An efficient reliability analysis strategy for low failure probability problems

被引:6
作者
Cao, Runan [1 ]
Sun, Zhili [1 ]
Wang, Jian [1 ]
Guo, Fanyi [1 ]
机构
[1] Northeastern Univ, Sch Mech Engn & Automat, Wenhua Rd, Shenyang 110819, Liaoning, Peoples R China
基金
中国国家自然科学基金;
关键词
structural reliability; the Kriging model; low failure probability; adaptive kernel-density estimation; RESPONSE-SURFACE METHOD; LEARNING-FUNCTION; ALGORITHM; SYSTEM; 1ST;
D O I
10.12989/sem.2021.78.2.209
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
For engineering, there are two major challenges in reliability analysis. First, to ensure the accuracy of simulation results, mechanical products are usually defined implicitly by complex numerical models that require time-consuming. Second, the mechanical products are fortunately designed with a large safety margin, which leads to a low failure probability. This paper proposes an efficient and high-precision adaptive active learning algorithm based on the Kriging surrogate model to deal with the problems with low failure probability and time-consuming numerical models. In order to solve the problem with multiple failure regions, the adaptive kernel-density estimation is introduced and improved. Meanwhile, a new criterion for selecting points based on the current Kriging model is proposed to improve the computational efficiency. The criterion for choosing the best sampling points considers not only the probability of misjudging the sign of the response value at a point by the Kriging model but also the distribution information at that point. In order to prevent the distance between the selected training points from too close, the correlation between training points is limited to avoid information redundancy and improve the computation efficiency of the algorithm. Finally, the efficiency and accuracy of the proposed method are verified compared with other algorithms through two academic examples and one engineering application.
引用
收藏
页码:209 / 218
页数:10
相关论文
共 36 条
[1]   A new sampling strategy for SVM-based response surface for structural reliability analysis [J].
Alibrandi, Umberto ;
Alani, Amir M. ;
Ricciardi, Giuseppe .
PROBABILISTIC ENGINEERING MECHANICS, 2015, 41 :1-12
[2]   On MCMC algorithm for Subset Simulation [J].
Au, Siu-Kui .
PROBABILISTIC ENGINEERING MECHANICS, 2016, 43 :117-120
[3]   A new adaptive importance sampling scheme for reliability calculations [J].
Au, SK ;
Beck, JL .
STRUCTURAL SAFETY, 1999, 21 (02) :135-158
[4]  
Basaga HB, 2012, STRUCT ENG MECH, V42, P175
[5]   A neural network approach for simulating stationary stochastic processes [J].
Beer, Michael ;
Spanos, Pol D. .
STRUCTURAL ENGINEERING AND MECHANICS, 2009, 32 (01) :71-94
[6]   An improved adaptive kriging-based importance technique for sampling multiple failure regions of low probability [J].
Cadini, F. ;
Santos, F. ;
Zio, E. .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2014, 131 :109-117
[7]  
Cao ZG, 2011, STRUCT ENG MECH, V38, P125
[8]   Application of artificial neural networks to the response prediction of geometrically nonlinear truss structures [J].
Cheng, Jin ;
Cai, C. S. ;
Xiao, Ru-Cheng .
STRUCTURAL ENGINEERING AND MECHANICS, 2007, 26 (03) :251-262
[9]   A combined Importance Sampling and Kriging reliability method for small failure probabilities with time-demanding numerical models [J].
Echard, B. ;
Gayton, N. ;
Lemaire, M. ;
Relun, N. .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2013, 111 :232-240
[10]   AK-MCS: An active learning reliability method combining Kriging and Monte Carlo Simulation [J].
Echard, B. ;
Gayton, N. ;
Lemaire, M. .
STRUCTURAL SAFETY, 2011, 33 (02) :145-154