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Published in: Structural and Multidisciplinary Optimization 5/2019

11-05-2019 | Review Article

Surrogate-assisted reliability-based design optimization: a survey and a unified modular framework

Authors: Maliki Moustapha, Bruno Sudret

Published in: Structural and Multidisciplinary Optimization | Issue 5/2019

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Abstract

Reliability-based design optimization (RBDO) is an active field of research with an ever increasing number of contributions. Numerous methods have been proposed for the solution of RBDO, a complex problem that combines optimization and reliability analysis. Classical approaches are based on approximation methods and have been classified in review papers. In this paper, we first review classical approaches based on approximation methods such as FORM, and also more recent methods that rely upon surrogate modelling and Monte Carlo simulation. We then propose a generalization of the existing surrogate-assisted and simulation-based RBDO techniques using a unified framework that includes three independent blocks, namely adaptive surrogate modelling, reliability analysis, and optimization. These blocks are non-intrusive with respect to each other and can be plugged independently in the framework. After a discussion on numerical considerations that require attention for the framework to yield robust solutions to various types of problems, the latter is applied to three examples (using two analytical functions and a finite element model). Kriging and support vector machines regression together with their own active learning schemes are considered in the surrogate model block. In terms of reliability analysis, the proposed framework is illustrated using both crude Monte Carlo and subset simulation. Finally, the covariance matrix adaptation-evolution scheme (CMA-ES), a global search algorithm, or sequential quadratic programming (SQP), a local gradient-based method, is used in the optimization block. The comparison of the results to benchmark studies shows the effectiveness and efficiency of the proposed framework.

