用于兵工桩墙挖掘最大位移预测的机器学习算法性能比较

IF 8.2 1区 工程技术 Q1 ENGINEERING, CIVIL Underground Space Pub Date : 2024-01-09 DOI:10.1016/j.undsp.2023.09.013
Danial Sheini Dashtgoli , Mohammad Hossein Dehnad , Seyed Ahmad Mobinipour , Michela Giustiniani
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引用次数: 0

摘要

在城市基础设施以及供水和污水处理设施的建设中,一种常见的挖掘方法是通过兵工桩墙进行挖掘。桩墙的最大侧向位移是控制开挖及其邻近结构稳定性的重要变量之一。目前,机器学习方法因其成本低、计算速度快而被广泛应用于工程科学领域。本文利用三种基于兵工桩墙开挖方法的智能机器学习算法,即极端梯度提升算法(XGBoost)、最小平方支持向量回归器(LS-SVR)和随机森林算法(RF)来预测桩墙的最大侧向位移。结果表明,所实施的 XGBoost 模型性能优异,可预测桩墙的最大侧向位移,平均绝对误差为 0.1669,最高决定系数为 0.9991,最小均方根误差为 0.3544。虽然 LS-SVR 模型和 RF 模型的精确度低于 XGBoost 模型,但它们对数值结果的桩墙最大侧向位移提供了良好的预测结果。此外,还进行了敏感性分析,以确定 XGBoost 模型中最有效的参数。该分析表明,土体弹性模量和开挖高度对桩墙最大侧向位移的预测有很大影响。
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Performance comparison of machine learning algorithms for maximum displacement prediction in soldier pile wall excavation

One of the common excavation methods in the construction of urban infrastructures as well as water and wastewater facilities is the excavation through soldier pile walls. The maximum lateral displacement of pile wall is one of the important variables in controlling the stability of the excavation and its adjacent structures. Nowadays, the application of machine learning methods is widely used in engineering sciences due to its low cost and high speed of calculation. This paper utilized three intelligent machine learning algorithms based on the excavation method through soldier pile walls, namely eXtreme gradient boosting (XGBoost), least square support vector regressor (LS-SVR), and random forest (RF), to predict maximum lateral displacement of pile walls. The results showed that the implemented XGBoost model performed excellently and could make predictions for maximum lateral displacement of pile walls with the mean absolute error of 0.1669, the highest coefficient of determination 0.9991, and the lowest root mean square error 0.3544. Although the LS-SVR, and RF models were less accurate than the XGBoost model, they provided good prediction results of maximum lateral displacement of pile walls for numerical outcomes. Furthermore, a sensitivity analysis was performed to determine the most effective parameters in the XGBoost model. This analysis showed that soil elastic modulus and excavation height had a strong influence on of maximum lateral displacement of pile wall prediction.

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来源期刊
Underground Space
Underground Space ENGINEERING, CIVIL-
CiteScore
10.20
自引率
14.10%
发文量
71
审稿时长
63 days
期刊介绍: Underground Space is an open access international journal without article processing charges (APC) committed to serving as a scientific forum for researchers and practitioners in the field of underground engineering. The journal welcomes manuscripts that deal with original theories, methods, technologies, and important applications throughout the life-cycle of underground projects, including planning, design, operation and maintenance, disaster prevention, and demolition. The journal is particularly interested in manuscripts related to the latest development of smart underground engineering from the perspectives of resilience, resources saving, environmental friendliness, humanity, and artificial intelligence. The manuscripts are expected to have significant innovation and potential impact in the field of underground engineering, and should have clear association with or application in underground projects.
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