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基于S谱能量曲线与卷积神经网络的天然地震与爆破事件分类识别

孟娟 李亚南 高强

地震学报2025,Vol.47Issue(2):232-241,10.
地震学报2025,Vol.47Issue(2):232-241,10.DOI:10.11939/jass.20230088

基于S谱能量曲线与卷积神经网络的天然地震与爆破事件分类识别

Earthquake and artificial blasting identification based on S-spectrum energy curve and convolutional neural networks

孟娟 1李亚南 1高强1

作者信息

  • 1. 中国河北三河 065201 防灾科技学院电子科学与控制工程学院
  • 折叠

摘要

Abstract

With the improvement of earthquake monitoring capabilities and the surge of monit-oring data,researches on seismology has entered the era of big data.Especially with the in-crease of mining blasting,engineering demolition,military construction and other activities,seismic stations will collect a large number of natural and artificial blasting waveforms.Accur-ately and quickly identifying artificial blasting and natural earthquakes from waveforms has be-come one of the focuses of earthquake warning and prediction research.Numerous scholars have conducted in-depth researches on earthquake event classification and recognition.The use of convolutional neural network(CNN)technology for earthquake event detection and classific-ation is currently one of the research hot-spots,but one of the key challenges is how to capture the different features of artificial blasting and natural earthquakes. In order to further study the application of CNN in the field of earthquake event automatic detection and improve the efficiency of event automatic detection,a study was conducted on the classification and identification of natural earthquakes and blasting events based on CNN,with 12 936 artificial blasting micro-seismic records and 13 215 natural micro-seismic records with magnitude ML1.3-3.0 as the research objects. Firstly,the seismic waveforms are preprocessed.The original seismic waveforms are fil-tered using a band-pass filter with a range of 1-30 Hz to remove long-period interference com-ponents,resulting in distinct P-and S-wave records.Based on this,P-wave identification is performed using short-term/long-term average(STA/LTA)algorithm,with STA duration set as 0.2 seconds,LTA duration set as 1 second,and threshold size set as 2.The waveforms from 20 seconds before the first arrival time to 100 seconds after the last arrival time were taken as the screening result for this record,resulting in 12 132 effective natural earthquake screening re-cords and 11 721 artificial blasting screening records. Secondly,the S-transform is applied to obtain the S-transform spectrum of the prepro-cessed seismic signals.Based on the obtained S-transform spectrum,the S-spectrum energy curve that varies with frequency is then calculated by integrating the energy across different fre-quency bands.The S-spectrum energy curve can clearly depict the frequency and energy vari-ation of seismic signals.Moreover,it can more effectively capture the characteristics of the ori-ginal signals. Then,based on the classic LeNet5 model,a CNN network model,was constructed,which includes one input layer,three convolutional groups consisting of three convolutional layers and three pooling layers,one fully connected layer,and one output layer.In order to re-duce resource loss and time consumption,and improve operational efficiency,the three-channel RGB image of the S-spectrum energy curve is converted into a 32×32 pixel-grayscale feature map,which is used as input for CNN.The CNN model is trained using the training set to ob-tain the optimal CNN model parameters. Finally,testing is conducted based on the trained CNN model to verify the identification accuracy of natural earthquakes and artificial blasting events.A certain proportion(50%-90%)of the preprocessed seismic record dataset is randomly extracted as training data,with the re-maining data used for testing.The tests show that the more training samples there are,the bet-ter the classification and identification performance.When the training sample ratio is 90%,the average identification accuracy is up to 97.57%. The algorithm performance was tested using the ten-fold cross validation method,with the process repeated 100 times.The average identification result was adopted,and the identifica-tion accuracy reached 97.80%.The values of the classification performance indicators,namely sensitivity(SE)and specificity(SP),were close,which indicates good identification perform-ance of the CNN algorithm. To further test the effectiveness of the S-spectrum energy curve as a feature for seismic sig-nal classification and identification,the S-spectrum,wavelet spectrum,short-time Fourier transform(STFT)spectrum,and fast Fourier transform(FFT)spectrum were used as inputs for CNN model training and testing.The results showed that in comparison to other signal spectra,the S-spectrum energy curve can intuitively reflect the energy magnitude and variations of each frequency component within the signal,with a higher recognition accuracy of over 97%. The experimental results show that the S-spectrum energy curve can serve as an effective and reliable basis for classifying natural earthquakes and artificial blasting events,and the CNN model in this paper is reliable with good stability and accuracy. It should be noted that,using simple binary classification problems such as natural earth-quakes and artificial blasting alone is not enough to describe the complexity of earthquake event classification and recognition.In the next step,we will collect sample data from different regions and earthquake events,optimize the structural model of CNN training networks,and make the model for earthquake event detection and identification more accurate and the identi-fication effect more intelligent.

关键词

人工爆破/天然地震/卷积神经网络(CNN)/S变换/分类识别

Key words

artificial blasting/natural earthquake/convolutional neural network(CNN)/S-transform/classification and identification

分类

地球科学

引用本文复制引用

孟娟,李亚南,高强..基于S谱能量曲线与卷积神经网络的天然地震与爆破事件分类识别[J].地震学报,2025,47(2):232-241,10.

基金项目

河北省廊坊市科技支撑计划项目(2024011008)和中央高校基本科研业务费研究生科技创新基金项目(ZY20240329)联合资助. (2024011008)

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