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Slope stability prediction using integrated metaheuristic and machine learning approaches: A comparative study

机译:综合元启发式和机器学习方法的边坡稳定性预测:一项比较研究

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摘要

Advances in dataset collection and machine learning (ML) algorithms are important contributors to the stability analysis in industrial engineering, especially to slope stability analysis. In the past decade, various ML algorithms have been used to estimate slope stability on different datasets, and yet a comprehensive comparative study of the most advanced ML algorithms is lacking. In this article, we proposed and compared six integrated artificial intelligence (AI) approaches for slope stability prediction based on metaheuristic and ML algorithms. Six ML algorithms, including logistic regression, decision tree, random forest, gradient boosting machine, support vector machine, and multilayer perceptron neural network, were used for the relationship modelling and firefly algorithm (FA) was used for the hyper-parameters tuning. Three performance measures, namely confusion matrices, the receiver operating characteristic (ROC) curve, and the area under the ROC curve (AUC), were used to evaluate the predictive performance of AI approaches. We first demonstrated that integrated AI approaches had great potential to predict slope stability and FA was efficient in the hyper-parameter tunning. The AUC values of all AI approaches on the testing set were between 0.822 and 0.967, denoting excellent performance was achieved. The optimum support vector machine model with the Youden’s cutoff was recommended in terms of the AUC value, the accuracy, and the true negative rate. We also investigated the relative importance of influencing variables and found that cohesion was the most influential variable for slope stability with an importance score of 0.310. This research provides useful recommendations for future slope stability analysis and can be used for a wider application in the rest of industrial engineering.
机译:数据集收集和机器学习(ML)算法的进步对工业工程的稳定性分析,特别是边坡稳定性分析,具有重要的贡献。在过去的十年中,已使用各种ML算法来估计不同数据集上的边坡稳定性,但仍缺乏对最先进的ML算法的全面比较研究。在本文中,我们提出并比较了基于元启发式算法和ML算法的六种集成人工智能(AI)方法用于边坡稳定性预测。六种机器学习算法(包括逻辑回归,决策树,随机森林,梯度提升机,支持向量机和多层感知器神经网络)用于关系建模,萤火虫算法(FA)用于超参数调整。三种性能度量,即混淆矩阵,接收器工作特性(ROC)曲线和ROC曲线下面积(AUC),用于评估AI方法的预测性能。我们首先证明了集成的AI方法具有预测坡度稳定性的巨大潜力,而FA在超参数调整中是有效的。测试集上所有AI方法的AUC值都在0.822至0.967之间,表示获得了出色的性能。根据AUC值,准确度和真实负率,推荐了具有Youden截止值的最佳支持向量机模型。我们还研究了影响变量的相对重要性,发现内聚力对边坡稳定性的影响最大,重要性得分为0.310。这项研究为将来的边坡稳定性分析提供了有用的建议,并且可以在其他工业工程中得到更广泛的应用。

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