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Deep learning searches for gravitational wave stochastic backgrounds

机译:深层学习搜索引力波随机背景

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The background of gravitational waves (GW) has long been studied and remains one of the most exciting aspects in the observation and analysis of gravitational radiation. The paper focuses on the search for the background of gravitational waves using deep neural networks. An astrophysical background due to the presence of many binary black hole coalescences was simulated for Advanced LIGO O3 sensitivity and the Einstein Telescope (ET) design sensitivity. The detection pipeline targets signal data out of the noisy detector background. Its architecture comprises of simulated whitened data as input to three classes of deep neural networks algorithms: a 1D and a 2D convolutional neural network (CNN) and a Long Short Term Memory (LSTM) network. It was found that all three algorithms could distinguish signals from noise with high precision for the ET sensitivity, but the current sensitivity of LIGO is too low to permit the algorithms to learn signal features from the input vectors.
机译:重力波(GW)的背景已经研究了,并且仍然是对引力辐射观察和分析的最令人兴奋的方面之一。 本文侧重于使用深神经网络搜索引力波背景。 由于具有许多二元黑洞聚合的存在,模拟了用于先进的Ligo O3灵敏度和爱因斯坦望远镜(ET)设计敏感性的模拟了天体物理背景。 检测管道将信号数据瞄准嘈杂的探测器背景。 其架构包括模拟的白化数据,作为三类深度神经网络算法的输入:1D和2D卷积神经网络(CNN)和长短期存储器(LSTM)网络。 结果发现,所有三种算法都可以将信号与ET灵敏度高精度的精度区分开,但是LiGo的电流灵敏度太低,以允许算法从输入向量中学习信号特征。

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