The gravitational waves emitted during the coalescence of binary black holes are an excellent probe to test the behavior of strong gravity. In this paper, we propose a new test called the merger-ringdown consistency test that focuses on probing the imprints of the dynamics in strong-gravity around the black-holes during the plunge-merger and ringdown phase. Furthermore, we present a scheme that allows us to efficiently combine information across multiple ringdown observations to perform a statistical null test of GR using the detected BH population. We present a proof-of-concept study for this test using simulated binary black hole ringdowns embedded in the next-generation ground-based detector noise. We demonstrate the feasibility of our test using a deep learning framework, setting a precedence for performing precision tests of gravity with neural networks.

Bhagwat, S., Pacilio, C. (2021). Merger-ringdown consistency: A new test of strong gravity using deep learning. PHYSICAL REVIEW D, 104(2) [10.1103/physrevd.104.024030].

Merger-ringdown consistency: A new test of strong gravity using deep learning

Costantino Pacilio
2021

Abstract

The gravitational waves emitted during the coalescence of binary black holes are an excellent probe to test the behavior of strong gravity. In this paper, we propose a new test called the merger-ringdown consistency test that focuses on probing the imprints of the dynamics in strong-gravity around the black-holes during the plunge-merger and ringdown phase. Furthermore, we present a scheme that allows us to efficiently combine information across multiple ringdown observations to perform a statistical null test of GR using the detected BH population. We present a proof-of-concept study for this test using simulated binary black hole ringdowns embedded in the next-generation ground-based detector noise. We demonstrate the feasibility of our test using a deep learning framework, setting a precedence for performing precision tests of gravity with neural networks.
Articolo in rivista - Articolo scientifico
Classical black holes; general relativity; gravitation; gravitational wave sources; artificial neual networks; machine learning;
English
2021
104
2
024030
partially_open
Bhagwat, S., Pacilio, C. (2021). Merger-ringdown consistency: A new test of strong gravity using deep learning. PHYSICAL REVIEW D, 104(2) [10.1103/physrevd.104.024030].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/418721
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