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Published in: Structural and Multidisciplinary Optimization 2/2020

17-02-2020 | Research Paper

Surrogate model-based reliability analysis for structural systems with correlated distribution parameters

Authors: Ning-Cong Xiao, Kai Yuan, Zhangchun Tang, Hu Wan

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

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Abstract

Uncertainties are usually modeled by random variables, and the values of distribution parameters are estimated from the collected samples. In practical engineering, point and interval samples are possibly available for the estimation of distribution parameters; then, their values are intervals instead of point values. In view of the fact that all distribution parameters are estimated from the same set of samples, they must be correlated rather than mutually independent. In this study, the correlation among interval distribution parameters is considered and modeled using ellipse models, and the Monte Carlo simulation (MCS)-based reliability method for correlated distribution parameters, denoted as D–MCS, is first proposed. Performance functions are usually implicit functions involving simulation that are expensive-to-evaluate evaluate in real applications; hence, an efficient adaptive surrogate model-based reliability method for structural systems with correlated interval distribution parameters is proposed to reduce computational burden. A new and efficient learning function based on the U function is developed to adaptively add the best new training samples at each iteration. The corresponding stopping criterion to terminate the proposed algorithm is also developed. The lower and upper bounds of probability of failure are calculated based on the final constructed surrogate model. The proposed method is effective because it can provide more accurate reliability results compared with traditional independence assumption reliability methods, and it can be used for structural systems with mixed variables. The proposed method is easy to code and understand. Three numerical examples are investigated to show the applicability of the proposed method.

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Literature
go back to reference Bouhlel MA, Bartoli N, Regis R et al (2018) Efficient global optimization for high-dimensional constrained problems by using the kriging models combined with partial least squares method. Eng Optim 50(12):2038–2053MathSciNet Bouhlel MA, Bartoli N, Regis R et al (2018) Efficient global optimization for high-dimensional constrained problems by using the kriging models combined with partial least squares method. Eng Optim 50(12):2038–2053MathSciNet
go back to reference Chen Z, Qiu H, Gao L et al (2013) An adaptive decoupling approach for reliability-based design optimization. Comput Struct 117:58–66 Chen Z, Qiu H, Gao L et al (2013) An adaptive decoupling approach for reliability-based design optimization. Comput Struct 117:58–66
go back to reference Cheng Y, Du X (2018) Toward the effect of dependent distribution parameters on reliability prediction. J Comput Inf Sci Eng 18:021008–1–021008-10 Cheng Y, Du X (2018) Toward the effect of dependent distribution parameters on reliability prediction. J Comput Inf Sci Eng 18:021008–1–021008-10
go back to reference Der Kiureghian A, Ditlevsen O (2010) Aleatory or epistemic? Does it matter? Struct Saf 31(2):105–112 Der Kiureghian A, Ditlevsen O (2010) Aleatory or epistemic? Does it matter? Struct Saf 31(2):105–112
go back to reference Du X (2008) Unified uncertainty analysis by the first order reliability method. ASME J Mech Des 130(9):091401–091410 Du X (2008) Unified uncertainty analysis by the first order reliability method. ASME J Mech Des 130(9):091401–091410
go back to reference Du X, Sudjianto A (2004) First order saddlepoint approximation for reliability analysis. AIAA J 42(6):1199–1207 Du X, Sudjianto A (2004) First order saddlepoint approximation for reliability analysis. AIAA J 42(6):1199–1207
go back to reference Duan LB, Jiang HB, Cheng AG et al (2019) Multi-objective reliability-based design optimization for the VRB-VCS FLB structure under front impact collision. Struct Multidiscip Optim 59(5):1835–1851 Duan LB, Jiang HB, Cheng AG et al (2019) Multi-objective reliability-based design optimization for the VRB-VCS FLB structure under front impact collision. Struct Multidiscip Optim 59(5):1835–1851
