Space-based gravitational wave signal detection and extraction with deep neural network

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作者
Tianyu Zhao
Ruoxi Lyu
He Wang
Zhoujian Cao
Zhixiang Ren
机构
[1] Beijing Normal University,Department of Astronomy
[2] Beijing Normal University,Institute for Frontiers in Astronomy and Astrophysics
[3] Peng Cheng Laboratory,Department of Statistics
[4] University of Auckland,International Centre for Theoretical Physics Asia
[5] University of Chinese Academy of Sciences (UCAS),Pacific
[6] Taiji Laboratory for Gravitational Wave Universe,CAS Key Laboratory of Theoretical Physics, Institute of Theoretical Physics
[7] UCAS,School of Fundamental Physics and Mathematical Sciences
[8] Chinese Academy of Sciences,undefined
[9] Hangzhou Institute for Advanced Study,undefined
[10] UCAS,undefined
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Space-based gravitational wave (GW) detectors will be able to observe signals from sources that are otherwise nearly impossible from current ground-based detection. Consequently, the well established signal detection method, matched filtering, will require a complex template bank, leading to a computational cost that is too expensive in practice. Here, we develop a high-accuracy GW signal detection and extraction method for all space-based GW sources. As a proof of concept, we show that a science-driven and uniform multi-stage self-attention-based deep neural network can identify synthetic signals that are submerged in Gaussian noise. Our method exhibits a detection rate exceeding 99% in identifying signals from various sources, with the signal-to-noise ratio at 50, at a false alarm rate of 1%. while obtaining at least 95% similarity compared with target signals. We further demonstrate the interpretability and strong generalization behavior for several extended scenarios.
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