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Hauptverfasser: Goode, Simon R., Schiworski, Mitchell, Brown, Daniel, Thrane, Eric, Lasky, Paul D.
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2411.16104
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author Goode, Simon R.
Schiworski, Mitchell
Brown, Daniel
Thrane, Eric
Lasky, Paul D.
author_facet Goode, Simon R.
Schiworski, Mitchell
Brown, Daniel
Thrane, Eric
Lasky, Paul D.
contents Current and future gravitational-wave observatories rely on large-scale, precision interferometers to detect the gravitational-wave signals. However, microscopic imperfections on the test masses, known as point absorbers, cause problematic heating of the optic via absorption of the high-power laser beam, which results in diminished sensitivity, lock loss, or even permanent damage. Consistent monitoring of the test masses is crucial for detecting, characterizing, and ultimately removing point absorbers. We present a machine-learning algorithm for detecting point absorbers based on the object-detection algorithm You Only Look Once (YOLO). The algorithm can perform this task in situ while the detector is in operation. We validate our algorithm by comparing it with past reports of point absorbers identified by humans at LIGO. The algorithm confidently identifies the same point absorbers as humans with minimal false positives. It also identifies some point absorbers previously not identified by humans, which we confirm with human follow-up. We highlight the potential of machine learning in commissioning efforts.
format Preprint
id arxiv_https___arxiv_org_abs_2411_16104
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle You only thermoelastically deform once: Point Absorber Detection in LIGO Test Masses with YOLO
Goode, Simon R.
Schiworski, Mitchell
Brown, Daniel
Thrane, Eric
Lasky, Paul D.
Instrumentation and Methods for Astrophysics
Optics
Current and future gravitational-wave observatories rely on large-scale, precision interferometers to detect the gravitational-wave signals. However, microscopic imperfections on the test masses, known as point absorbers, cause problematic heating of the optic via absorption of the high-power laser beam, which results in diminished sensitivity, lock loss, or even permanent damage. Consistent monitoring of the test masses is crucial for detecting, characterizing, and ultimately removing point absorbers. We present a machine-learning algorithm for detecting point absorbers based on the object-detection algorithm You Only Look Once (YOLO). The algorithm can perform this task in situ while the detector is in operation. We validate our algorithm by comparing it with past reports of point absorbers identified by humans at LIGO. The algorithm confidently identifies the same point absorbers as humans with minimal false positives. It also identifies some point absorbers previously not identified by humans, which we confirm with human follow-up. We highlight the potential of machine learning in commissioning efforts.
title You only thermoelastically deform once: Point Absorber Detection in LIGO Test Masses with YOLO
topic Instrumentation and Methods for Astrophysics
Optics
url https://arxiv.org/abs/2411.16104