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 Ferson S, Kreinovich V, Ginzburg L et al. (2003) Constructing probability boxes and Dempster-Shafer structures. Sand report, SAND2002–4015 Ferson S, Kreinovich V, Ginzburg L et al. (2003) Constructing probability boxes and Dempster-Shafer structures. Sand report, SAND2002–4015
go back to reference Gao W, Wu D, Gao K et al (2018) Structural reliability analysis with imprecise random and interval fields. Appl Math Model 55:49–67MathSciNetMATH Gao W, Wu D, Gao K et al (2018) Structural reliability analysis with imprecise random and interval fields. Appl Math Model 55:49–67MathSciNetMATH
go back to reference Gaspar B, Teixeira AP, Guedes SC (2017) Adaptive surrogate model with active refinement combining Kriging and a trust region method. Reliab Eng Syst Saf 165:277–291 Gaspar B, Teixeira AP, Guedes SC (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 Gorissen D, Couckuyt I, Demeester P et al (2010) A surrogate modeling and adaptive sampling toolbox for computer based design. J Mach Learn Res 11:2051–2055 Gorissen D, Couckuyt I, Demeester P et al (2010) A surrogate modeling and adaptive sampling toolbox for computer based design. J Mach Learn Res 11:2051–2055
go back to reference Guimaraes H, Matos JC, Henriques AA (2018) An innovative adaptive sparse response surface method for structural reliability analysis. Struct Saf 73:12–28 Guimaraes H, Matos JC, Henriques AA (2018) An innovative adaptive sparse response surface method for structural reliability analysis. Struct Saf 73:12–28
go back to reference Helton JC (2011) Quantification of margins and uncertainties: conceptual and computational basis. Reliab Eng Syst Saf 96(9):976–1013 Helton JC (2011) Quantification of margins and uncertainties: conceptual and computational basis. Reliab Eng Syst Saf 96(9):976–1013
go back to reference Hu ZL, Du X (2018) Saddlepoint approximation reliability method for quadratic functions in normal variables. Struct Saf 71:24–32 Hu ZL, Du X (2018) Saddlepoint approximation reliability method for quadratic functions in normal variables. Struct Saf 71:24–32
go back to reference Hu Z, Mahadevan S (2016) Global sensitivity analysis enhanced surrogate (GSAS) modeling for reliability analysis. Struct Multidiscip Optim 53(2):501–521MathSciNet Hu Z, Mahadevan S (2016) Global sensitivity analysis enhanced surrogate (GSAS) modeling for reliability analysis. Struct Multidiscip Optim 53(2):501–521MathSciNet
go back to reference Huang BQ, Du X (2008) Probabilistic uncertainty analysis by mean-value first order saddlepoint approximation. Reliab Eng Syst Saf 93(2):325–336 Huang BQ, Du X (2008) Probabilistic uncertainty analysis by mean-value first order saddlepoint approximation. Reliab Eng Syst Saf 93(2):325–336
go back to reference Huang XZ, Li YX, Zhang YM et al (2018) A new direct second-order reliability analysis method. Appl Math Model 55:68–80MathSciNetMATH Huang XZ, Li YX, Zhang YM et al (2018) A new direct second-order reliability analysis method. Appl Math Model 55:68–80MathSciNetMATH
go back to reference Hurtado JE (2013) Assessment of reliability intervals under input distributions with uncertain parameters. Probab Eng Mech 32:80–92 Hurtado JE (2013) Assessment of reliability intervals under input distributions with uncertain parameters. Probab Eng Mech 32:80–92
go back to reference Hussein OS, Mulani SB (2018) Reliability analysis and optimization of in-plane functionally graded CNT-reinforced composite plates. Struct Multidiscip Optim 58(3):1221–1232 Hussein OS, Mulani SB (2018) Reliability analysis and optimization of in-plane functionally graded CNT-reinforced composite plates. Struct Multidiscip Optim 58(3):1221–1232
go back to reference Jiang C, Li WX, Han X et al (2011) Structural reliability analysis based on random distributions with interval parameters. Comput Struct 89:2292–2302 Jiang C, Li WX, Han X et al (2011) Structural reliability analysis based on random distributions with interval parameters. Comput Struct 89:2292–2302
