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现代矿业 ›› 2025, Vol. 41 ›› Issue (08): 226-229,238.

• 实用技术 • 上一篇    下一篇

煤矿综采工作面小断层成像与识别方法研究

刘 硕   

  1. 中煤科工西安研究院(集团)有限公司
  • 出版日期:2025-08-25 发布日期:2025-09-29

Research on Imaging and Identification Methods for Minor Faults in Fully Mechanized Coal Mining Faces

  1. Xi'an Research Institute Co. Ltd.,China Coal Technology and Engineering Group
  • Online:2025-08-25 Published:2025-09-29

摘要: 卷积神经网络技术被应用于煤田地震小断层识别,针对煤矿采掘过程地质构造逐步揭 露的特性,利用动态更新的训练样本提升模型精度。研究构建端到端三维全卷积网络,采用原始地 震数据、希尔伯特变换虚部及瞬时相位正弦/余弦四通道输入,通过可学习步进卷积层替代传统池化 操作,保留细节特征,并引入指数线性单元激活函数,增强非线性映射能力。在 110905 工作面验证 中,该方法解释 3 处断层区域,揭露断层 29 条,其中落差大于 1 m 断层有 11 条,清晰识别出 DF6 与 DF12主断层及其伴生构造,与回采揭露断层位置高度吻合。结果表明,该技术显著提升小断层识别 精度,但在复杂地质构造区域,仍需进一步优化网络结构与多源数据融合策略。

关键词: 卷积神经网络, 综采工作面, 三维地震, 小断层识别

Abstract: Convolutional neural network technology is applied to the identification of small faults in coalfield earthquakes. In view of the characteristics of geological structure gradually revealed in the mining process of coal mines,the accuracy of the model is improved by using dynamically updated training sam‐ ples. The end-to-end three-dimensional fully convolutional network is studied and constructed. The origi‐ nal seismic data,the imaginary part of Hilbert transform and the instantaneous phase sine or cosine four�channel input are used. The learning step convolution layer is used to replace the traditional pooling opera‐ tion to retain the detailed features,and the exponential linear unit activation function is introduced to en‐ hance the nonlinear mapping ability. In the verification of the 110905 working face,the three fault areas ex‐ plained by this method were verified by mining,and 29 faults were exposed,including 11 faults with a drop greater than 1 m. The main faults of DF6 and DF12 and their associated structures were clearly identified, which were highly consistent with the location of the exposed faults. The results show that this technology sig‐ nificantly improves the accuracy of small fault identification,but in complex geological structure areas,it is still necessary to further optimize the network structure and multi-source data fusion strategy.

Key words: convolutional neural network, comprehensive working face, three-dimensional seismic, minor fault identification