Time-domain effective-one-body gravitational waveforms for coalescing compact binaries with nonprecessing spins, tides and self-spin effects
Alessandro Nagar, Sebastiano Bernuzzi, Walter Del Pozzo, Gunnar, Riemenschneider, Sarp Akcay, Gregorio Carullo, Philipp Fleig, Stanislav, Babak, Ka Wa Tsang, Marta Colleoni, Francesco Messina, Geraint Pratten, David, Radice, Piero Rettegno, Michalis Agathos, Edward Fauchon-Jones

TL;DR
TEOBResumS is a new effective-one-body waveform model that accurately describes gravitational waves from coalescing compact binaries with spins and tides, validated against numerical relativity data and suitable for LIGO-Virgo data analysis.
Contribution
The paper introduces TEOBResumS, a novel EOB waveform model incorporating spin, tidal, and self-spin effects, calibrated with numerical relativity simulations for improved accuracy.
Findings
Maximum unfaithfulness below 2.5e-3 for BBH waveforms.
Compatible with high-end NR waveforms for neutron stars.
Accurately models GW150914 data.
Abstract
We present TEOBResumS, a new effective-one-body (EOB) waveform model for nonprecessing (spin-aligned) and tidally interacting compact binaries.Spin-orbit and spin-spin effects are blended together by making use of the concept of centrifugal EOB radius. The point-mass sector through merger and ringdown is informed by numerical relativity (NR) simulations of binary black holes (BBH) computed with the SpEC and BAM codes. An improved, NR-based phenomenological description of the postmerger waveform is developed.The tidal sector of TEOBResumS describes the dynamics of neutron star binaries up to merger and incorporates a resummed attractive potential motivated by recent advances in the post-Newtonian and gravitational self-force description of relativistic tidal interactions. Equation-of-state dependent self-spin interactions (monopole-quadrupole effects) are incorporated in the model using…
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