Bayesian inference of binary black holes with inspiral-merger-ringdown waveforms using two eccentric parameters

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Abstract

Orbital eccentricity is a crucial physical effect to unveil the origin of compact-object binaries detected by ground- and spaced-based gravitational-wave (GW) observatories. Here, we perform for the first time a Bayesian inference study of inspiral-merger-ringdown eccentric waveforms for binary black holes with nonprecessing spins using two (instead of one) eccentric parameters: eccentricity and relativistic anomaly. We employ for our study the multipolar effective-one-body (EOB) waveform model SEOBNRv4EHM, and use initial conditions such that the eccentric parameters are specified at an orbit-averaged frequency. We show that this new parametrization of the initial conditions leads to a more efficient sampling of the parameter space. We also assess the impact of the relativistic-anomaly parameter by performing mock-signal injections, and we show that neglecting such a parameter can lead to significant biases in several binary parameters. We validate our model with mock-signal injections based on numerical-relativity waveforms, and we demonstrate the ability of the model to accurately recover the injected parameters. Finally, using standard stochastic samplers employed by the LIGO-Virgo-KAGRA Collaboration, we analyze a set of real GW signals observed by the LIGO-Virgo detectors during the first and third runs. We do not find clear evidence of eccentricity in the signals analyzed, more specifically we measure egw, 10 HzGW150914=0.08-0.06+0.09, egw, 20 HzGW151226=0.04-0.04+0.05, and egw,5.5 HzGW190521=0.15-0.12+0.12.

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Ramos-Buades, A., Buonanno, A., & Gair, J. (2023). Bayesian inference of binary black holes with inspiral-merger-ringdown waveforms using two eccentric parameters. Physical Review D, 108(12). https://doi.org/10.1103/PhysRevD.108.124063

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