Matter imprints in waveform models for neutron star binaries: tidal and self-spin effects
Tim Dietrich, Sebastian Khan, Reetika Dudi, Shasvath J. Kapadia,, Prayush Kumar, Alessandro Nagar, Frank Ohme, Francesco Pannarale, Anuradha, Samajdar, Sebastiano Bernuzzi, Gregorio Carullo, Walter Del Pozzo, Maria, Haney, Charalampos Markakis, Michael Puerrer

TL;DR
This paper evaluates and improves waveform models for neutron star binaries by incorporating tidal and self-spin effects, crucial for accurate gravitational wave data analysis in multi-messenger astronomy.
Contribution
It introduces a combined approach using NRTidal with existing black hole waveform models to better represent neutron star binary signals.
Findings
Minimal mismatches achieved with combined PN self-spin and NRTidal effects
NRTidal tends to overestimate tidal interactions during inspiral
Waveform models improve parameter estimation accuracy
Abstract
The combined observation of gravitational and electromagnetic waves from the coalescence of two neutron stars marks the beginning of multi-messenger astronomy with gravitational waves (GWs). The development of accurate gravitational waveform models is a crucial prerequisite to extract information about the properties of the binary system that generated a detected GW signal. In binary neutron star systems (BNS), tidal effects also need to be incorporated in the modeling for an accurate waveform representation. Building on previous work [Phys.Rev.D96 121501], we explore the performance of inspiral-merger waveform models that are obtained by adding a numerical relativity (NR) based approximant for the tidal part of the phasing (NRTidal) to existing models for nonprecessing and precessing binary black hole systems (SEOBNRv4, PhenomD and PhenomPv2), as implemented in the LSC Algorithm…
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