86400
tend = tstart + duration

# Properties of the signal
F0 = 30.0
F1 = -1e-10
F2 = 0
Alpha = np.radians(83.6292)
Delta = np.radians(22.0144)
tref = .5*(tstart+tend)

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depth = 10
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h0 = sqrtSX / depth
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label = 'using_initialisation'
outdir = 'data'
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data = pyfstat.Writer(
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    label=label, outdir=outdir, tref=tref,
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    tstart=tstart, F0=F0, F1=F1, F2=F2, duration=duration, Alpha=Alpha,
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    Delta=Delta, h0=h0, sqrtSX=sqrtSX)
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data.make_data()

# The predicted twoF, given by lalapps_predictFstat can be accessed by
twoF = data.predict_fstat()
print 'Predicted twoF value: {}\n'.format(twoF)

DeltaF0 = 1e-7
DeltaF1 = 1e-13
VF0 = (np.pi * duration * DeltaF0)**2 / 3.0
VF1 = (np.pi * duration**2 * DeltaF1)**2 * 4/45.
print '\nV={:1.2e}, VF0={:1.2e}, VF1={:1.2e}\n'.format(VF0*VF1, VF0, VF1)

theta_prior = {'F0': {'type': 'unif',
                      'lower': F0-DeltaF0/2.,
                      'upper': F0+DeltaF0/2.},
               'F1': {'type': 'unif',
                      'lower': F1-DeltaF1/2.,
                      'upper': F1+DeltaF1/2.},
               'F2': F2,
               'Alpha': Alpha,
               'Delta': Delta
               }

ntemps = 1
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log10beta_min = -1
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nwalkers = 100
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nsteps = [100, 100]
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mcmc = pyfstat.MCMCSearch(
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    label=label, outdir=outdir,
    sftfilepattern='{}/*{}*sft'.format(outdir, label),
    theta_prior=theta_prior, tref=tref, minStartTime=tstart, maxStartTime=tend,
    nsteps=nsteps, nwalkers=nwalkers, ntemps=ntemps,
    log10beta_min=log10beta_min)
mcmc.setup_initialisation(100, scatter_val=1e-10)
mcmc.run(subtractions=[F0, F1])
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mcmc.plot_corner(add_prior=True)
mcmc.print_summary()