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应用地球物理  2025, Vol. 22 Issue (4): 1220-1232    DOI: 10.1007/s11770?024-1058-y
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基于卷积神经网络和注意力机制的微震事件识别与迁移学习
金姝,张世超,高雅,俞本立,甄胜来,*
1. 安徽大学光电信息获取与处理教育部重点实验室,中国合肥,230601;2. 安徽省信息材料与智能传感实验室,安徽大学,中国合肥,230601;3. 安徽理工大学公共安全与应急管理学院,中国淮南,232000;4. 安徽至博光电科技股份有限公司,中国合肥,230601
Microseismic Event Recognition and Transfer Learning Based on Convolutional Neural Network and Attention Mechanisms
Jin Shu, Zhang Shi-chao, Gao Ya, Yu Ben-li, Zhen Sheng-lai*
1. Information Materials and Intelligent Sensing Laboratory of Anhui Province, Anhui University, Hefei, 230601, China 2. Key Laboratory of Opto-Electronic Information Acquisition and Manipulation, Ministry of Education, Anhui University, Hefei, 230601, China 3. School of Public Safety and Emergency Management, Anhui University of Science and Technology, Huainan, 232000, China 4. IDETECK CO., LTD., Chuangxin Avenue, Hefei 230601, Anhui, China
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摘要 微震监测技术被广泛应用于隧道和煤矿的安全生产。由于工程环境的复杂性,采集的数据中包含大量的噪声。人工分类这些数据不仅耗时耗力,效率低且主观性较强。因此,实现对微震数据的自动多分类一直是巨大的挑战。在本研究中,将改进的VGG网络与卷积注意力机制模块 (CBAM)相结合,构建了一种新的微震识别模型CNN_BAM来自动分类识别微震事件。从汉江至渭河调水工程(HW)收集的数据集对网络模型进行训练和测试。实验结果表明,CNN_BAM模型具有优秀的特征提取能力,识别准确率达到了99.29%,在稳定性和准确性方面明显优于其他方法。此外,我们还对该网络进行了微调,并将其成功应用到潘二矿项目 (PJ-2) 中。进一步的验证了该网络具有可靠的泛化性能,有着广阔的应用前景。
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关键词微震   卷积神经网络   多重分类   注意机制   迁移学习     
Abstract: Microseismic monitoring technology is widely used in tunnel and coal mine safety production. For signals generated by ultra-weak microseismic events, traditional sensors encounter limitations in terms of detection sensitivity. Given the complex engineering environment, automatic multi-classification of microseismic data is highly required. In this study, we use acceleration sensors to collect signals and combine the improved Visual Geometry Group with a convolutional block attention module to obtain a new network structure, termed CNN_BAM, for automatic classification and identification of microseismic events. We use the dataset collected from the Hanjiang-to-Weihe River Diversion Project to train and validate the network model. Results show that the CNN_BAM model exhibits good feature extraction ability, achieving a recognition accuracy of 99.29%, surpassing all its counterparts. The stability and accuracy of the classification algorithm improve remarkably. In addition, through fine-tuning and migration to the Pan II Mine Project, the network demonstrates reliable generalization performance. This outcome reflects its adaptability across diff erent projects and promising application prospects.
Key wordsMicroseismic    Convolutional Neural Networks    Multi-classification    Attentional mechanism    Transfer learning   
收稿日期: 2023-08-13;
基金资助:This work was supported by the Key Research a n d Development Plan of Anhui Province (202104a05020059) and the Excellent Scientific Research and Innovation Team of Anhui Province (2022AH010003). Partial financial support from Hefei Comprehensive National Science Center is highly appreciated.
通讯作者: 甄胜来(Email: slzhen@ahu.edu.cn).     E-mail: slzhen@ahu.edu.cn
作者简介: Shu Jin is currently working toward her MS degree in optical engineering in the School of Physics and optoelectronic engineering, Anhui University, Hefei, China. She is a master’s candidate directed by Prof. Shenglai Zhen.
引用本文:   
. 基于卷积神经网络和注意力机制的微震事件识别与迁移学习[J]. 应用地球物理, 2025, 22(4): 1220-1232.
. Microseismic Event Recognition and Transfer Learning Based on Convolutional Neural Network and Attention Mechanisms[J]. APPLIED GEOPHYSICS, 2025, 22(4): 1220-1232.
 
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