Application of tree-based methods in predicting the surface settlement arising from the tunnel excavation with large mix-shield

IF 3.3 2区 工程技术 Q2 ENGINEERING, GEOLOGICAL
Chongwei Huang , Haohe Du , Lin Li , Jing Ni , Yu Sun
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引用次数: 0

Abstract

Surface settlement due to tunnel excavation is affected by several factors. However, no explicit mapping correlation exists between surface settlement and the main influencing factors. In this study, three tree-based methodologies, including classification and regression tree (CART), random forest (RF), and gradient boosting decision tree (GBRT), were implemented to predict the tunneling-induced surface settlement of the South Hong-Mei Road tunnel in Shanghai, where a large mix-shield was used. Thirteen influencing factors within three categories (tunnel geometry, geological conditions, and shield operation factors) were employed as input variables. Results show that the ensemble methods (RF and GBDT) provide superior performance over the single-tree model (CART). Moreover, GBDT has the highest level of prediction accuracy among the three statistical learning methods. The importance of influencing factors on the tunneling-induced surface settlement was probed. The tunnel geometry had the greatest effect on surface settlement. It is followed by the influencing factors in shield operation factors. Moreover, geological conditions were not as influential as the other influencing factors. The outcomes of this study may provide a reference for evaluating tunneling-induced surface settlement in other similar tunnel projects.

基于树的方法在大型混合盾构隧道开挖地表沉降预测中的应用
隧道开挖引起的地表沉降受多种因素的影响。地表沉降与主要影响因素之间不存在显着的映射相关性。采用分类回归树(CART)、随机森林(RF)和梯度增强决策树(GBRT) 3种基于树的方法,对上海红梅南路隧道掘进引起的地表沉降进行了预测。将隧道几何形状、地质条件和盾构运行因素三大类13个影响因素作为输入变量。结果表明,集成方法(RF和GBDT)比单树模型(CART)具有更好的性能。此外,在三种统计学习方法中,GBDT的预测准确率最高。探讨了影响隧道地表沉降因素的重要性。隧道几何形状对地表沉降影响最大。其次是盾构运行因素中的影响因素。此外,地质条件的影响不如其他因素。研究结果可为其他类似隧道工程中评价隧道引起的地表沉降提供参考。
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来源期刊
Soils and Foundations
Soils and Foundations 工程技术-地球科学综合
CiteScore
6.40
自引率
8.10%
发文量
99
审稿时长
5 months
期刊介绍: Soils and Foundations is one of the leading journals in the field of soil mechanics and geotechnical engineering. It is the official journal of the Japanese Geotechnical Society (JGS)., The journal publishes a variety of original research paper, technical reports, technical notes, as well as the state-of-the-art reports upon invitation by the Editor, in the fields of soil and rock mechanics, geotechnical engineering, and environmental geotechnics. Since the publication of Volume 1, No.1 issue in June 1960, Soils and Foundations will celebrate the 60th anniversary in the year of 2020. Soils and Foundations welcomes theoretical as well as practical work associated with the aforementioned field(s). Case studies that describe the original and interdisciplinary work applicable to geotechnical engineering are particularly encouraged. Discussions to each of the published articles are also welcomed in order to provide an avenue in which opinions of peers may be fed back or exchanged. In providing latest expertise on a specific topic, one issue out of six per year on average was allocated to include selected papers from the International Symposia which were held in Japan as well as overseas.
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