人工智能和深度学习对引力波探测革命的贡献

IF 1.9 4区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS
Krishna Prajapati , Snehal Jani , Manisha Singh , Ranjeet Brajpuriya
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引用次数: 0

摘要

尖端计算技术与引力波物理探测的融合可以成为探测和清理引力波数据的有效解决方案,从而进一步帮助我们识别潜在的天体物理源。在这篇综述文章中,我们将讨论人工智能方法在引力波数据分析中的作用。下面,我们列出了目前用于发现引力波的地面干涉仪(如 LIGO、VIRGO 等)和脉冲定时阵列(如 Parkes 脉冲定时阵列),以及它们的优点和如何用于发现不同类型的引力波。我们调查了所有四种类型的引力波,每种类型的引力波都需要一种独特的探测和数据处理方法。我们广泛研究了卷积神经网络、自动编码器和 LSTM 等深度学习技术在各种可能来源引力波的探测和参数估计中的应用,包括双中子星合并和中子星-黑洞合并。这篇综述文章还包括对引力波实时数据中的噪声和小故障的透彻理解,以及如何有效利用机器学习和深度学习技术来帮助模拟波形和去除噪声以量化结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contribution of AI and deep learning in revolutionizing gravitational wave detection

The fusion of cutting-edge computing techniques with physical detection of gravitational waves can be a potent solution for detecting and cleaning gravitational wave data, which further helps us in the identification of potential astrophysical sources. In this review article, we discuss the role of artificial intelligence approaches in the analysis of gravitational wave data. Below, we list both ground-based interferometers (like LIGO, VIRGO, etc.) and pulse timing arrays (like Parkes pulse timing array) as the current technologies used to find gravitational waves, along with their benefits and how they can be used to find different kinds of gravitational waves. We survey all four types of gravitational waves, each requiring a unique approach to both detection and data processing. We have extensively studied the use of deep learning techniques like convolutional neural networks, autoencoders, and LSTMs in the detection and parameter estimation of gravitational waves from various possible sources, including binary neutron star mergers and neutron star-black hole mergers, in detail. The review article also includes a thorough understanding of the noise and glitches in the real-time data of gravitational waves, as well as how the effective use of machine learning and deep learning techniques can be helpful in simulating waveforms and removing noise to quantify results.

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来源期刊
Astronomy and Computing
Astronomy and Computing ASTRONOMY & ASTROPHYSICSCOMPUTER SCIENCE,-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
4.10
自引率
8.00%
发文量
67
期刊介绍: Astronomy and Computing is a peer-reviewed journal that focuses on the broad area between astronomy, computer science and information technology. The journal aims to publish the work of scientists and (software) engineers in all aspects of astronomical computing, including the collection, analysis, reduction, visualisation, preservation and dissemination of data, and the development of astronomical software and simulations. The journal covers applications for academic computer science techniques to astronomy, as well as novel applications of information technologies within astronomy.
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