New methods to assess and improve LIGO detector duty cycle
Ayon Biswas, Jess McIver, Ashish Mahabal

TL;DR
This paper applies machine learning to analyze LIGO detector data, predicting lockloss events with high accuracy to improve detector uptime and gravitational wave detection capabilities.
Contribution
The study introduces a machine learning approach to predict LIGO lockloss events using minimal control signals, providing new insights for detector maintenance and operational efficiency.
Findings
Achieved 98% prediction accuracy just before lockloss
Achieved 90% accuracy up to 30 seconds prior to lockloss
Optical cavity states are better predictors than ground motion trends
Abstract
A network of three or more gravitational wave detectors simultaneously taking data is required to generate a well-localized sky map for gravitational wave sources, such as GW170817. Local seismic disturbances often cause the LIGO and Virgo detectors to lose light resonance in one or more of their component optic cavities, and the affected detector is unable to take data until resonance is recovered. In this paper, we use machine learning techniques to gain insight into the predictive behavior of the LIGO detector optic cavities during the second LIGO-Virgo observing run. We identify a minimal set of optic cavity control signals and data features which capture interferometer behavior leading to a loss of light resonance, or lockloss. We use these channels to accurately distinguish between lockloss events and quiet interferometer operating times via both supervised and unsupervised…
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