go back to reference Jiang C, Zheng J, Han X (2018) Probability interval hybrid uncertainty analysis for structures with both aleatory and epistemic uncertainties: a review. Struct Multidiscip Optim 57(6):2485–2502 Jiang C, Zheng J, Han X (2018) Probability interval hybrid uncertainty analysis for structures with both aleatory and epistemic uncertainties: a review. Struct Multidiscip Optim 57(6):2485–2502
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 Jiang C, Qiu H, Gao L et al (2020) Real-time estimation error-guided active learning kriging method for time-dependent reliability analysis. Appl Math Model 82:82–98MathSciNetMATH Jiang C, Qiu H, Gao L et al (2020) Real-time estimation error-guided active learning kriging method for time-dependent reliability analysis. Appl Math Model 82:82–98MathSciNetMATH
go back to reference Jones DR, Schonlau M, Welch WJ (1998) Efficient global optimization of expensive black-box functions. J Glob Optim 13:455–492MathSciNetMATH Jones DR, Schonlau M, Welch WJ (1998) Efficient global optimization of expensive black-box functions. J Glob Optim 13:455–492MathSciNetMATH
go back to reference Keshtegar B, Chakraborty S (2018a) A hybrid self-adaptive conjugate first order reliability method for robust structural reliability analysis. Appl Math Model 53:319–332MathSciNetMATH Keshtegar B, Chakraborty S (2018a) A hybrid self-adaptive conjugate first order reliability method for robust structural reliability analysis. Appl Math Model 53:319–332MathSciNetMATH
go back to reference Keshtegar B, Chakraborty S (2018b) An efficient robust structural reliability method by adaptive finite-step length based on Armijo line search. Reliab Eng Syst Saf 172:195–206 Keshtegar B, Chakraborty S (2018b) An efficient robust structural reliability method by adaptive finite-step length based on Armijo line search. Reliab Eng Syst Saf 172:195–206
go back to reference Lelièvre N, Beaurepaire P, Mattrand C et al (2018) AK-MCSi: a kriging-based method to deal with small failure probabilities and time-consuming models. Struct Saf 73:1–11 Lelièvre N, Beaurepaire P, Mattrand C et al (2018) AK-MCSi: a kriging-based method to deal with small failure probabilities and time-consuming models. Struct Saf 73:1–11
go back to reference Liu X, Kuang ZX, Yin LR et al (2017) Structural reliability analysis based on probability and probability box hybrid model. Struct Saf 68:73–84 Liu X, Kuang ZX, Yin LR et al (2017) Structural reliability analysis based on probability and probability box hybrid model. Struct Saf 68:73–84
go back to reference Madenci E, Guven I (2006) The finite element method and applications in engineering using ANSYS. Springer, New York Madenci E, Guven I (2006) The finite element method and applications in engineering using ANSYS. Springer, New York
go back to reference Melchers RE (1999) Structural reliability analysis and prediction, 2nd edn. Wiley, New York Melchers RE (1999) Structural reliability analysis and prediction, 2nd edn. Wiley, New York
go back to reference Meng DB, Li YF, Huang HZ et al (2015) Reliability-based multidisciplinary design optimization using subset simulation analysis and its application in the hydraulic transmission mechanism design. ASME J Mech Des 137(5):051402-1-051402-9 Meng DB, Li YF, Huang HZ et al (2015) Reliability-based multidisciplinary design optimization using subset simulation analysis and its application in the hydraulic transmission mechanism design. ASME J Mech Des 137(5):051402-1-051402-9
go back to reference Meng Z, Zhang Z, Zhang D et al (2019) An active learning method combining Kriging and accelerated chaotic single loop approach (AK-ACSLA) for reliability-based design optimization. Comput Methods Appl Mech Eng 357:112570MathSciNetMATH Meng Z, Zhang Z, Zhang D et al (2019) An active learning method combining Kriging and accelerated chaotic single loop approach (AK-ACSLA) for reliability-based design optimization. Comput Methods Appl Mech Eng 357:112570MathSciNetMATH
go back to reference Muscolino G, Santoro R, Sofi A (2015) Explicit reliability sensitivities of linear structures with interval uncertainties under stationary stochastic excitation. Struct Saf 52(Part B):219–232 Muscolino G, Santoro R, Sofi A (2015) Explicit reliability sensitivities of linear structures with interval uncertainties under stationary stochastic excitation. Struct Saf 52(Part B):219–232
