Geomechanics and Engineering A

Volume 25, Number 1, 2021, pages 17-30

DOI: 10.12989/gae.2021.25.1.017

Deterministic and probabilistic analysis of tunnel face stability using support vector machine

Bin Li, Yong Fu, Yi Hong and Zijun Cao

Abstract

This paper develops a convenient approach for deterministic and probabilistic evaluations of tunnel face stability using support vector machine classifiers. The proposed method is comprised of two major steps, i.e., construction of the training dataset and determination of instance-based classifiers. In step one, the orthogonal design is utilized to produce representative samples after the ranges and levels of the factors that influence tunnel face stability are specified. The training dataset is then labeled by two-dimensional strength reduction analyses embedded within OptumG2. For any unknown instance, the second step applies the training dataset for classification, which is achieved by an ad hoc Python program. The classification of unknown samples starts with selection of instance-based training samples using the k-nearest neighbors algorithm, followed by the construction of an instance-based SVM-KNN classifier. It eventually provides labels of the unknown instances, avoiding calculate its corresponding performance function. Probabilistic evaluations are performed by Monte Carlo simulation based on the SVM-KNN classifier. The ratio of the number of unstable samples to the total number of simulated samples is computed and is taken as the failure probability, which is validated and compared with the response surface method.

Key Words

tunnel face stability; support vector machine; the k-nearest neighbors; strength reduction analysis; Monte Carlo simulation

Address

Bin Li: School of Transportation, Wuhan University of Technology, Hubei Highway Engineering Research Center, 1178 Heping Avenue, Wuhan, Hubei Province 430063, China Yong Fu: Department of Ocean Science and Engineering, Southern University of Science and Technology, Shenzhen 518055, China Yi Hong: College of Civil Engineering and Architecture, Zhejiang University, Hang Zhou, China Zijun Cao: State Key Laboratory of Water Resources and Hydropower Engineering Science, Key Laboratory of Rock Mechanics in Hydraulic Structural Engineering, Ministry of Education,Wuhan University, 8 Donghu South Road, Wuhan, China