LSTM and CNN application for core-collapse supernova search in gravitational wave real data
Alberto Iess, Elena Cuoco, Filip Morawski, Constantina, Nicolaou, Ofer Lahav

TL;DR
This study explores machine learning techniques, including CNNs and LSTMs, for detecting and classifying core-collapse supernova gravitational wave signals in real interferometer data, achieving high accuracy especially in multi-detector scenarios.
Contribution
It demonstrates the first application of LSTM networks for multi-label classification of CCSNe signals in gravitational wave data, comparing their performance with CNNs.
Findings
Single detector accuracy: LIGO ~99%, Virgo ~80%.
Multi-detector accuracy: ~98%.
ML models effectively distinguish CCSNe signals from noise.
Abstract
Core-collapse supernovae (CCSNe) are expected to emit gravitational wave signals that could be detected by current and future generation interferometers within the Milky Way and nearby galaxies. The stochastic nature of the signal arising from CCSNe requires alternative detection methods to matched filtering. We aim to show the potential of machine learning (ML) for multi-label classification of different CCSNe simulated signals and noise transients using real data. We compared the performance of 1D and 2D convolutional neural networks (CNNs) on single and multiple detector data. For the first time, we tested multi-label classification also with long short-term memory (LSTM) networks. We applied a search and classification procedure for CCSNe signals, using an event trigger generator, the Wavelet Detection Filter (WDF), coupled with ML. We used time series…
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