Highly efficient reliability analysis of anisotropic heterogeneous slopes: machine learning-aided Monte Carlo method

被引:11
|
作者
Aminpour, Mohammad [1 ]
Alaie, Reza [2 ]
Kardani, Navid [1 ]
Moridpour, Sara [1 ]
Nazem, Majidreza [1 ]
机构
[1] Royal Melbourne Inst Technol RMIT, Sch Engn, Civil & Infrastruct Engn Discipline, Melbourne, Vic 3001, Australia
[2] Univ Guilan, Fac Engn, Dept Civil Engn, Rasht, Iran
基金
澳大利亚研究理事会;
关键词
Anisotropy; Heterogeneity; Machine learning; Monte Carlo; Probability of failure; Reliability; Surrogate models; STABILITY ANALYSIS; SOIL PROPERTIES; VARIABILITY; PREDICTION; PARAMETERS; REGRESSION;
D O I
10.1007/s11440-022-01771-7
中图分类号
P5 [地质学];
学科分类号
0709 ; 081803 ;
摘要
Machine learning (ML) algorithms are increasingly used as surrogate models to increase the efficiency of stochastic reliability analyses in geotechnical engineering. This paper presents a highly efficient ML-aided reliability technique that is able to accurately predict the results of a Monte Carlo (MC) reliability study and yet performs 500 times faster. A complete MC reliability analysis on anisotropic heterogeneous slopes consisting of 120,000 simulated samples is conducted in parallel to the proposed ML-aided stochastic technique. Comparing the results of the complete MC study and the proposed ML-aided technique, the expected errors of the proposed method are realistically examined. Circumventing the time-consuming computation of factors of safety for the training datasets, the proposed technique is more efficient than previous methods. Different ML models, including random forest, support vector machine and artificial neural networks, are presented, optimised and compared. The effects of the size and type of training and testing datasets are discussed. The expected errors of the ML predicted probability of failure are characterised by different levels of soil heterogeneity and anisotropy. Using only 1% of MC samples to train ML surrogate models, the proposed technique can accurately predict the probability of failure with mean errors limited to 0.7%. The proposed technique reduces the computational time required for our study from 306 days to only 14 h, providing 500 times higher efficiency.
引用
收藏
页码:3367 / 3389
页数:23
相关论文
共 50 条
  • [1] Highly efficient reliability analysis of anisotropic heterogeneous slopes: machine learning-aided Monte Carlo method
    Mohammad Aminpour
    Reza Alaie
    Navid Kardani
    Sara Moridpour
    Majidreza Nazem
    Acta Geotechnica, 2023, 18 : 3367 - 3389
  • [2] Machine Learning-Aided Monte Carlo Simulation and Subset Simulation
    Sabri, Md Shayan
    Ahmad, Furquan
    Samui, Pijush
    TRANSPORTATION RESEARCH RECORD, 2024, 2678 (12) : 864 - 886
  • [3] Machine learning-aided reliability analysis of rainfall-induced landslide of root-reinforced slopes
    Switala, Barbara Maria
    Guardiani, Carlotta
    Soranzo, Enrico
    Wu, Wei
    CANADIAN GEOTECHNICAL JOURNAL, 2023, 60 (12) : 1877 - 1894
  • [4] Machine learning aided stochastic reliability analysis of spatially variable slopes
    He, Xuzhen
    Xu, Haoding
    Sabetamal, Hassan
    Sheng, Daichao
    COMPUTERS AND GEOTECHNICS, 2020, 126
  • [5] Reinforcement Learning-Aided Markov Chain Monte Carlo For Lattice Gaussian Sampling
    Wang, Zheng
    Xia, Yili
    Lyu, Shanxiang
    Ling, Cong
    2021 IEEE INFORMATION THEORY WORKSHOP (ITW), 2021,
  • [6] Learning-Aided Markov Chain Monte Carlo Scheme for Spectrum Sensing in Cognitive Radio
    Wang, Zheng
    Lyu, Shanxiang
    Liu, Ling
    Xia, Yili
    IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2022, 71 (10) : 11301 - 11305
  • [7] An efficient reliability method combining adaptive Support Vector Machine and Monte Carlo Simulation
    Pan, Qiujing
    Dias, Daniel
    STRUCTURAL SAFETY, 2017, 67 : 85 - 95
  • [8] Reliability of Monte Carlo stochastic dispersion models in highly heterogeneous formations
    Salandin, P
    Ursino, N
    Fiorotto, V
    CALIBRATION AND RELIABILITY IN GROUNDWATER MODELLING, 1996, (237): : 453 - 462
  • [9] Hybrid enhanced Monte Carlo simulation coupled with advanced machine learning approach for accurate and efficient structural reliability analysis
    Luo, Changqi
    Keshtegar, Behrooz
    Zhu, Shun Peng
    Taylan, Osman
    Niu, Xiao-Peng
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2022, 388
  • [10] A Review on Machine Learning-Aided Hydrothermal Liquefaction Based on Bibliometric Analysis
    Qian, Lili
    Zhang, Xu
    Ma, Xianguang
    Xue, Peng
    Tang, Xingying
    Li, Xiang
    Wang, Shuang
    ENERGIES, 2024, 17 (21)