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Generating transient noise artefacts in gravitational-wave detector data with generative adversarial networks

J. Powell, L. Sun, K. Geréb, P. D. Lasky, Markus Dollmann

2023Classical and Quantum Gravity21 citationsDOIOpen Access PDF

Abstract

Abstract Transient noise glitches in gravitational-wave detector data limit the sensitivity of searches and contaminate detected signals. In this paper, we show how glitches can be simulated using generative adversarial networks (GANs). We produce hundreds of synthetic images for the 22 most common types of glitches seen in the LIGO, KAGRA, and Virgo detectors. We show how our GAN-generated images can easily be converted to time series, which would allow us to use GAN-generated glitches in simulations and mock data challenges to improve the robustness of gravitational-wave searches and parameter-estimation algorithms. We perform a neural network classification to show that our artificial glitches are an excellent match for real glitches, with an average classification accuracy across all 22 glitch types of 99.0%.

Topics & Concepts

LIGOGlitchPhysicsGravitational waveDetectorRobustness (evolution)Noise (video)AlgorithmArtificial intelligenceComputer scienceOpticsAstronomyChemistryBiochemistryGeneImage (mathematics)Pulsars and Gravitational Waves ResearchModel Reduction and Neural NetworksMeteorological Phenomena and Simulations
Generating transient noise artefacts in gravitational-wave detector data with generative adversarial networks | Litcius