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基于特征优化与协同学习的矿山微震识别网络

陈云民 巩思园 姚锐 缪燕子 白刚 喻仁波 马平 刘润翌

工矿自动化2026,Vol.52Issue(4):105-111,7.
工矿自动化2026,Vol.52Issue(4):105-111,7.DOI:10.13272/j.issn.1671-251x.2025120108

基于特征优化与协同学习的矿山微震识别网络

Mine microseismic identification network based on feature optimization and collaborative learning

陈云民 1巩思园 2姚锐 1缪燕子 3白刚 1喻仁波 2马平 1刘润翌3

作者信息

  • 1. 中天合创能源有限责任公司,内蒙古鄂尔多斯 017200
  • 2. 中国矿业大学矿业工程学院,江苏徐州 221116
  • 3. 中国矿业大学信息与控制工程学院,江苏徐州 221116
  • 折叠

摘要

Abstract

Mine microseismic signals usually have characteristics such as unstable waveform variations and weak events being easily masked by noise.Existing deep learning methods lack information interaction between local and global features,and it is difficult to distinguish real microseismic events from noise by relying only on features at a single scale or a single level,resulting in low identification accuracy,which makes it difficult to meet the requirements of rock burst early warning.To address the above problems,a mine microseismic identification network based on feature optimization and collaborative learning was proposed.The network performed feature optimization on microseismic waveform images through a multi-scale convolution module and a hybrid module to extract fine-grained semantic features.Information interaction between subnetworks at different levels was established through collaborative learning,so that the local features extracted by shallow subnetworks and the global features obtained by deep subnetworks were deeply integrated,thereby enhancing the network's ability to identify microseismic signals.The experimental results showed that:① The multi-scale convolution module and collaborative learning of multi-layer subnetworks had a positive effect on improving network performance.② Compared with networks such as ResNet-18,EfficientNet,BeiT,CaiT,and DeiT,the proposed network achieved the highest accuracy,precision,and F1 score.③The proposed network showed more concentrated attention to key feature regions of microseismic waveform images and achieved significant identification performance.

关键词

矿山微震识别/微震信号监测/特征优化/协同学习/多尺度卷积

Key words

mine microseismic identification/microseismic signal monitoring/feature optimization/collaborative learning/multi-scale convolution

分类

矿业与冶金

引用本文复制引用

陈云民,巩思园,姚锐,缪燕子,白刚,喻仁波,马平,刘润翌..基于特征优化与协同学习的矿山微震识别网络[J].工矿自动化,2026,52(4):105-111,7.

基金项目

国家科技重大专项项目(2024ZD1004108) (2024ZD1004108)

国家自然科学基金项目(62473370,52474270). (62473370,52474270)

工矿自动化

1671-251X

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