go back to reference Muscolino G, Santoro R, Sofi A (2016) Reliability analysis of structures with interval uncertainties under stationary stochastic excitations. Comput Methods Appl Mech Eng 300:47–69MathSciNetMATH Muscolino G, Santoro R, Sofi A (2016) Reliability analysis of structures with interval uncertainties under stationary stochastic excitations. Comput Methods Appl Mech Eng 300:47–69MathSciNetMATH
go back to reference Nannapaneni S, Mahadevan S (2016) Reliability analysis under epistemic uncertainty. Reliab Eng Syst Saf 155:9–20 Nannapaneni S, Mahadevan S (2016) Reliability analysis under epistemic uncertainty. Reliab Eng Syst Saf 155:9–20
go back to reference Ni BY, Jiang C, Huang ZL (2018) Discussions on non-probabilistic convex modelling for uncertain problems. Appl Math Model 59:54–85MathSciNetMATH Ni BY, Jiang C, Huang ZL (2018) Discussions on non-probabilistic convex modelling for uncertain problems. Appl Math Model 59:54–85MathSciNetMATH
go back to reference Pan Q, Dias D (2017a) Sliced inverse regression-based sparse polynomial chaos expansions for reliability analysis in high dimensions. Reliab Eng Syst Saf 167:484–493 Pan Q, Dias D (2017a) Sliced inverse regression-based sparse polynomial chaos expansions for reliability analysis in high dimensions. Reliab Eng Syst Saf 167:484–493
go back to reference Pan Q, Dias D (2017b) An efficient reliability method combining adaptive support vector machine and Monte Carlo simulation. Struct Saf 67:85–95 Pan Q, Dias D (2017b) An efficient reliability method combining adaptive support vector machine and Monte Carlo simulation. Struct Saf 67:85–95
go back to reference Rocchetta R, Broggi M, Patelli E (2018) Do we have enough data? Robust reliability via uncertainty quantification. Appl Math Model 54:710–721MathSciNetMATH Rocchetta R, Broggi M, Patelli E (2018) Do we have enough data? Robust reliability via uncertainty quantification. Appl Math Model 54:710–721MathSciNetMATH
go back to reference Schöbi R, Sudret B (2017a) Uncertainty propagation of p-boxes using sparse polynomial chaos expansions. J Comput Phys 339:307–327MathSciNetMATH Schöbi R, Sudret B (2017a) Uncertainty propagation of p-boxes using sparse polynomial chaos expansions. J Comput Phys 339:307–327MathSciNetMATH
go back to reference Schöbi R, Sudret B (2017b) Structural reliability analysis for p-boxes using multi-level meta-models. Probab Eng Mech 48:27–38MATH Schöbi R, Sudret B (2017b) Structural reliability analysis for p-boxes using multi-level meta-models. Probab Eng Mech 48:27–38MATH
go back to reference Simon C, Bicking F (2017) Hybrid computation of uncertainty in reliability analysis with p-box and evidential networks. Reliab Eng Syst Saf 167:629–638 Simon C, Bicking F (2017) Hybrid computation of uncertainty in reliability analysis with p-box and evidential networks. Reliab Eng Syst Saf 167:629–638
go back to reference VanDerHorn E, Mahadevan S (2018) Bayesian model updating with summarized statistical and reliability data. Reliab Eng Syst Saf 172:12–24 VanDerHorn E, Mahadevan S (2018) Bayesian model updating with summarized statistical and reliability data. Reliab Eng Syst Saf 172:12–24
go back to reference Wang C, Matthies HG (2019) Epistemic uncertainty-based reliability analysis for engineering system with hybrid evidence and fuzzy variables. Comput Methods Appl Mech Eng 355:438–455MathSciNetMATH Wang C, Matthies HG (2019) Epistemic uncertainty-based reliability analysis for engineering system with hybrid evidence and fuzzy variables. Comput Methods Appl Mech Eng 355:438–455MathSciNetMATH
go back to reference Xiao NC, Huang HZ, Wang ZL et al (2012) Unified uncertainty analysis by the mean value first order saddlepoint approximation. Struct Multidiscip Optim 46(6):803–812MATH Xiao NC, Huang HZ, Wang ZL et al (2012) Unified uncertainty analysis by the mean value first order saddlepoint approximation. Struct Multidiscip Optim 46(6):803–812MATH
go back to reference Xiao NC, Zuo M, Zhou CN (2018a) A new adaptive sequential sampling method to construct surrogate models for efficient reliability analysis. Reliab Eng Syst Saf 169:330–338 Xiao NC, Zuo M, Zhou CN (2018a) A new adaptive sequential sampling method to construct surrogate models for efficient reliability analysis. Reliab Eng Syst Saf 169:330–338
