Novel approach to predict the spatial distributions of hydraulic conductivity of rock mass using convolutional neural networks

IF 1.3 4区 工程技术 Q3 ENGINEERING, GEOLOGICAL Quarterly Journal of Engineering Geology and Hydrogeology Pub Date : 2022-09-06 DOI:10.1144/qjegh2021-169
M. He, Jiapei Zhou, Panfeng Li, B. Yang, Haoteng Wang, Jing Wang
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引用次数: 3

Abstract

Characterizing the spatial distributions of hydraulic conductivity of rock mass is important in geoscience and engineering disciplines. In this paper, the architecture of CNN is proposed to predict the spatial distributions of hydraulic conductivity based on limited geologic factors. The performance of CNN model is evaluated using the new data of hydraulic conductivity. A comparative study with the empirical method is performed to validate the reliability of CNN model. The effect of weathering and unloading on the spatial distributions of hydraulic conductivity is studied using the CNN model. The result shows that the hydraulic conductivity predicted by CNN model is within the error range of 5% compared to the Lugeon borehole tests. The predictive accuracy of the CNN method is higher than the estimations of the empirical relations. The spatial distributions of hydraulic conductivity versus depth can be divided into three stages. At first stage, the hydraulic conductivity is slightly reduced with the increasing of depth. Increasing to the depth range of 300-600 m (second stage), the hydraulic conductivity is slightly reduced as a function of lower weathering degree. At last stage, the hydraulic conductivity is not changed by the weathering, and converge to a constant with the depth increasing.
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利用卷积神经网络预测岩体水力导率空间分布的新方法
表征岩体水力导率的空间分布在地学和工程学科中具有重要意义。本文提出了基于有限地质因素的CNN结构来预测水导率的空间分布。利用新的水力导率数据对CNN模型的性能进行了评价。通过与经验方法的对比研究,验证了CNN模型的可靠性。采用CNN模型研究了风化和卸载对水导率空间分布的影响。结果表明,CNN模型预测的导水率与Lugeon井眼试验误差在5%以内。CNN方法的预测精度高于经验关系的估计。水导率随深度的空间分布可分为三个阶段。在第一阶段,随着深度的增加,导水率略有降低。随着深度增加到300 ~ 600 m(第二阶段),随着风化程度的降低,导水率略有降低。在最后阶段,导电性不受风化作用的影响,并随着深度的增加收敛为一个常数。
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来源期刊
CiteScore
3.40
自引率
14.30%
发文量
66
审稿时长
6 months
期刊介绍: Quarterly Journal of Engineering Geology and Hydrogeology is owned by the Geological Society of London and published by the Geological Society Publishing House. Quarterly Journal of Engineering Geology & Hydrogeology (QJEGH) is an established peer reviewed international journal featuring papers on geology as applied to civil engineering mining practice and water resources. Papers are invited from, and about, all areas of the world on engineering geology and hydrogeology topics. This includes but is not limited to: applied geophysics, engineering geomorphology, environmental geology, hydrogeology, groundwater quality, ground source heat, contaminated land, waste management, land use planning, geotechnics, rock mechanics, geomaterials and geological hazards. The journal publishes the prestigious Glossop and Ineson lectures, research papers, case studies, review articles, technical notes, photographic features, thematic sets, discussion papers, editorial opinion and book reviews.
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