Pipe Jacking Performance: Mechanistic Behavior and Maintenance Challenges—An Artificial Intelligence-Based Approach
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Barla, Marco
Cheng, Jason Wen-Chieh
Choo, Chung Siung
Sun, Minmin
Peerun, Mohammud Irfaan
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Ong, Dominic EL
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Abstract
The mechanistic behavior of a tunnel boring machine (TBM) starts drawing great attention from scientists and engineers in recent years because it appears to affect the efficiency of tunnel excavations and project costs. Factors affecting the mechanistic behavior of tunnel boring machine primarily include geology and jamming phenomena. The following section details how the two factors influence the mechanistic behavior of TBM.
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Sustainable Pipe Jacking Technology in the Urban Environment: Recent Advances and Innovations
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Civil geotechnical engineering
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Ong, DEL; Barla, M; Cheng, JW-C; Choo, CS; Sun, M; Peerun, MI, Pipe Jacking Performance: Mechanistic Behavior and Maintenance Challenges—An Artificial Intelligence-Based Approach, Sustainable Pipe Jacking Technology in the Urban Environment: Recent Advances and Innovations, 2022, pp. 239-276