go back to reference Xiao NC, Zuo M, Guo W (2018b) Efficient reliability analysis based on adaptive sequential sampling design and cross-validation. Appl Math Model 58:404–420MathSciNetMATH Xiao NC, Zuo M, Guo W (2018b) Efficient reliability analysis based on adaptive sequential sampling design and cross-validation. Appl Math Model 58:404–420MathSciNetMATH
go back to reference Xiao NC, Yuan K, Zhou C (2020) Adaptive kriging-based efficient reliability method for structural systems with multiple failure modes and mixed variables. Comput Methods Appl Mech Eng 395:112649MathSciNetMATH Xiao NC, Yuan K, Zhou C (2020) Adaptive kriging-based efficient reliability method for structural systems with multiple failure modes and mixed variables. Comput Methods Appl Mech Eng 395:112649MathSciNetMATH
go back to reference Yan XF, Mi CY, Deng DY et al (2019) A system reliability analysis method combining active learning Kriging model with adaptive size of candidate points. Struct Multidiscip Optim 60(1):137–150 Yan XF, Mi CY, Deng DY et al (2019) A system reliability analysis method combining active learning Kriging model with adaptive size of candidate points. Struct Multidiscip Optim 60(1):137–150
go back to reference Yu S, Wang Z, Zhang KW (2018) Sequential time-dependent reliability analysis for the lower extremity exoskeleton under uncertainty. Reliab Eng Syst Saf 170:45–52 Yu S, Wang Z, Zhang KW (2018) Sequential time-dependent reliability analysis for the lower extremity exoskeleton under uncertainty. Reliab Eng Syst Saf 170:45–52
go back to reference Yuan R, Li H, Huang H-Z (2015) A nonlinear fatigue damage accumulation model considering strength degradation and its applications to fatigue reliability analysis. Int J Damage Mech 24(5):646–662 Yuan R, Li H, Huang H-Z (2015) A nonlinear fatigue damage accumulation model considering strength degradation and its applications to fatigue reliability analysis. Int J Damage Mech 24(5):646–662
go back to reference Yuan K, Xiao NC, Wang Z et al (2020) System reliability analysis by combining structure function and active learning kriging model. Reliab Eng Syst Saf 195:106734 Yuan K, Xiao NC, Wang Z et al (2020) System reliability analysis by combining structure function and active learning kriging model. Reliab Eng Syst Saf 195:106734
go back to reference Zhang H (2012) Interval importance sampling method for finite element-based structural reliability assessment under parameter uncertainties. Struct Saf 38:1–10 Zhang H (2012) Interval importance sampling method for finite element-based structural reliability assessment under parameter uncertainties. Struct Saf 38:1–10
go back to reference Zhang H, Mullen RL, Muhanna RL (2010) Interval Monte Carlo methods for structural reliability. Struct Saf 32(3):183–190 Zhang H, Mullen RL, Muhanna RL (2010) Interval Monte Carlo methods for structural reliability. Struct Saf 32(3):183–190
go back to reference Zhang JH, Xiao M, Gao L et al (2019) A combined projection-outline-based active learning kriging and adaptive importance sampling method for hybrid reliability analysis with small failure probabilities. Comput Methods Appl Mech Eng 344:13–33MathSciNetMATH Zhang JH, Xiao M, Gao L et al (2019) A combined projection-outline-based active learning kriging and adaptive importance sampling method for hybrid reliability analysis with small failure probabilities. Comput Methods Appl Mech Eng 344:13–33MathSciNetMATH
go back to reference Zhu LP, Elishakoff I, Starnes JH (1996) Derivation of multi-dimensional ellipsoidal convex model for experimental data. Math Comput Model 24(2):102–114MATH Zhu LP, Elishakoff I, Starnes JH (1996) Derivation of multi-dimensional ellipsoidal convex model for experimental data. Math Comput Model 24(2):102–114MATH
go back to reference Zhu SP, Liu Q, Peng WW et al (2018) Computational experimental approaches for fatigue reliability assessment of turbine bladed disks. Int J Mech Sci 1442–143:502–517 Zhu SP, Liu Q, Peng WW et al (2018) Computational experimental approaches for fatigue reliability assessment of turbine bladed disks. Int J Mech Sci 1442–143:502–517
Metadata
Title
Surrogate model-based reliability analysis for structural systems with correlated distribution parameters
Authors
Ning-Cong Xiao
Kai Yuan
Zhangchun Tang
Hu Wan
Publication date
17-02-2020
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/s00158-020-02505-7

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