Feedback on a shared big dataset for intelligent TBM Part I: Feature extraction and machine learning methods

This review summarizes the research outcomes and findings documented in 45 journal papers using a shared tunnel boring machine (TBM) dataset for performance prediction and boring efficiency optimization using machine learning methods. The big dataset was collected during the Yinsong water diversion...

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Bibliographic Details
Published inUnderground space (Beijing) Vol. 11; pp. 1 - 25
Main Authors Li, Jian-Bin, Chen, Zu-Yu, Li, Xu, Jing, Liu-Jie, Zhangf, Yun-Pei, Xiao, Hao-Han, Wang, Shuang-Jing, Yang, Wen-Kun, Wu, Lei-Jie, Li, Peng-Yu, Li, Hai-Bo, Yao, Min, Fan, Li-Tao
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.08.2023
KeAi Communications Co., Ltd
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Summary:This review summarizes the research outcomes and findings documented in 45 journal papers using a shared tunnel boring machine (TBM) dataset for performance prediction and boring efficiency optimization using machine learning methods. The big dataset was collected during the Yinsong water diversion project construction in China, covering the tunnel excavation of a 20 km-section with 199 items of monitoring metrics taken with an interval of one second. The research papers were the result of a call for contributions during a TBM machine learning contest in 2019 and covered a variety of topics related to the intelligent construction of TBM. This review comprises two parts. Part I is concerned with the data processing, feature extraction, and machine learning methods applied by the contributors. The review finds that the data-driven and knowledge-driven approaches in extracting important features applied by various authors are diversified, requiring further studies to achieve commonly accepted criteria. The techniques for cleaning and amending the raw data adopted by the contributors were summarized, indicating some highlights such as the importance of sufficiently high frequency of data acquisition (higher than 1 second), classification and standardization for the data preprocessing process, and the appropriate selections of features in a boring cycle. The review finds that both supervised and unsupervised machine learning methods have been utilized by various researchers. The ensemble and deep learning methods have found wide applications. Part I highlights the important features of the individual methods applied by the contributors, including the structures of the algorithm, selection of hyperparameters, and model validation approaches.
ISSN:2467-9674
2467-9674
DOI:10.1016/j.undsp.2023.01.001