Predicting the Stability of Rock Slopes in the Presence of Diverse Joint Networks and External Factors Using Machine Learning Algorithms

IF 1.5 4区 工程技术 Q3 METALLURGY & METALLURGICAL ENGINEERING Mining, Metallurgy & Exploration Pub Date : 2024-08-19 DOI:10.1007/s42461-024-01060-9
Sudhir Kumar Singh, Subodh Kumar, Debashish Chakravarty
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Abstract

The presence of joints in rocks significantly impacts the mechanical behavior and stability of a slope. A better comprehension of the relationship between jointed rock masses and slope stability has been made possible by recent advances in machine learning algorithms and numerical modelling. The purpose of this research is to predict the stability of slopes in the presence of different types of joints (parallel deterministic, cross jointed, Baecher, Veneziano, and Voronoi) with the help of classification-based machine learning algorithms. In order to achieve this goal, 40,290 different cases have been utilized, following numerical simulation using shear strength reduction (SSR) technique in RS2. Geomechanical properties, parameters defining slope geometry, structural properties of joints including properties of filling materials, and the influence of certain external factors have been considered. For these datasets, classification algorithms such as random forest, k-nearest neighbor, support vector machine, logistic regression, decision tree, and Naive Bayes have been utilized. Additionally, the synthetic minority oversampling technique (SMOTE) has been implemented in order to address imbalanced class problems. The results exhibit an encouraging level of accuracy, with random forest and decision tree both achieving 0.98 as an overall accuracy.

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利用机器学习算法预测存在不同连接网络和外部因素的岩石斜坡的稳定性
岩石中存在的节理会对斜坡的机械行为和稳定性产生重大影响。近年来,机器学习算法和数值建模技术的进步使人们能够更好地理解节理岩体与边坡稳定性之间的关系。本研究的目的是在基于分类的机器学习算法的帮助下,预测存在不同类型节理(平行确定性节理、交叉节理、Baecher 节理、Veneziano 节理和 Voronoi 节理)时斜坡的稳定性。为了实现这一目标,在 RS2 中使用剪切强度降低(SSR)技术进行数值模拟后,利用了 40,290 个不同的案例。其中考虑了地质力学特性、定义斜坡几何形状的参数、接缝的结构特性(包括填充材料的特性)以及某些外部因素的影响。对于这些数据集,采用了随机森林、k-近邻、支持向量机、逻辑回归、决策树和奈维贝叶斯等分类算法。此外,还采用了合成少数超采样技术(SMOTE)来解决不平衡类问题。结果表明,随机森林和决策树的总体准确率都达到了 0.98,准确率水平令人鼓舞。
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来源期刊
Mining, Metallurgy & Exploration
Mining, Metallurgy & Exploration Materials Science-Materials Chemistry
CiteScore
3.50
自引率
10.50%
发文量
177
期刊介绍: The aim of this international peer-reviewed journal of the Society for Mining, Metallurgy & Exploration (SME) is to provide a broad-based forum for the exchange of real-world and theoretical knowledge from academia, government and industry that is pertinent to mining, mineral/metallurgical processing, exploration and other fields served by the Society. The journal publishes high-quality original research publications, in-depth special review articles, reviews of state-of-the-art and innovative technologies and industry methodologies, communications of work of topical and emerging interest, and other works that enhance understanding on both the fundamental and practical levels.
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