Distinguishing binary black hole precessional morphologies with gravitational wave observations
Nathan K. Johnson-McDaniel, Khun Sang Phukon, N. V. Krishnendu,, Anuradha Gupta

TL;DR
This paper introduces a Bayesian method to classify the precessional morphology of binary black holes from gravitational wave data, aiding in understanding their formation channels.
Contribution
We develop a fast Bayesian model selection technique to determine the preferred spin morphology of binary black holes using gravitational wave observations.
Findings
High spin and high SNR binaries allow strong morphology identification.
Near boundary parameters make morphology distinction more challenging.
Application to GW200129_065458 shows no clear morphology preference.
Abstract
The precessional motion of binary black holes can be classified into one of three morphologies, based on the evolution of the angle between the components of the spins in the orbital plane: Circulating, librating around 0, and librating around . These different morphologies can be related to the binary's formation channel and are imprinted in the binary's gravitational wave signal. In this paper, we develop a Bayesian model selection method to determine the preferred spin morphology of a detected binary black hole. The method involves a fast calculation of the morphology which allows us to restrict to a specific morphology in the Bayesian stochastic sampling. We investigate the prospects for distinguishing between the different morphologies using gravitational waves in the Advanced LIGO/Advanced Virgo network with their plus-era sensitivities. For this, we consider fiducial high-…
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Taxonomy
TopicsPulsars and Gravitational Waves Research · Statistical and numerical algorithms · Computational Physics and Python Applications
