Coherence DeepClean: Toward autonomous denoising of gravitational-wave detector data
Christina Reissel, Siddharth Soni, Muhammed Saleem, Michael Coughlin, Philip Harris, Erik Katsavounidis

TL;DR
Coherence DeepClean is a machine learning-based cyberinfrastructure designed to autonomously identify and remove noise from gravitational-wave detector data, improving sensitivity and operational efficiency.
Contribution
This work introduces Coherence DeepClean, a comprehensive system integrating coherence analysis and machine learning for real-time noise denoising in gravitational-wave data.
Findings
Achieved a 1.4% improvement in binary neutron star range.
Enabled a 4.3% increase in sensitive volume.
Demonstrated near-online operation of the denoising process.
Abstract
Technical and environmental noise in ground-based laser interferometers designed for gravitational-wave observations like Advanced LIGO, Advanced Virgo and KAGRA, can manifest as narrow (<1Hz) or broadband (s or even s of Hz) spectral lines and features in the instruments' strain amplitude spectral density. When the sources of this noise cannot be identified or removed, in cases where there are witness sensors sensitive to this noise source, denoising of the gravitational-wave strain channel can be performed in software, enabling recovery of instrument sensitivity over affected frequency bands. This noise hunting and removal process can be particularly challenging due to the wealth of auxiliary channels monitoring the interferometry and the environment and the non-linear couplings that may be present. In this work, we present a comprehensive analysis approach and…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismology and Earthquake Studies · Image and Signal Denoising Methods
