矿业科学技术学报(英文版)2023,Vol.33Issue(10) :1203-1216.DOI:10.1016/j.ijmst.2023.09.003

Microseismic event waveform classification using CNN-based transfer learning models

Longjun Dong Hongmei Shu Zheng Tang Xianhang Yan
矿业科学技术学报(英文版)2023,Vol.33Issue(10) :1203-1216.DOI:10.1016/j.ijmst.2023.09.003

Microseismic event waveform classification using CNN-based transfer learning models

Longjun Dong 1Hongmei Shu 2Zheng Tang 1Xianhang Yan1
扫码查看

作者信息

  • 1. School of Resources and Safety Engineering,Central South University,Changsha 410083,China
  • 2. School of Resources and Safety Engineering,Central South University,Changsha 410083,China;International College of Digital Innovation,Chiang Mai University,Chiang Mai 50200,Thailand
  • 折叠

Abstract

The efficient processing of large amounts of data collected by the microseismic monitoring system(MMS),especially the rapid identification of microseismic events in explosions and noise,is essential for mine disaster prevention.Currently,this work is primarily performed by skilled technicians,which results in severe workloads and inefficiency.In this paper,CNN-based transfer learning combined with computer vision technology was used to achieve automatic recognition and classification of multi-channel microseismic signal waveforms.First,data collected by MMS was generated into 6-channel orig-inal waveforms based on events.After that,sample data sets of microseismic events,blasts,drillings,and noises were established through manual identification.These datasets were split into training sets and test sets according to a certain proportion,and transfer learning was performed on AlexNet,GoogLeNet,and ResNet50 pre-training network models,respectively.After training and tuning,optimal models were retained and compared with support vector machine classification.Results show that trans-fer learning models perform well on different test sets.Overall,GoogLeNet performed best,with a recog-nition accuracy of 99.8%.Finally,the possible effects of the number of training sets and the imbalance of different types of sample data on the accuracy and effectiveness of classification models were discussed.

Key words

Mine safety/Machine learning/Transfer learning/Microseismic events/Waveform classification/Image identification and classification

引用本文复制引用

基金项目

National Key R&D Program of China(2021YFC2900500)

出版年

2023
矿业科学技术学报(英文版)
中国矿业大学

矿业科学技术学报(英文版)

CSTPCDCSCDEI
影响因子:1.222
ISSN:2095-2686
浏览量1
被引量1
参考文献量9
段落导航相关论文