Gravitational wave search by time-scale-recursive denoising and matched filtering

IF 6.4 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY
Cunliang Ma, Chenyang Ma, Zhoujian Cao, Mingzhen Jia
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引用次数: 0

Abstract

In our previous work [Physical Review D, 2024, 109(4): 043009], we introduced MSNRnet, a framework integrating deep learning and matched filtering methods for gravitational wave (GW) detection. Compared with end-to-end classification methods, MSNRnet is physically interpretable. Multiple denoising models and astrophysical discrimination models corresponding to different parameter space were operated independently for the template prediction and selection. But the MSNRnet has a lot of computational redundancy. In this study, we propose a new framework for template prediction, which significantly improves our previous method. The new framework consists of the recursive application of denoising models and waveform classification models, which solve the problem of computational redundancy. The waveform classification network categorizes the denoised output based on the signal’s time scale. To enhance the denoising performance for long-time-scale data, we upgrade the denoising model by incorporating Transformer and ResNet modules. Furthermore, we introduce a novel training approach that allows for the simultaneous training of the denoising network and waveform classification network, eliminating the need for manual annotation of the waveform dataset required in our previous method. Real-data analysis results demonstrate that our new method decreases the false alarm rate by approximately 25%, boosts the detection rate by roughly 5%, and slashes the computational cost by around 90%. The new method holds potential for future application in online GW data processing.

利用时标递归去噪和匹配滤波搜索引力波
在我们之前的工作[Physical Review D, 2024, 109(4): 043009]中,我们介绍了MSNRnet,这是一个集成了深度学习和匹配滤波方法的框架,用于引力波(GW)探测。与端到端分类方法相比,MSNRnet具有物理可解释性。不同参数空间对应的多个去噪模型和天体物理判别模型被独立用于模板预测和选择。但 MSNRnet 存在大量计算冗余。在本研究中,我们提出了一种新的模板预测框架,大大改进了我们之前的方法。新框架由去噪模型和波形分类模型的递归应用组成,解决了计算冗余的问题。波形分类网络根据信号的时间尺度对去噪输出进行分类。为了提高长时间尺度数据的去噪性能,我们通过加入 Transformer 和 ResNet 模块对去噪模型进行了升级。此外,我们还引入了一种新颖的训练方法,可以同时训练去噪网络和波形分类网络,从而省去了以往方法中需要对波形数据集进行人工标注的步骤。实际数据分析结果表明,我们的新方法将误报率降低了约 25%,将检测率提高了约 5%,并将计算成本降低了约 90%。新方法有望在未来的在线 GW 数据处理中得到应用。
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来源期刊
Science China Physics, Mechanics & Astronomy
Science China Physics, Mechanics & Astronomy PHYSICS, MULTIDISCIPLINARY-
CiteScore
10.30
自引率
6.20%
发文量
4047
审稿时长
3 months
期刊介绍: Science China Physics, Mechanics & Astronomy, an academic journal cosponsored by the Chinese Academy of Sciences and the National Natural Science Foundation of China, and published by Science China Press, is committed to publishing high-quality, original results in both basic and applied research. Science China Physics, Mechanics & Astronomy, is published in both print and electronic forms. It is indexed by Science Citation Index. Categories of articles: Reviews summarize representative results and achievements in a particular topic or an area, comment on the current state of research, and advise on the research directions. The author’s own opinion and related discussion is requested. Research papers report on important original results in all areas of physics, mechanics and astronomy. Brief reports present short reports in a timely manner of the latest important results.
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