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Published in: Structural and Multidisciplinary Optimization 2/2020

11-02-2020 | Research Paper

System reliability analysis with small failure probability based on active learning Kriging model and multimodal adaptive importance sampling

Authors: Xufeng Yang, Xin Cheng, Tai Wang, Caiying Mi

Published in: Structural and Multidisciplinary Optimization | Issue 2/2020

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Abstract

System reliability analysis with small failure probability is investigated in this paper. Because multiple failure modes exist, the system performance function has multiple failure regions and multiple most probable points (MPPs). This paper reports an innovative method combining active learning Kriging (ALK) model with multimodal adaptive important sampling (MAIS). In each iteration of the proposed method, MPPs on a so-called surrogate limit state surface (LSS) of the system are explored, important samples are generated, optimal training points are chosen, the Kriging models are updated, and the surrogate LSS is refined. After several iterations, the surrogate LSS will converge to the true LSS. A recently proposed evolutionary multimodal optimization algorithm is adapted to obtain all the potential MPPs on the surrogate LSS, and a filtering technique is introduced to exclude improper solutions. In this way, the unbiasedness of our method is guaranteed. To avoid approximating the unimportant components, the training points are only chosen from the important samples located in the truncated candidate region (TCR). The proposed method is termed as ALK-MAIS-TCR. The accuracy and efficiency of ALK-MAIS-TCR are demonstrated by four complicated case studies.

