张庆贺, 陈晨, 袁亮, 张通, 方致远, 李翎, 蒋博文. 基于DIC和YOLO算法的复杂裂隙岩石破坏过程动态裂隙早期智能识别[J]. 煤炭学报, 2022, 47(3): 1208-1219.
引用本文: 张庆贺, 陈晨, 袁亮, 张通, 方致远, 李翎, 蒋博文. 基于DIC和YOLO算法的复杂裂隙岩石破坏过程动态裂隙早期智能识别[J]. 煤炭学报, 2022, 47(3): 1208-1219.
ZHANG Qing-he, CHEN Chen, YUAN Liang, ZHANG Tong, FANG Zhi-yuan, LI Ling, JIANG Bo-wen. Early and intelligent recognition of dynamic cracks during damage of complex fractured rock masses based on DIC and YOLO algorithms[J]. Journal of China Coal Society, 2022, 47(3): 1208-1219.
Citation: ZHANG Qing-he, CHEN Chen, YUAN Liang, ZHANG Tong, FANG Zhi-yuan, LI Ling, JIANG Bo-wen. Early and intelligent recognition of dynamic cracks during damage of complex fractured rock masses based on DIC and YOLO algorithms[J]. Journal of China Coal Society, 2022, 47(3): 1208-1219.

基于DIC和YOLO算法的复杂裂隙岩石破坏过程动态裂隙早期智能识别

Early and intelligent recognition of dynamic cracks during damage of complex fractured rock masses based on DIC and YOLO algorithms

  • 摘要: 为了定量研究复杂裂隙岩石变形破坏规律和裂隙扩展特征,利用裂隙网络模型3D打印技术制作了含20条随机节理的类岩石试件,利用数字图像相关方法(DIC)研究了试件破坏过程中应变场演化过程,并分析了每一条裂隙的扩展过程,探讨了动态裂隙对试件整体强度的影响。在此基础上,基于YOLOv5深度学习网络模型,结合DIC云图,提出了一种智能精准识别动态裂隙的算法。研究表明:含复杂裂隙试件破坏过程中往往伴随多条裂隙同时扩展和贯通,试件整体强度与动态裂隙扩展具有重要关系,统计动态裂隙的扩展情况可以半定量地判定试件整体稳定性。在每条原生裂隙起裂前,总是首先出现应变集中区域,并且应变集中区域具有前兆性,预示着新裂纹的萌生。原生裂隙的动态演化基本可以分为原生裂隙、应变集中区、新生裂纹和交叉裂隙4种类型,其中,新生裂纹和交叉裂隙对试件整体强度影响最大。提出的智能精准识别动态裂隙算法的精确率、召回率和平均精度均值(PmA)都在80%以上,且PmA最高达到了91%,GIoU损失参数迭代训练后达到0.01,4种类型裂隙相对应的F1分别为83%,89%,87%和85%,4种类型裂隙的总体识别精度可达86%。说明该方法在复杂裂隙岩体裂纹识别、定位分类是快速精确有效的。试件在受载时,智能识别算法重点识别并统计新生裂纹和交叉裂隙数量,当新生裂隙和交叉裂隙数量较多时,试件即将破坏,可提前进行预警。

     

    Abstract: In order to quantitatively study the deformation and failure laws of complex fractured rocks and the characteristics of fracture expansion, the fracture network model 3 D printing technology was used to produce rock-like specimens with 20 random joints, and the digital image correlation method(DIC)was used to study the strain field during the failure process of the specimens. The evolution process is analyzed, and the expansion process of each crack is analyzed, and the influence of dynamic cracks on the overall strength of the specimen is discussed. Based on the YOLOv5 deep learning network model, combined with the DIC cloud image, an algorithm for intelligent and accurate identification of dynamic cracks is proposed. Studies have shown that the failure process of specimens with complex cracks is often accompanied by the expansion and penetration of multiple cracks. The overall strength of the specimens has an important relationship with the expansion of dynamic cracks. Statistics on the expansion of dynamic cracks can determine the overall strength of the specimens semi-quantitatively. Before each original crack starts to crack, the strain-concentrated area always appears first, and the strain-concentrated area has precursory properties, which indicates the initiation of new cracks. The dynamic evolution of primary cracks can be basically divided into four types: primary cracks, strain concentration zone, new cracks and cross cracks. Among them, cross cracks have the greatest impact on the overall strength of the specimen. The accuracy, recall, and PmA of the proposed intelligent and accurate identification of dynamic fissure algorithms are all above 80%,and the maximum average accuracy mean(PmA)is 91%. The GIoU loss parameter reaches 0.01 after iterative training. The F1 values corresponding to the four types of fissures are respectively 83%,89%,87% and 85%,the overall recognition accuracy of the four types of cracks can reach 86%. It shows that this method is fast, accurate and effective in the identification, location and classification of cracks in complex fractured rock masses.

     

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