Evidence for eccentricity in the population of binary black holes observed by LIGO-Virgo-KAGRA
Abstract
Binary black holes (BBHs) in eccentric orbits produce distinct modulations in gravitational waves (GWs); measuring orbital eccentricity provides evidence for dynamical binary formation channels. We analyze 57 GW events from the LIGO-Virgo-KAGRA (LVK) O1-O3 observing runs using a multipolar aligned-spin inspiral-merger-ringdown waveform with two eccentric parameters: eccentricity and relativistic anomaly (assuming a quasi-circular merger-ringdown), made computationally feasible by the machine-learning code DINGO, which accelerates inference by 2-3 orders of magnitude. First, with a uniform eccentricity prior, eccentric vs. quasi-circular aligned-spin 10 Bayes factors are 1.84-4.75 (depending on glitch mitigation) for GW200129, 3.0 for GW190701 and 1.77 for GW20020822. We infer egw, 10Hz (egw, 20Hz) to be 0.27-0.12+0.10 (0.16-0.05+0.04) to 0.17-0.13+0.14 (0.1-0.04+0.05) for GW200129, 0.54-0.30+0.12 (0.31-0.13+0.12) for GW190701 and 0.39-0.23+0.23 (0.21-0.08+0.08) for GW20020822. Second, eccentric aligned-spin vs. quasi-circular precessing-spin 10 Bayes factors are 1.43-4.92 for GW200129, 2.61 for GW190701 and 1.23 for GW20020822. Third, GW190521 shows no evidence for eccentricity (10 Bayes factor 0.04). Fourth, neglecting spin-precession with an astrophysically-motivated prior on the eccentric BBH rate, the probability of one of the 57 events being eccentric exceeds 99.5\% or (100-8.4×10-4)\% (depending on glitch mitigation). Fifth, we study parameter estimation impacts of neglecting eccentricity in quasi-circular models or higher modes in eccentric models. These results underscore the inclusion of eccentric parameters in BBH characterization for upcoming LVK runs and future ground- and space-based detectors probing more diverse BBH populations.
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