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Detection and parameter estimation of gravitational waves from binary neutron-star mergers in real LIGO data using deep learning

机译:使用深度学习的真实利波数据中二元中子 - 星相作用的重力波的检测和参数估计

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One of the key challenges of real-time detection and parameter estimation of gravitational waves from compact binary mergers is the computational cost of conventional matched-filtering and Bayesian inference approaches. In particular, the application of these methods to the full signal parameter space available to the gravitational-wave detectors, and/or real-time parameter estimation is computationally prohibitive. On the other hand, rapid detection and inference are critical for prompt follow-up of the electromagnetic and astro-particle counterparts accompanying important transients, such as binary neutron-star and black-hole neutron-star mergers. Training deep neural networks to identify specific signals and learn a computationally efficient representation of the mapping between gravitational-wave signals and their parameters allows both detection and inference to be done quickly and reliably, with high sensitivity and accuracy. In this work we apply a deep-learning approach to rapidly identify and characterize transient gravitational-wave signals from binary neutron-star mergers inrealLIGO data. We show for the first time that artificial neural networks can promptly detect and characterize binary neutron star gravitational-wave signals inrealLIGO data, and distinguish them from noise and signals from coalescing black-hole binaries. We illustrate this key result by demonstrating that our deep-learning framework classifies correctly all gravitational-wave events from the Gravitational-Wave Transient Catalog, GWTC-1 [Abbott et al. (2019) ]. These results emphasize the importance of using realistic gravitational-wave detector data in machine learning approaches, and represent a step towards achieving real-time detection and inference of gravitational waves.
机译:实时检测和来自紧凑型二元物合并的重力波的参数估计的关键挑战之一是传统匹配滤波和贝叶斯推理方法的计算成本。特别地,将这些方法应用于重力波检测器可用的全信号参数空间,和/或实时参数估计是计算禁止的。另一方面,快速检测和推理对于伴随重要的瞬态的电磁和天空粒子对应力的迅速的跟进至关重要,例如二元中子星和黑洞中子 - 星形合并。培训深度神经网络以识别特定信号,并学习引力波信号之间的映射的计算有效表示,并且它们的参数允许快速可靠地进行检测和推理,具有高灵敏度和精度。在这项工作中,我们应用深度学习方法来快速识别和表征来自二元中子 - 星相的瞬态引力波信号InRealLigo数据。我们首次展示了人工神经网络可以迅速地检测和表征二元中子星引力波信号InRealLigo数据,并将它们与来自聚结的黑洞二进制二进制文件的噪声和信号区分开来。我们通过证明我们的深度学习框架正确分类所有引力波瞬态目录,GWTC-1 [Abbott等人。 (2019)]。这些结果强调了在机器学习方法中使用现实的重力波检测器数据的重要性,并且代表了实现重力波的实时检测和推理的步骤。

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