TY - JOUR
T1 - Neural network time-series classifiers for gravitational-wave searches in single-detector periods
AU - Trovato, A.
AU - Chassande-Mottin, E.
AU - Bejger, M.
AU - Flamary, R.
AU - Courty, N.
N1 - Publisher Copyright:
© 2024 The Author(s). Published by IOP Publishing Ltd.
PY - 2024/6/20
Y1 - 2024/6/20
N2 - The search for gravitational-wave (GW) signals is limited by non-Gaussian transient noises that mimic astrophysical signals. Temporal coincidence between two or more detectors is used to mitigate contamination by these instrumental glitches. However, when a single detector is in operation, coincidence is impossible, and other strategies have to be used. We explore the possibility of using neural network classifiers and present the results obtained with three types of architectures: convolutional neural network, temporal convolutional network, and inception time. The last two architectures are specifically designed to process time-series data. The classifiers are trained on a month of data from the LIGO Livingston detector during the first observing run (O1) to identify data segments that include the signature of a binary black hole merger. Their performances are assessed and compared. We then apply trained classifiers to the remaining three months of O1 data, focusing specifically on single-detector times. The most promising candidate from our search is 4 January 2016 12:24:17 UTC. Although we are not able to constrain the significance of this event to the level conventionally followed in GW searches, we show that the signal is compatible with the merger of two black holes with masses m 1 = 50.7 − 8.9 + 10.4 M ⊙ and m 2 = 24.4 − 9.3 + 20.2 M ⊙ at the luminosity distance of d L = 564 − 338 + 812 Mpc .
AB - The search for gravitational-wave (GW) signals is limited by non-Gaussian transient noises that mimic astrophysical signals. Temporal coincidence between two or more detectors is used to mitigate contamination by these instrumental glitches. However, when a single detector is in operation, coincidence is impossible, and other strategies have to be used. We explore the possibility of using neural network classifiers and present the results obtained with three types of architectures: convolutional neural network, temporal convolutional network, and inception time. The last two architectures are specifically designed to process time-series data. The classifiers are trained on a month of data from the LIGO Livingston detector during the first observing run (O1) to identify data segments that include the signature of a binary black hole merger. Their performances are assessed and compared. We then apply trained classifiers to the remaining three months of O1 data, focusing specifically on single-detector times. The most promising candidate from our search is 4 January 2016 12:24:17 UTC. Although we are not able to constrain the significance of this event to the level conventionally followed in GW searches, we show that the signal is compatible with the merger of two black holes with masses m 1 = 50.7 − 8.9 + 10.4 M ⊙ and m 2 = 24.4 − 9.3 + 20.2 M ⊙ at the luminosity distance of d L = 564 − 338 + 812 Mpc .
KW - convolutional neural network
KW - gravitational wave detection
KW - inception time
KW - machine learning
KW - single-detector analysis
KW - temporal convolutional network
U2 - 10.1088/1361-6382/ad40f0
DO - 10.1088/1361-6382/ad40f0
M3 - Article
AN - SCOPUS:85193734266
SN - 0264-9381
VL - 41
JO - Classical and Quantum Gravity
JF - Classical and Quantum Gravity
IS - 12
M1 - 125003
ER -