Seismic event classification based on a two-step convolutional neural network

IF 1.6 4区 地球科学 Q3 GEOCHEMISTRY & GEOPHYSICS Journal of Seismology Pub Date : 2023-06-08 DOI:10.1007/s10950-023-10153-9
Long Yue, Junhao Qu, Shaohui Zhou, Bao’an Qu, Yanwei Zhang, Qingfeng Xu
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Abstract

The identification of unnatural earthquake events is one of the tasks of earthquake rapid report. The identification accuracy is of great significance for improving the quality of earthquake catalog and seismological research. In this study, a 7-layer convolutional neural network model was constructed to identify unnatural earthquakes. First, the three-component seismic waveform was input to obtain the waveform image classifier, and then, the time–frequency spectrum of blasting and collapse was input to obtain the time–frequency spectrum classifier. The two classifiers were used to identify natural earthquake, blasting, and collapse. The model was trained and tested using 3386 seismic events of Shandong seismic network from 2017 to 2022. The events identified as blasting by the waveform image classifier were reidentified by the time–frequency spectrum classifier. Finally, the identification accuracy of natural earthquake, blasting, and collapse is 97.50%, 95.87%, and 86.84%, respectively, with an average accuracy rate of 96.13%. The experimental results show that the two-step convolutional neural network can extract the characteristics of seismic signals from multiple angles, which get a good result in seismic event classification.

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基于两步卷积神经网络的地震事件分类
非自然地震事件的识别是地震快速报告的任务之一。识别精度的提高对提高地震目录质量和地震学研究具有重要意义。在本研究中,构建了一个7层卷积神经网络模型来识别非自然地震。首先输入三分量地震波形,得到波形图像分类器,然后输入爆破和塌陷的时频谱,得到时频谱分类器。这两种分类器分别用于识别自然地震、爆破和坍塌。利用2017 - 2022年山东地震台网3386个地震事件对模型进行了训练和检验。将波形图像分类器识别出的爆破事件用时频谱分类器重新识别。最后,对自然地震、爆破和塌方的识别准确率分别为97.50%、95.87%和86.84%,平均准确率为96.13%。实验结果表明,两步卷积神经网络可以从多个角度提取地震信号的特征,在地震事件分类中取得了较好的效果。
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来源期刊
Journal of Seismology
Journal of Seismology 地学-地球化学与地球物理
CiteScore
3.30
自引率
6.20%
发文量
67
审稿时长
3 months
期刊介绍: Journal of Seismology is an international journal specialising in all observational and theoretical aspects related to earthquake occurrence. Research topics may cover: seismotectonics, seismicity, historical seismicity, seismic source physics, strong ground motion studies, seismic hazard or risk, engineering seismology, physics of fault systems, triggered and induced seismicity, mining seismology, volcano seismology, earthquake prediction, structural investigations ranging from local to regional and global studies with a particular focus on passive experiments.
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