Deep residual networks for gravitational wave detection

Paraskevi Nousi, Alexandra E. Koloniari, Nikolaos Passalis, Panagiotis Iosif, Nikolaos Stergioulas, and Anastasios Tefas
Phys. Rev. D 108, 024022 – Published 11 July 2023

Abstract

Traditionally, gravitational waves are detected with techniques such as matched filtering or unmodeled searches based on wavelets. However, in the case of generic black hole binaries with nonaligned spins, if one wants to explore the whole parameter space, matched filtering can become impractical, which sets severe restrictions on the sensitivity and computational efficiency of gravitational-wave searches. Here, we use a novel combination of machine-learning algorithms and arrive at sensitive distances that surpass traditional techniques in a specific setting. Moreover, the computational cost is only a small fraction of the computational cost of matched filtering. The main ingredients are a 54-layer deep residual network (ResNet), a deep adaptive input normalization (DAIN), a dynamic dataset augmentation, and curriculum learning, based on an empirical relation for the signal-to-noise ratio. We compare the algorithm’s sensitivity with two traditional algorithms on a dataset consisting of a large number of injected waveforms of nonaligned binary black hole mergers in real LIGO O3a noise samples. Our machine-learning algorithm can be used in upcoming rapid online searches of gravitational-wave events in a sizeable portion of the astrophysically interesting parameter space. We make our code, AResGW, and detailed results publicly available at https://github.com/vivinousi/gw-detection-deep-learning.

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  • Received 17 December 2022
  • Accepted 14 June 2023

DOI:https://doi.org/10.1103/PhysRevD.108.024022

© 2023 American Physical Society

Physics Subject Headings (PhySH)

Gravitation, Cosmology & Astrophysics

Authors & Affiliations

Paraskevi Nousi1, Alexandra E. Koloniari2, Nikolaos Passalis1, Panagiotis Iosif2, Nikolaos Stergioulas2, and Anastasios Tefas1

  • 1Department of Informatics, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece
  • 2Department of Physics, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece

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Vol. 108, Iss. 2 — 15 July 2023

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