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基于梅尔倒谱系数和深度学习的矿山微震信号自动识别分类

薛小兵 张见 王振乾 冯萧 叶光祥 曹世荣 陈青林

矿产保护与利用2025,Vol.45Issue(6):26-36,11.
矿产保护与利用2025,Vol.45Issue(6):26-36,11.DOI:10.13779/j.cnki.issn1001-0076.2025.08.030

基于梅尔倒谱系数和深度学习的矿山微震信号自动识别分类

Automatic Identification and Classification of Mine Microseismic Signals Based on Mel Cepstrum Coefficient and Deep Learning

薛小兵 1张见 2王振乾 2冯萧 1叶光祥 3曹世荣 1陈青林4

作者信息

  • 1. 江西理工大学 应急管理与安全工程学院,江西 赣州 341000||稀有金属资源安全高效开采江西省重点实验室,江西 赣州 341000
  • 2. 安徽铜冠庐江矿业有限公司,安徽 合肥 231500
  • 3. 赣州有色冶金研究所有限公司,江西 赣州 341000
  • 4. 稀有金属资源安全高效开采江西省重点实验室,江西 赣州 341000
  • 折叠

摘要

Abstract

Mine microseismic signals contain a large amount of rock fracture information.How to accurately identify the rock fracture signals in complex signals has always been the key to microseismic monitoring and early warning.Four main types of signals to be identified(rock fracture,blasting,Bolting rigs and electrical noise)in mines in a high noise environment were comprehensively sorted out.The Mel-frequency cepstral coefficient method was used to convert the four types of signals into non-linear spectra on the Mel scale and then into the cepstral domain respectively.Combined with the results obtained by taking the difference in the time domain,they were finally transformed into heat maps in a one-dimensional visual way.Using the data set composed of Mel-frequency cepstral coefficient heat maps,a pre-trained network model was called through the transfer learning method and the training parameters were readjusted to form a new model.Finally,the automatic identification and classification of mine microseismic signals were realized through this model.The real-time microseismic monitoring data of a copper mine in Anhui Province was taken as the data basis for training.For the microseismic signals within the selected time period,they were input into the automatic identification and classification model.The results show that the Mel cepstrupt coefficient heat map is used as the input of the deep learning model to test the data monitored in the actual production process of the mine,and through the comparison of the accuracy and fitting time of the four network models,it is determined that they have high recognition accuracy in the training process of labeled and unlabeled data.As the main identification method for microseismic monitoring data,the accuracy and timeliness of the microseismic signal collected in the subsequent remining activities of the mine can be improved.

关键词

微震信号/梅尔倒谱系数/热力图/深度学习/识别分类

Key words

microseismic signals/Mel-frequency cepstral coefficients/heatmap/deep learning/identification and classification

分类

矿业与冶金

引用本文复制引用

薛小兵,张见,王振乾,冯萧,叶光祥,曹世荣,陈青林..基于梅尔倒谱系数和深度学习的矿山微震信号自动识别分类[J].矿产保护与利用,2025,45(6):26-36,11.

基金项目

江西省教育厅科学技术研究项目(GJJ2200872) (GJJ2200872)

矿产保护与利用

1001-0076

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