Gaussian Processes for Glitch-robust Gravitational-wave Astronomy
Gregory Ashton

TL;DR
This paper investigates using Gaussian processes to model and mitigate transient noise glitches in gravitational-wave data, enabling more accurate signal recovery and new tests of General Relativity.
Contribution
It introduces a novel Gaussian process-based method for modeling glitches in gravitational-wave data, improving signal parameter estimation and enabling time-domain tests of gravity.
Findings
Gaussian processes can effectively model long-duration glitches.
The approach recovers simulated signal parameters accurately.
It enables new time-domain tests of General Relativity.
Abstract
Interferometric gravitational-wave observatories have opened a new era in astronomy. The rich data produced by an international network enables detailed analysis of the curved space-time around black holes. With nearly one hundred signals observed so far and thousands expected in the next decade, their population properties enable insights into stellar evolution and the expansion of our Universe. However, the detectors are afflicted by transient noise artefacts known as "glitches" which contaminate the signals and bias inferences. Of the 90 signals detected to date, 18 were contaminated by glitches. This feasibility study explores a new approach to transient gravitational-wave data analysis using Gaussian processes, which model the underlying physics of the glitch-generating mechanism rather than the explicit realisation of the glitch itself. We demonstrate that if the Gaussian process…
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Taxonomy
TopicsSpectroscopy Techniques in Biomedical and Chemical Research · Advanced Measurement and Metrology Techniques · Advanced Optical Sensing Technologies
