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- Title
Prediction of Change Rate of Settlement for Piled Raft Due to Adjacent Tunneling Using Machine Learning.
- Authors
Oh, Dong-Wook; Kong, Suk-Min; Lee, Yong-Joo; Park, Heon-Joon
- Abstract
For tunneling in urban areas, understanding the interaction and behavior of tunnels and the foundation of adjacent structures is very important, and various studies have been conducted. Superstructures in urban areas are designed and constructed with piled rafts, which are more effective than the conventional piled foundation. However, the settlement of a piled raft induced by tunneling mostly focuses on raft settlement. In this study, therefore, raft and pile settlements were obtained through 3D numerical analysis, and the change rate of settlement along the pile length was calculated by linear assumption. Machine learning was utilized to develop prediction models for raft and pile settlement and change rate of settlement along the pile length due to tunneling. In addition, raft settlement in the laboratory model test was used for the verification of the prediction model of raft settlement, derived through machine learning. As a result, the change rate of settlement along the pile length was between 0.64 and −0.71. In addition, among features, horizontal offset pile tunnel had the greatest influence, and pile diameter and number had relatively little influence.
- Subjects
MACHINE learning; TUNNEL design &; construction; TUNNELS; NUMERICAL analysis; CITIES &; towns; BORED piles; TUNNEL ventilation; BUILDING foundations
- Publication
Applied Sciences (2076-3417), 2021, Vol 11, Issue 13, p6009
- ISSN
2076-3417
- Publication type
Article
- DOI
10.3390/app11136009