Constraining Population III stellar demographics with next-generation gravitational-wave observatories

Kavli Affiliate: Salvatore Vitale

| First 5 Authors: Cailin Plunkett, Matthew Mould, Salvatore Vitale, ,

| Summary:

Next-generation gravitational-wave observatories will reach farther into the
universe than currently possible, revealing black-hole mergers from early
stellar binary systems such as Population III stars, whose properties are
currently poorly constrained. We develop a method to infer the properties of
their progenitor populations from gravitational-wave catalogs. Using Bayesian
deep learning, we train an emulator for population-synthesis predictions of
black-hole merger properties across redshift as a function of the initial
stellar mass function, crucially accounting for systematic uncertainty due to
the finite number of training simulations. Combined with a nonparametric model
for star formation history, we analyze catalogs containing both Population I/II
and III sources simulated with full Bayesian parameter estimation for a
detector network of Cosmic Explorer and Einstein Telescope with one year of
observing time. We demonstrate our ability to separate these two populations at
high redshifts where both make comparable contributions to the black-hole
merger rate, excluding a Population III merger rate of zero at nearly 100%
credibility. Moreover, we can place meaningful constraints on the Population
III progenitor distributions; in particular, we constrain the spectral index of
the initial mass function to within roughly +/-0.5 of the true value and the
log of the star formation rate density to within ~25% over redshifts 10 to 20.
By leveraging astrophysics-informed and astrophysics-agnostic models, we
demonstrate the discriminative power of our combined inference approach and
highlight the potential of next-generation gravitational-wave observatories to
uncover the details of high-redshift stellar populations.

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