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Literature
go back to reference Au S, Beck JL (1999) A new adaptive importance sampling scheme for reliability calculations. Struct Saf 21:135–158 Au S, Beck JL (1999) A new adaptive importance sampling scheme for reliability calculations. Struct Saf 21:135–158
go back to reference Bichon BJ, Eldred MS, Swiler LP et al (2008) Efficient global reliability analysis for nonlinear implicit performance functions. AIAA J 46:2459–2468 Bichon BJ, Eldred MS, Swiler LP et al (2008) Efficient global reliability analysis for nonlinear implicit performance functions. AIAA J 46:2459–2468
go back to reference Bichon BJ, McFarland JM, Mahadevan S (2011) Efficient surrogate models for reliability analysis of systems with multiple failure modes. Reliab Eng Syst Saf 96:1386–1395 Bichon BJ, McFarland JM, Mahadevan S (2011) Efficient surrogate models for reliability analysis of systems with multiple failure modes. Reliab Eng Syst Saf 96:1386–1395
go back to reference Bourinet J, Mattrand C, Dubourg V (2009) A review of recent features and improvements added to FERUM software. Proc. of the 10th International Conference on Structural Safety and Reliability (ICOSSAR’09) Bourinet J, Mattrand C, Dubourg V (2009) A review of recent features and improvements added to FERUM software. Proc. of the 10th International Conference on Structural Safety and Reliability (ICOSSAR’09)
go back to reference Bourinet J, Deheeger F, Lemaire M (2011) Assessing small failure probabilities by combined subset simulation and support vector machines. Struct Saf 33:343–353 Bourinet J, Deheeger F, Lemaire M (2011) Assessing small failure probabilities by combined subset simulation and support vector machines. Struct Saf 33:343–353
go back to reference Cadini F, Santos ZE (2014) An improved adaptive kriging-based importance technique for sampling multiple failure regions of low probability. Reliab Eng Syst Saf 131:109–117 Cadini F, Santos ZE (2014) An improved adaptive kriging-based importance technique for sampling multiple failure regions of low probability. Reliab Eng Syst Saf 131:109–117
go back to reference Cheng R, Li M, Li K et al (2018) Evolutionary multiobjective optimization-based multimodal optimization: fitness landscape approximation and peak detection. IEEE Trans Evol Comput 22:692–706 Cheng R, Li M, Li K et al (2018) Evolutionary multiobjective optimization-based multimodal optimization: fitness landscape approximation and peak detection. IEEE Trans Evol Comput 22:692–706
go back to reference Deb K, Gupta S, Daum D et al (2009) Reliability-based optimization using evolutionary algorithms. IEEE Trans Evol Comput 13:1054–1074 Deb K, Gupta S, Daum D et al (2009) Reliability-based optimization using evolutionary algorithms. IEEE Trans Evol Comput 13:1054–1074
go back to reference Der Kiureghian A, Dakessian T (1998) Multiple design points in first and second-order reliability. Struct Saf 20:37–49 Der Kiureghian A, Dakessian T (1998) Multiple design points in first and second-order reliability. Struct Saf 20:37–49
go back to reference Dey A, Mahadevan S (1998) Ductile structural system reliability analysis using adaptive importance sampling. Struct Saf 20:137–154 Dey A, Mahadevan S (1998) Ductile structural system reliability analysis using adaptive importance sampling. Struct Saf 20:137–154
go back to reference Ditlevsen O (1979) Narrow reliability bounds for structural systems. J Struct Mech 7:453–472 Ditlevsen O (1979) Narrow reliability bounds for structural systems. J Struct Mech 7:453–472
go back to reference Du X (2010) System reliability analysis with saddlepoint approximation. Struct Multidiscip Optim 42:193–208MathSciNetMATH Du X (2010) System reliability analysis with saddlepoint approximation. Struct Multidiscip Optim 42:193–208MathSciNetMATH
go back to reference Dubourg V, Sudret B, Bourinet J-M (2011) Reliability-based design optimization using kriging surrogates and subset simulation. Struct Multidiscip Optim 44:673–690 Dubourg V, Sudret B, Bourinet J-M (2011) Reliability-based design optimization using kriging surrogates and subset simulation. Struct Multidiscip Optim 44:673–690
go back to reference Echard B, Gayton N, Lemaire M (2011) AK-MCS: an active learning reliability method combining Kriging and Monte Carlo simulation. Struct Saf 33:145–154 Echard B, Gayton N, Lemaire M (2011) AK-MCS: an active learning reliability method combining Kriging and Monte Carlo simulation. Struct Saf 33:145–154
go back to reference Echard B, Gayton N, Lemaire M et al (2013) A combined importance sampling and kriging reliability method for small failure probabilities with time-demanding numerical models. Reliab Eng Syst Saf 111:232–240 Echard B, Gayton N, Lemaire M et al (2013) A combined importance sampling and kriging reliability method for small failure probabilities with time-demanding numerical models. Reliab Eng Syst Saf 111:232–240
