Geomechanics and Engineering A
Volume 38, Number 5, 2024, pages 517-528
DOI: 10.12989/gae.2024.38.5.517
Investigation of pile group response to adjacent twin tunnel excavation utilizing machine learning
Su-Bin Kim, Dong-Wook Oh, Hyeon-Jun Cho and Yong-Joo Lee
Abstract
For numerous tunnelling projects implemented in urban areas due to limited space, it is crucial to take into account
the interaction between the foundation, ground, and tunnel. In predicting the deformation of piled foundations and the ground
during twin tunnel excavation, it is essential to consider various factors. Therefore, this study derived a prediction model for pile
group settlement using machine learning to analyze the importance of various factors that determine the settlement of piled
foundations during twin tunnelling. Laboratory model tests and numerical analysis were utilized as input data for machine
learning. The influence of each independent variable on the prediction model was analyzed. Machine learning techniques such
as data preprocessing, feature engineering, and hyperparameter tuning were used to improve the performance of the prediction
model. Machine learning models, employing Random Forest (RF), eXtreme Gradient Boosting (XGB),
and Light Gradient Boosting Machine (LightGBM, LGB) algorithms, demonstrate enhanced performance after hyperparameter
tuning, particularly with LGB achieving an R2 of 0.9782 and RMSE value of 0.0314. The feature importance in the prediction
models was analyzed and PN was the highest at 65.04% for RF, 64.81% for XGB, and PCTC (distance between the center of piles)
was the highest at 31.32% for LGB. SHAP was utilized for analyzing the impact of each variable. PN (the number of piles)
consistently exerted the most influence on the prediction of pile group settlement across all models. The results from both
laboratory model tests and numerical analysis revealed a reduction in ground displacement with varying pillar spacing in twin
tunnels. However, upon further investigation through machine learning with additional variables, it was found that the number of
piles has the most significant impact on ground displacement. Nevertheless, as this study is based on laboratory model testing,
further research considering real field conditions is necessary. This study contributes to a better understanding of the complex
interactions inherent in twin tunnelling projects and provides a reliable tool for predicting pile group settlement in such
scenarios.
Key Words
machine learning; numerical analysis; pile group; pile group-tunnel interaction; twin tunnelling
Address
Su-Bin Kim, Hyeon-Jun Cho and Yong-Joo Lee: Department of Civil Engineering, Seoul National University of Science and Technology,
232 Gongneung-ro, Nowon-gu, Seoul, 139-743, Republic of Korea
Dong-Wook Oh: Department of Railroad Construction and Safety Engineering, Dongyang University,
145 Dongyangdaero Punggi-eup, Yeongju-si 36040, Republic of Korea