Employing deep learning for detection of gravitational waves from compact binary coalescences

C. Verma, A. Reza, D. Krishnaswamy, S. Caudill, G. Gaur
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引用次数: 1

Abstract

The matched filtering paradigm is the mainstay of gravitational wave (GW) searches from astrophysical coalescing compact binaries. The compact binary coalescence (CBC) search pipelines perform the matched filter between the GW detector's data and a large set of analytical waveforms. However, the computational cost of performing matched filter is very high as the required number of the analytical waveforms is also high. Recently, various deep learning-based methods have been deployed to identify a GW signal in the detector output as an alternative to computationally expensive matched filtering techniques. In past work, the researchers have considered the detection of GW signal mainly as a classification problem, in which they train the deep learning-based architecture by considering the noise and the GW signal as two different classes. However, in this work, for the first time, we have combined the Convolutional Neural Network (CNN) and matched filter methods to reduce the computational cost of the search by reducing the number of matched filtering operations. We have implemented the CNN based architecture not only for classification of the signal but also to identify the location of the signal in the intrinsic parameter space. Identifying the location in which the detected signal lies enables us to perform the matched filter operations between the data and the analytical waveforms generated for the smaller region of the parameter space only - thereby reducing the computational cost of the search. We demonstrate our method for two-dimensional parameter space for stellar to high mass binary black hole systems. In particular, we are able to classify between pure noise and noisy BBH signals with 99% accuracy. Further, the detected signals have been sub-classified into patches in mass components with an average accuracy>97%
利用深度学习从紧致二元聚并中探测引力波
匹配滤波范式是天体物理聚并紧密双星引力波(GW)搜索的主流。紧凑的二进制合并(CBC)搜索管道在GW探测器的数据和一组大的分析波形之间进行匹配滤波。然而,执行匹配滤波器的计算成本非常高,因为所需的分析波形数量也很高。最近,已经部署了各种基于深度学习的方法来识别探测器输出中的GW信号,作为计算昂贵的匹配滤波技术的替代方案。在过去的工作中,研究人员主要将GW信号的检测视为一个分类问题,他们将噪声和GW信号作为两个不同的类别来训练基于深度学习的架构。然而,在这项工作中,我们首次将卷积神经网络(CNN)和匹配过滤方法结合起来,通过减少匹配过滤操作的数量来降低搜索的计算成本。我们实现了基于CNN的结构,不仅用于信号的分类,而且用于识别信号在固有参数空间中的位置。识别检测信号所在的位置使我们能够在数据和仅为参数空间的较小区域生成的分析波形之间执行匹配的滤波操作-从而减少搜索的计算成本。我们演示了我们的方法二维参数空间的恒星到高质量双黑洞系统。特别是,我们能够以99%的准确率对纯噪声和带噪BBH信号进行分类。进一步,将检测到的信号细分为质量分量中的小块,平均准确率>97%
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