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金属矿山 ›› 2026, Vol. 55 ›› Issue (2): 166-176.

• • 上一篇    下一篇

基于Transformer 的深部矿山微震信号自动分类技术研究

骆贞江1,2 雷 入2 马少维3 谭丽龙4 于德宁4 贺艳军4 彭平安2   

  1. 1. 中国瑞林工程技术股份有限公司,江西 南昌 330031;2. 中南大学资源与安全工程学院,湖南 长沙 410083;
    3. 深圳市中金岭南有色金属股份有限公司,广东 深圳 518042;4. 长沙迪迈科技股份有限公司,湖南 长沙 410083
  • 出版日期:2026-02-15 发布日期:2026-03-04
  • 通讯作者: 马少维(1987—),男,高级工程师,博士。
  • 作者简介:骆贞江(1982—),男,正高级工程师,博士。
  • 基金资助:
    国家自然科学基金项目(编号:52374256)。

Research on Automatic Classification Technology of Microseismic Signals in a Deep Mine Based on Transformer#br#

LUO Zhenjiang1,2 LEI Ru2 MA Shaowei3 TAN Lilong4 YU Dening4 HE Yanjun4 PENG Pingan2   

  1. 1. China Ruilin Engineering Technology Co. ,Ltd. ,Nanchang 330031,China;2. School of Resources and Safety Engineering,
    Central South University,Changsha 410083,China;3. Shenzhen Zhongjin Lingnan Nonferrous Metals Co. ,Ltd. ,Shenzhen 518042,China;
    4. Changsha Dimine Technology Co. ,Ltd. ,Changsha 410083,China
  • Online:2026-02-15 Published:2026-03-04

摘要: 针对深井矿山微震监测中人工判别效率低下、传统机器学习方法对复杂非平稳信号分类精度不足的问
题,提出一种基于Transformer 架构的微震信号自动分类模型。基于真实矿山数据构建了包含微震事件、爆破振动及
噪声3 类信号的标注数据集。通过提取信号时频特征并结合Transformer 的自注意力机制,该模型有效捕捉了波形中
的长程依赖关系与全局特征,显著提升了分类精度,同时增强了对波形混淆现象的辨识能力,展现出良好的泛化性与
工程适用性。试验结果表明:模型在测试集上达到96. 3%的整体分类准确率,微震事件与爆破信号的识别率均超过
97%;在多项性能指标上均显著优于SVM、KNN、CNN-BiLSTM 及VGG16 等对比模型。本模型通过有效解决波形混淆
问题,为矿山微震监测系统的智能化升级与地压灾害实时精准预警提供了技术支撑。

关键词: 微震监测 信号分类 Transformer 模型 深度学习 深部矿山

Abstract: Aiming at the problems of low efficiency of manual discrimination and insufficient classification accuracy of
traditional machine learning methods for complex non-stationary signals in microseismic monitoring of deep mines,an automatic
classification model of microseismic signals based on Transformer architecture is proposed. Based on the real mine data,an annotated
data set including microseismic events,blasting vibration and noise was constructed. By extracting the time-frequency
features of the signal and combining the self-attention mechanism of Transformer,the model effectively captures the long-range
dependence and global features in the waveform,significantly improves the classification accuracy,and enhances the identification
ability of the waveform confusion phenomenon,showing good generalization and engineering applicability. The experimental
results show that the model achieves an overall classification accuracy of 96. 3% on the test set,and the recognition rate of microseismic
events and blasting signals exceeds 97%. It is significantly better than SVM,KNN,CNN-BiLSTM and VGG16 in
many performance indicators. This model provides technical support for the intelligent upgrading of mine microseismic monitoring
system and real-time accurate early warning of ground pressure disaster by effectively solving the problem of waveform confusion.

Key words: microseismic monitoring,signal classification,Transformer model,deep learning,deep mine

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