Inference of proto-neutron star properties from gravitational-wave data in core-collapse supernovae
Marie-Anne Bizouard, Patricio Maturana-Russel, Alejandro, Torres-Forn\'e, Martin Obergaulinger, Pablo Cerd\'a-Dur\'an, Nelson, Christensen, Jos\'e A. Font, Renate Meyer

TL;DR
This paper develops a method to infer proto-neutron star properties from gravitational-wave data of core-collapse supernovae, using a model based on the evolution of g-mode frequencies linked to PNS characteristics.
Contribution
It introduces a novel parameter estimation approach utilizing a new algorithm to extract g-mode frequencies and relate them to PNS properties from gravitational-wave signals.
Findings
Method can infer PNS mass and radius evolution from simulated signals.
Effective for galactic sources with current detectors like Advanced LIGO and Virgo.
Future detectors will extend the observable distance range.
Abstract
The eventual detection of gravitational waves from core-collapse supernovae (CCSN) will help improve our current understanding of the explosion mechanism of massive stars. The stochastic nature of the late post-bounce gravitational wave signal due to the non-linear dynamics of the matter involved and the large number of degrees of freedom of the phenomenon make the source parameter inference problem very challenging. In this paper we take a step towards that goal and present a parameter estimation approach which is based on the gravitational waves associated with oscillations of proto-neutron stars (PNS). Numerical simulations of CCSN have shown that buoyancy-driven g-modes are responsible for a significant fraction of the gravitational wave signal and their time-frequency evolution is linked to the physical properties of the compact remnant through universal relations, as demonstrated…
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