go back to reference Fauriat W, Gayton N (2014) AK-SYS: an adaptation of the AK-MCS method for system reliability. Reliab Eng Syst Saf 123:137–144 Fauriat W, Gayton N (2014) AK-SYS: an adaptation of the AK-MCS method for system reliability. Reliab Eng Syst Saf 123:137–144
go back to reference Gaspar B, Teixeira A, Soares CG (2017) Adaptive surrogate model with active refinement combining Kriging and a trust region method. Reliab Eng Syst Saf 165:277–291 Gaspar B, Teixeira A, Soares CG (2017) Adaptive surrogate model with active refinement combining Kriging and a trust region method. Reliab Eng Syst Saf 165:277–291
go back to reference Hu Z, Du X (2018) Integration of statistics- and physics-based methods—a feasibility study on accurate system reliability prediction. J Mech Des 140:074501–074507 Hu Z, Du X (2018) Integration of statistics- and physics-based methods—a feasibility study on accurate system reliability prediction. J Mech Des 140:074501–074507
go back to reference Hu Z, Mahadevan S (2016) Global sensitivity analysis-enhanced surrogate (GSAS) modeling for reliability analysis. Struct Multidiscip Optim 53:501–521MathSciNet Hu Z, Mahadevan S (2016) Global sensitivity analysis-enhanced surrogate (GSAS) modeling for reliability analysis. Struct Multidiscip Optim 53:501–521MathSciNet
go back to reference Hu Z, Nannapaneni S, Mahadevan S (2017) Efficient Kriging surrogate modeling approach for system reliability analysis. Artif Intell Eng Des Anal Manuf 31:143–160 Hu Z, Nannapaneni S, Mahadevan S (2017) Efficient Kriging surrogate modeling approach for system reliability analysis. Artif Intell Eng Des Anal Manuf 31:143–160
go back to reference Jain AK (2010) Data clustering: 50 years beyond K-means. Pattern Recogn Lett 31:651–666 Jain AK (2010) Data clustering: 50 years beyond K-means. Pattern Recogn Lett 31:651–666
go back to reference Jiang C, Qiu H, Yang Z et al (2019) A general failure-pursuing sampling framework for surrogate-based reliability analysis. Reliab Eng Syst Saf 183:47–59 Jiang C, Qiu H, Yang Z et al (2019) A general failure-pursuing sampling framework for surrogate-based reliability analysis. Reliab Eng Syst Saf 183:47–59
go back to reference Kang W-H, Song J, Gardoni P (2008) Matrix-based system reliability method and applications to bridge networks. Reliab Eng Syst Saf 93:1584–1593 Kang W-H, Song J, Gardoni P (2008) Matrix-based system reliability method and applications to bridge networks. Reliab Eng Syst Saf 93:1584–1593
go back to reference Kurtz N, Song J (2013) Cross-entropy-based adaptive importance sampling using Gaussian mixture. Struct Saf 42:35–44 Kurtz N, Song J (2013) Cross-entropy-based adaptive importance sampling using Gaussian mixture. Struct Saf 42:35–44
go back to reference Li J, Mourelatos ZP (2009) Time-dependent reliability estimation for dynamic problems using a niching genetic algorithm. J Mech Des 131:071009 Li J, Mourelatos ZP (2009) Time-dependent reliability estimation for dynamic problems using a niching genetic algorithm. J Mech Des 131:071009
go back to reference Pandey MD (1998) An effective approximation to evaluate multinormal integrals. Struct Saf 20:51–67 Pandey MD (1998) An effective approximation to evaluate multinormal integrals. Struct Saf 20:51–67
go back to reference Razaaly N, Congedo PM (2018) Novel algorithm using active metamodel learning and importance sampling: application to multiple failure regions of low probability. J Comput Phys 368:92–114MathSciNetMATH Razaaly N, Congedo PM (2018) Novel algorithm using active metamodel learning and importance sampling: application to multiple failure regions of low probability. J Comput Phys 368:92–114MathSciNetMATH
go back to reference Sadoughi M, Li M, Hu C (2018) Multivariate system reliability analysis considering highly nonlinear and dependent safety events. Reliab Eng Syst Saf 180:189–200 Sadoughi M, Li M, Hu C (2018) Multivariate system reliability analysis considering highly nonlinear and dependent safety events. Reliab Eng Syst Saf 180:189–200
go back to reference Shayanfar MA, Barkhordari MA, Roudak MA (2017) An efficient reliability algorithm for locating design point using the combination of importance sampling concepts and response surface method. Commun Nonlinear Sci Numer Simul 47:223–237 Shayanfar MA, Barkhordari MA, Roudak MA (2017) An efficient reliability algorithm for locating design point using the combination of importance sampling concepts and response surface method. Commun Nonlinear Sci Numer Simul 47:223–237
go back to reference Shir OM (2012) Niching in evolutionary algorithms. In: Rozenberg G, Bäck T, Kok JN (eds) Handbook of Natural Computing. Springer Berlin Heidelberg, Berlin, pp 1035–1069 Shir OM (2012) Niching in evolutionary algorithms. In: Rozenberg G, Bäck T, Kok JN (eds) Handbook of Natural Computing. Springer Berlin Heidelberg, Berlin, pp 1035–1069
go back to reference Sudret B (2008) Global sensitivity analysis using polynomial chaos expansions. Reliab Eng Syst Saf 93:964–979 Sudret B (2008) Global sensitivity analysis using polynomial chaos expansions. Reliab Eng Syst Saf 93:964–979
