Research on the classification of complex noise-mixed microseismic events based on machine vision

GEOPHYSICS Pub Date : 2024-07-09 DOI:10.1190/geo2023-0395.1
Zhen Zhang, Yang Liu, Yicheng Ye, Nan Yao, Nanyan Hu, Binyu Luo, Fei Fu, Xiaobing Luo, Jie Feng
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Abstract

Event classification is important for accurately monitoring and warning against rockburst hazards using microseismic technology. Here, we propose an automatic classification method for microseismic events based on machine vision. The method uses Histogram of Oriented Gradient (HOG) integrated with Support Vector Machine (SVM) as the core model (HOG-SVM, HSVM) to classify microseismic events. First, the method uses as input spectrograms generated from microseismic event signals recorded in the field. Next, the HOG method is used to accurately extract the spectral feature information of the useful signals of microseismic events under the interference of noisy signal. Finally, the extracted feature data is used to train SVM, after the training is completed, the SVM is used to classify the microseismic events. The performance of the method for categorizing microseismic events was tested using multiple independent test sets built from data monitored in the field of a mine in Shandong Province. The results show that the method can effectively extract the spectral feature information of useful signals of microseismic events contaminated with noise, with good classification accuracy and robustness to noise. It classifies microseismic events with high accuracy and efficiency compared to well-performing classification methods based on seismic source parameters and typical depth models. The method can provide technical support for the effective classification of microseismic events in complex construction sites, especially in noisy deep underground construction environments.
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基于机器视觉的复杂噪声混合微地震事件分类研究
事件分类对于利用微地震技术准确监测和预警岩爆危害非常重要。在此,我们提出了一种基于机器视觉的微地震事件自动分类方法。该方法以支持向量机(SVM)为核心模型(HOG-SVM,HSVM),使用方向梯度直方图(HOG)对微地震事件进行分类。首先,该方法使用现场记录的微地震事件信号生成的频谱图作为输入。然后,使用 HOG 方法在噪声信号干扰下准确提取微地震事件有用信号的频谱特征信息。最后,利用提取的特征数据训练 SVM,训练完成后,利用 SVM 对微地震事件进行分类。利用山东省某矿区的现场监测数据建立的多个独立测试集测试了该方法在微震事件分类方面的性能。结果表明,该方法能有效提取受噪声污染的微震事件有用信号的频谱特征信息,具有良好的分类精度和对噪声的鲁棒性。与基于震源参数和典型震源深度模型的分类方法相比,该方法对微地震事件的分类精度高、效率高。该方法可为在复杂建筑工地,特别是在有噪声的深层地下施工环境中有效进行微震事件分类提供技术支持。
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