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LSTM and CNN Application for Core-Collapse Supernova Search in Gravitational Wave Real Data.

ASTRONOMY & ASTROPHYSICS(2023)

Scuola Normale Super Pisa | Polish Acad Sci | UCL

Cited 6|Views24
Abstract
Context. 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. Aims. 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. Methods. 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 and time-frequency representations of the data as inputs to the ML models. To compute classification accuracies, we simultaneously injected, at detectable distance of 1 kpc, CCSN waveforms, obtained from recent hydrodynamical simulations of neutrino-driven core-collapse, onto interferometer noise from the O2 LIGO and Virgo science run. Results. We compared the performance of the three models on single detector data. We then merged the output of the models for single detector classification of noise and astrophysical transients, obtaining overall accuracies for LIGO (~99%) and (~80%) for Virgo. We extended our analysis to the multi-detector case using triggers coincident among the three ITFs and achieved an accuracy of ~98%.
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gravitational waves,methods: data analysis,supernovae: general
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要点】:本文探讨了使用LSTM和CNN进行核心坍缩超新星(CCSNe)信号在引力波真实数据中的搜索与多标签分类,实现了高准确率的检测效果。

方法】:作者采用Wavelet Detection Filter(WDF)与机器学习模型(1D和2D CNN,以及LSTM)结合的方法,对数据的时间序列和时间频率表示进行处理,以实现信号的搜索和分类。

实验】:在LIGO和Virgo的O2科学运行数据中,作者通过在检测距离1 kpc处注入来自最近流体动力学模拟的CCSN波形,测试了模型的性能,LIGO单探测器数据上LSTM和CNN模型实现了约99%的准确率,Virgo上为约80%,而在多探测器情况下,准确率达到了约98%。