go back to reference Sues RH, Cesare MA (2005) System reliability and sensitivity factors via the MPPSS method. Probab Eng Mech 20:148–157 Sues RH, Cesare MA (2005) System reliability and sensitivity factors via the MPPSS method. Probab Eng Mech 20:148–157
go back to reference Wang Z, Wang P (2015) An integrated performance measure approach for system reliability analysis. J Mech Des 137:021406 Wang Z, Wang P (2015) An integrated performance measure approach for system reliability analysis. J Mech Des 137:021406
go back to reference Wang P, Hu C, Youn BD (2011) A generalized complementary intersection method (GCIM) for system reliability analysis. J Mech Des 133:071003 Wang P, Hu C, Youn BD (2011) A generalized complementary intersection method (GCIM) for system reliability analysis. J Mech Des 133:071003
go back to reference Wang Y, Li H, Yen GG et al (2015) MOMMOP: multiobjective optimization for locating multiple optimal solutions of multimodal optimization problems. IEEE Trans Cybern 45:830–843 Wang Y, Li H, Yen GG et al (2015) MOMMOP: multiobjective optimization for locating multiple optimal solutions of multimodal optimization problems. IEEE Trans Cybern 45:830–843
go back to reference Wei P, Liu F, Tang C (2018) Reliability and reliability-based importance analysis of structural systems using multiple response Gaussian process model. Reliab Eng Syst Saf 175:183–195 Wei P, Liu F, Tang C (2018) Reliability and reliability-based importance analysis of structural systems using multiple response Gaussian process model. Reliab Eng Syst Saf 175:183–195
go back to reference Wen Z, Pei H, Liu H et al (2016) A sequential Kriging reliability analysis method with characteristics of adaptive sampling regions and parallelizability. Reliab Eng Syst Saf 153:170–179 Wen Z, Pei H, Liu H et al (2016) A sequential Kriging reliability analysis method with characteristics of adaptive sampling regions and parallelizability. Reliab Eng Syst Saf 153:170–179
go back to reference Yang X, Liu Y, Gao Y et al (2015) An active learning Kriging model for hybrid reliability analysis with both random and interval variables. Struct Multidiscip Optim 51:1003–1016MathSciNet Yang X, Liu Y, Gao Y et al (2015) An active learning Kriging model for hybrid reliability analysis with both random and interval variables. Struct Multidiscip Optim 51:1003–1016MathSciNet
go back to reference Yang X, Liu Y, Mi C et al (2018a) Active learning Kriging model combining with kernel-density-estimation-based importance sampling method for the estimation of low failure probability. J Mech Des 140:051402 Yang X, Liu Y, Mi C et al (2018a) Active learning Kriging model combining with kernel-density-estimation-based importance sampling method for the estimation of low failure probability. J Mech Des 140:051402
go back to reference Yang X, Liu Y, Mi C et al (2018b) System reliability analysis through active learning Kriging model with truncated candidate region. Reliab Eng Syst Saf 169:235–241 Yang X, Liu Y, Mi C et al (2018b) System reliability analysis through active learning Kriging model with truncated candidate region. Reliab Eng Syst Saf 169:235–241
go back to reference Yang X, Mi C, Deng D et al (2019a) A system reliability analysis method combining active learning Kriging model with adaptive size of candidate points. Struct Multidiscip Optim 60:137–150 Yang X, Mi C, Deng D et al (2019a) A system reliability analysis method combining active learning Kriging model with adaptive size of candidate points. Struct Multidiscip Optim 60:137–150
go back to reference Yang X, Wang T, Li J et al (2019b) Bounds approximation of limit-state surface based on active learning Kriging model with truncated candidate region for random-interval hybrid reliability analysis. Int J Numer Methods Eng (In press) Yang X, Wang T, Li J et al (2019b) Bounds approximation of limit-state surface based on active learning Kriging model with truncated candidate region for random-interval hybrid reliability analysis. Int J Numer Methods Eng (In press)
go back to reference Yao J, Kharma N, Grogono P (2010) Bi-objective multipopulation genetic algorithm for multimodal function optimization. IEEE Trans Evol Comput 14:80–102 Yao J, Kharma N, Grogono P (2010) Bi-objective multipopulation genetic algorithm for multimodal function optimization. IEEE Trans Evol Comput 14:80–102
go back to reference Youn BD, Wang P (2009) Complementary intersection method for system reliability analysis. J Mech Des 131:041004 Youn BD, Wang P (2009) Complementary intersection method for system reliability analysis. J Mech Des 131:041004
Metadata
Title
System reliability analysis with small failure probability based on active learning Kriging model and multimodal adaptive importance sampling
Authors
Xufeng Yang
Xin Cheng
Tai Wang
Caiying Mi
Publication date
11-02-2020
Publisher
Springer Berlin Heidelberg
Published in
Structural and Multidisciplinary Optimization / Issue 2/2020
Print ISSN: 1615-147X
Electronic ISSN: 1615-1488
DOI
https://doi.org/10.1007/s00158-020-02515-5

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