Efficient reliability analysis of slopes in spatially variable soils with active learning-assisted bootstrap polynomial chaos expansion

authored by
Kang Liao, Xiaoyan Zhao, Yiping Wu, Fasheng Miao, Yutao Pan, Michael Beer
Abstract

Evaluating the reliability of slopes with spatial variability is a challenging issue, especially when the failure probably of the target event is at a low level, because of unaffordable computational cost required in such cases. In this context, an adaptive surrogate model-based approach, namely active learning-assisted bootstrap polynomial chaos expansion, is proposed to alleviate the above computational burden. The proposed approach extends the traditional polynomial chaos expansion by introducing the bootstrap resampling method so that it can deal with reliability issues smoothly and provide a feasible configuration environment to support the active learning algorithm. The computational efficiency can thus be greatly improved by adaptively searching for the most informative samples to train the surrogate model through iterative program. Two spatially varying soil slopes are studied to illustrate the validity of the active learning-assisted bootstrap polynomial chaos expansion. The results show that the proposed approach has superior advantages in terms of efficiency and accuracy, and it is also suitable for handling problems with complex parameter configurations, including high dimensionality and cross-correlation. Besides, the proposed approach has potential in addressing geotechnical engineering problems with low probability levels.

Organisation(s)
Institute for Risk and Reliability
External Organisation(s)
Southwest Jiaotong University
China University of Geosciences
Norwegian University of Science and Technology (NTNU)
Type
Article
Journal
Computers and geotechnics
Volume
179
No. of pages
11
ISSN
0266-352X
Publication date
03.2025
Publication status
Published
Peer reviewed
Yes
ASJC Scopus subject areas
Geotechnical Engineering and Engineering Geology, Computer Science Applications
Electronic version(s)
https://doi.org/10.1016/j.compgeo.2024.107022 (Access: Closed)