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隧道与地下工程灾害防治  2022, Vol. 4 Issue (3): 1-9    DOI: 10.19952/j.cnki.2096-5052.2022.03.01
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基于机器学习的盾构掘进地表变形预测研究与展望
丁智1,李鑫家2,张霄2
1.浙大城市学院土木工程系, 浙江 杭州 310015;2.浙江大学建筑工程学院, 浙江 杭州 310058
Research and prospect of surface deformation prediction of shield tunneling based on machine learning
DING Zhi1, LI Xinjia2, ZHANG Xiao2
1. Department of Civil Engineering, Zhejiang University City College, Hangzhou 310015, Zhejiang, China;
2. College of Civil Engineering and Architecture, Zhejiang University, Hangzhou 310058, Zhejiang, China
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摘要 为阐明机器学习在盾构掘进地表变形预测中的关键要点,本研究介绍了机器学习的发展背景,并从数据库建立及数据预处理、模型框架构建、模型评价等方面综述了机器学习的工程应用情况。提出目前相关研究存在的不足之处在于缺少专业公共数据库,工程数据质量参差不齐;对于不同地层类型的工程,模型易出现过拟合问题。同时探讨了机器学习在盾构掘进地表变形预测中发展的方向包括算法之间的有效结合可以取长补短;特征选取和超参数调优仍有较大的研究和应用空间。
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丁智
李鑫家
张霄
关键词:  盾构隧道  机器学习  地表变形  预测模型    
Abstract: In order to clarify the key points of machine learning in surface deformation prediction of shield tunneling, the development background of machine learning was introduced, and the engineering application of machine learning was summarized from the aspects of database establishment, data preprocessing, model framework construction and model evaluation. It was pointed out that the shortcomings of the current relevant research were the lack of professional public database and the uneven quality of engineering data; for engineering with different stratum types, the model was prone to over fitting. At the same time, the further development direction of machine learning in shield tunneling surface deformation prediction was discussed, including the effective combination of algorithms could learn from each other; there was still a large research and application space for feature selection and super parameter optimization.
Key words:  shield tunnel    machine learning    surface deformation    prediction model
收稿日期:  2021-10-19      修回日期:  2021-12-16      发布日期:  2022-09-20     
中图分类号:  U456.3  
基金资助: 国家自然科学基金资助项目(52178400);浙江省自然科学基金(重点项目)资助项目(LHZ20E080001);浙江省重点研发计划资助项目(2020C01102)
作者简介:  丁智(1983— ),男,安徽铜陵人,博士,教授,博士生导师,主要研究方向为轨道交通施工及运营对周边环境影响. E-mail:dingz@zucc.edu.cn
引用本文:    
丁智, 李鑫家, 张霄. 基于机器学习的盾构掘进地表变形预测研究与展望[J]. 隧道与地下工程灾害防治, 2022, 4(3): 1-9.
DING Zhi, LI Xinjia, ZHANG Xiao. Research and prospect of surface deformation prediction of shield tunneling based on machine learning. Hazard Control in Tunnelling and Underground Engineering, 2022, 4(3): 1-9.
链接本文:  
http://tunnel.sdujournals.com/CN/Y2022/V4/I3/1
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