首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >Graph-Partitioning Based Convolutional Neural Network for Earthquake Detection Using a Seismic Array
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Graph-Partitioning Based Convolutional Neural Network for Earthquake Detection Using a Seismic Array

机译:基于图形划分的基于卷积神经网络,用于使用地震阵列进行地震检测

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We present a deep-learning approach for earthquake detection using waveforms from a seismic array consisting of multiple seismographs. Although automated, deep-learning earthquake detection techniques have recently been developed at the single-station level, they have potential difficulty in reducing false detections owing to the presence of local noise inherent to each station. Here, we propose a deep-learning-based approach to efficiently analyze the waveforms observed by a seismic array, whereby we employ convolutional neural networks in conjunction with graph partitioning to group the waveforms from seismic stations within the array. We then apply the proposed method to waveform data recorded by a dense, local seismic array in the regional seismograph network around the Tokyo metropolitan area, Japan. Our method detects more than 97% of the local seismicity catalog, with less than 4% false positive rate, based on an optimal threshold value of the output earthquake probability of 0.61. A comparison with conventional deep-learning-based detectors demonstrates that our method yields fewer false detections for a given true earthquake detection rate. Furthermore, the current method exhibits the robustness to poor-quality data and/or data that are missing at several stations within the array. Numerical experiments using subsampled data demonstrate that the present method has the potential to detect earthquakes even when half of the normally available seismic data are missing. We apply the proposed method to analyze 1-h-long continuous waveforms and identify new seismic events with extremely low signal-to-noise ratios that are not listed in existing catalogs. We also show the potential portability of the proposed method by applying it to seismic array data not used for the training.
机译:我们提出了一种利用由多台地震仪组成的地震阵列波形进行地震探测的深度学习方法。尽管最近在单台站层面上开发了自动化的深度学习地震探测技术,但由于每个台站固有的局部噪声的存在,它们在减少误探测方面存在潜在的困难。在这里,我们提出了一种基于深度学习的方法来有效地分析地震阵列观测到的波形,利用卷积神经网络结合图形分割对阵列内地震台站的波形进行分组。然后,我们将所提出的方法应用于日本东京都附近区域地震台网中密集的本地地震阵列记录的波形数据。我们的方法基于输出地震概率的最佳阈值0.61,检测出超过97%的本地地震活动目录,假阳性率低于4%。与传统的基于深度学习的检测器的比较表明,在给定的真实地震检测率下,我们的方法产生的错误检测更少。此外,当前方法对阵列内多个站点缺少的低质量数据和/或数据具有鲁棒性。使用二次采样数据的数值实验表明,即使在正常可用地震数据的一半缺失的情况下,本方法也有可能检测地震。我们将所提出的方法用于分析1h长的连续波形,并识别现有目录中未列出的具有极低信噪比的新地震事件。通过将该方法应用于未用于训练的地震阵列数据,我们还展示了该方法的潜在可移植性。

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