1D Convolutional Seismic Event Classification Method Based on Attention Mechanism and Light Inception Block

IF 0.7 4区 地球科学 Q4 GEOCHEMISTRY & GEOPHYSICS Applied Geophysics Pub Date : 2024-06-25 DOI:10.1007/s11770-024-1117-4
Yong-ming Huang, Yi Xie, Fa-jun Miao, Yong-sheng Ma, Gao-chuan Liu, Guo-bao Zhang, Yun-tian Teng
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Abstract

Waveforms of artificially induced explosions and collapse events recorded by the seismic network share similarities with natural earthquakes. Failure to identify and screen them in a timely manner can introduce confusion into the earthquake catalog established using these recordings, thereby impacting future seismological research. Therefore, the identification and separation of natural earthquakes from continuous seismic signals contribute to the monitoring and early warning of destructive tectonic earthquakes. A 1D convolutional neural network (CNN) is proposed for seismic event classification using an efficient channel attention mechanism and an improved light inception block. A total of 9937 seismic sample records are obtained after waveform interception, filtering, and normalization. The proposed model can obtain better classification performance than other major existing methods, exhibiting 96.79% overall classification accuracy and 96.73%, 94.85%, and 96.35% classification accuracy for natural seismic events, collapse events, and blasting events, respectively. Meanwhile, the proposed model is lighter than the 2D convolutional and common inception networks. We also apply the proposed model to the seismic data recorded at the University of Utah seismograph stations and compare its performance with that of the CNN-waveform model.

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基于注意机制和光接收块的一维卷积地震事件分类方法
地震台网记录的人工诱发爆炸和崩塌事件的波形与天然地震有相似之处。如果不能及时识别和筛选,就会给利用这些记录建立的地震目录带来混乱,从而影响未来的地震学研究。因此,从连续地震信号中识别和分离天然地震有助于对破坏性构造地震进行监测和预警。本文提出了一种用于地震事件分类的一维卷积神经网络(CNN),该网络采用了高效的信道关注机制和改进的光阈值块。经过波形截取、滤波和归一化处理后,共获得 9937 条地震样本记录。与现有的其他主要方法相比,所提出的模型能获得更好的分类性能,总体分类准确率为 96.79%,对天然地震事件、崩塌事件和爆破事件的分类准确率分别为 96.73%、94.85% 和 96.35%。同时,所提出的模型比二维卷积网络和普通起始网络更轻。我们还将提出的模型应用于犹他大学地震仪台站记录的地震数据,并将其性能与 CNN 波形模型进行了比较。
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来源期刊
Applied Geophysics
Applied Geophysics 地学-地球化学与地球物理
CiteScore
1.50
自引率
14.30%
发文量
912
审稿时长
2 months
期刊介绍: The journal is designed to provide an academic realm for a broad blend of academic and industry papers to promote rapid communication and exchange of ideas between Chinese and world-wide geophysicists. The publication covers the applications of geoscience, geophysics, and related disciplines in the fields of energy, resources, environment, disaster, engineering, information, military, and surveying.
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