基于改进Mask R-CNN的钻孔岩心RQD智能识别计算框架

    DRILL CORE RQD INTELLIGENT RECOGNITION AND COMPUTATION FRAMEWORK BASED ON IMPROVED MASK R-CNN

    • 摘要: 岩石质量指标(RQD)是地质业界中常用的岩体质量分类和评价指标。人工获取RQD繁琐且受主观意识影响。提出了一个RQD智能识别计算框架,采用改进的Mask R-CNN二阶段实例分割深度学习网络自动化计算RQD。对Mask R-CNN进行改进,包括添加聚类算法对数据集进行先验聚类、替换骨干网络为ResNext,并添加路径聚合网络,消融实验表明改进有效且可靠。框架网络经过小样本数据集的迁移学习获得了较好的特征提取能力。将RQD智能识别与计算任务划分为岩心盒分割、单排岩心分割以及岩心段分割3个子任务,从钻孔岩心图像中分别提取岩心盒、单排岩心以及岩心段信息,实现自动化RQD计算。对重庆市涪陵区石沱镇石沱长江大桥钻孔进行自动化RQD计算,结果显示平均绝对误差(MAE)值和均方根误差(RMSE)值分别为3.497、4.654,表明框架具有较好的准确性、高效性和泛化能力。讨论了影响框架预测结果的因素,并探讨了进一步研究的可能方向。

       

      Abstract: Rock Quality Designation (RQD) is a commonly used indicator for rock mass classification and evaluation in the geological industry. Manual acquisition of RQD is cumbersome and subjective. A framework for intelligent RQD recognition and computation was proposed, utilizing an improved Mask R-CNN two-stage instance segmentation deep learning network for automated RQD computation. Improvements to Mask R-CNN included adding clustering algorithms for prior clustering of the dataset, replacing the backbone network with ResNext, and adding path aggregation networks. Ablation experiments indicated the effectiveness and reliability of the improvements. The framework obtained good feature extraction capabilities through transfer learning on a small sample dataset. The intelligent recognition and computation tasks for RQD were divided into three subtasks: core box segmentation, single row core segmentation, and core segment segmentation, extracting core box, single row core, and core segment information from borehole core images, thereby achieving automated RQD computation. Automated RQD computations were performed on the boreholes of the Shituo Yangtze River Bridge in Shituo Town, Fuling District, Chongqing. The results showed that the Mean Absolute Error (MAE) and Root Mean Square Error (RMSE) were 3.497 and 4.654,respectively, indicating the framework's good accuracy, efficiency, and generalization ability. Factors affecting the framework's predictive results were discussed, and possible directions for further research were explored.

       

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