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Literature
go back to reference Agarwal H, Renaud J (2004) Reliability-based design optimization using response surfaces in application to multidisciplinary systems. Eng Opt 36(3):291–311 Agarwal H, Renaud J (2004) Reliability-based design optimization using response surfaces in application to multidisciplinary systems. Eng Opt 36(3):291–311
go back to reference Agarwal H, Mozumder CK, Renaud JE, Watson LT (2007) An inverse-measure-based unilevel architecture for reliability-based design optimization. Struct Multidisc Optim 33(3):217–227 Agarwal H, Mozumder CK, Renaud JE, Watson LT (2007) An inverse-measure-based unilevel architecture for reliability-based design optimization. Struct Multidisc Optim 33(3):217–227
go back to reference Aoues Y, Chateauneuf A (2010) Benchmark study of numerical methods for reliability-based design optimization. Struct Multidisc Optim 41(2):277–294MathSciNetMATH Aoues Y, Chateauneuf A (2010) Benchmark study of numerical methods for reliability-based design optimization. Struct Multidisc Optim 41(2):277–294MathSciNetMATH
go back to reference Arnold DV, Hansen N (2012) A (1 + 1)-CMA-ES for constrained optimisation. In: Soule T, Moore JH (eds) Genetic and evolutionary computation conference, pp 297–304 Arnold DV, Hansen N (2012) A (1 + 1)-CMA-ES for constrained optimisation. In: Soule T, Moore JH (eds) Genetic and evolutionary computation conference, pp 297–304
go back to reference Au SK (2005) Reliability-based design sensitivity by efficient simulation. Comput Struct 83(14):1048–1061 Au SK (2005) Reliability-based design sensitivity by efficient simulation. Comput Struct 83(14):1048–1061
go back to reference Au SK, Beck JL (2001) Estimation of small failure probabilities in high dimensions by subset simulation. Prob Eng Mech 16(4):263–277 Au SK, Beck JL (2001) Estimation of small failure probabilities in high dimensions by subset simulation. Prob Eng Mech 16(4):263–277
go back to reference Bachoc F (2013) Cross validation and maximum likelihood estimations of hyper-parameters of Gaussian processes with model misspecifications. Comput Stat Data Anal 66:55–69MathSciNetMATH Bachoc F (2013) Cross validation and maximum likelihood estimations of hyper-parameters of Gaussian processes with model misspecifications. Comput Stat Data Anal 66:55–69MathSciNetMATH
go back to reference Basudhar A, Missoum S (2008) Adaptive explicit decision functions for probabilistic design and optimization using support vector machines. Comput Struct 86(19–20):1904–1917 Basudhar A, Missoum S (2008) Adaptive explicit decision functions for probabilistic design and optimization using support vector machines. Comput Struct 86(19–20):1904–1917
go back to reference Basudhar A, Missoum S (2010) An improved adaptive sampling scheme for the construction of explicit boundaries. Struct Multidisc Optim 42(4):517–529 Basudhar A, Missoum S (2010) An improved adaptive sampling scheme for the construction of explicit boundaries. Struct Multidisc Optim 42(4):517–529
go back to reference Beaurepaire P, Jensen HA, Schuëller GI, Valdebenito MA (2013) Reliability-based optimization using bridge importance sampling. Prob Eng Mech 34:48–57 Beaurepaire P, Jensen HA, Schuëller GI, Valdebenito MA (2013) Reliability-based optimization using bridge importance sampling. Prob Eng Mech 34:48–57
go back to reference Beck AT, Gomes WJS (2012) A comparison of deterministic, reliability-based and risk-based structural optimization under uncertainty. Prob Eng Mech 28:18–29 Beck AT, Gomes WJS (2012) A comparison of deterministic, reliability-based and risk-based structural optimization under uncertainty. Prob Eng Mech 28:18–29
go back to reference Bichon BJ, Eldred MS, Swiler L, Mahadevan S, McFarland J (2008) Efficient global reliability analysis for nonlinear implicit performance functions. AIAA J 46(10):2459–2468 Bichon BJ, Eldred MS, Swiler L, Mahadevan S, McFarland J (2008) Efficient global reliability analysis for nonlinear implicit performance functions. AIAA J 46(10):2459–2468
go back to reference Boronson E, Missoum M (2017) Stochastic optimization of nonlinear energy sinks. Struct Multidisc Optim 55:633–646MathSciNet Boronson E, Missoum M (2017) Stochastic optimization of nonlinear energy sinks. Struct Multidisc Optim 55:633–646MathSciNet
go back to reference Bourinet JM (2018) Reliability analysis and optimal design under uncertainty - Focus on adaptive surrogate-based approaches. Université Blaise Pascal, Clermont-Ferrand, France, habilitation à diriger des recherches, p 243 Bourinet JM (2018) Reliability analysis and optimal design under uncertainty - Focus on adaptive surrogate-based approaches. Université Blaise Pascal, Clermont-Ferrand, France, habilitation à diriger des recherches, p 243
go back to reference Chapelle O, Vapnik V, Bengio Y (2002) Model selection for small sample regression. Mach Learn 48 (1):9–23MATH Chapelle O, Vapnik V, Bengio Y (2002) Model selection for small sample regression. Mach Learn 48 (1):9–23MATH
go back to reference Chateauneuf A (2008) Structural design optimization considering uncertainties. Taylor & Francis, chap 1, pp 3–30 Chateauneuf A (2008) Structural design optimization considering uncertainties. Taylor & Francis, chap 1, pp 3–30
go back to reference Chen X, Hasselman KT, Neil DJ (1997) Reliability-based structural design optimization for practical applications. In: 38th Structures, Structural Dynamics, and Materials Conference, pp 2724–2732 Chen X, Hasselman KT, Neil DJ (1997) Reliability-based structural design optimization for practical applications. In: 38th Structures, Structural Dynamics, and Materials Conference, pp 2724–2732
go back to reference Chen Z, Peng S, Li X, Qiu H, Xiong H, Gao L, Li P (2015) An important boundary sampling method for reliability-based design optimization using Kriging model. Struct Multidisc Optim 52(1):55–70MathSciNet Chen Z, Peng S, Li X, Qiu H, Xiong H, Gao L, Li P (2015) An important boundary sampling method for reliability-based design optimization using Kriging model. Struct Multidisc Optim 52(1):55–70MathSciNet
go back to reference Cheng G, Xu L, Jiang L (2006) A sequential approximate programming strategy for reliability-based structural optimization. Comput Struct 84(21):1353–1367 Cheng G, Xu L, Jiang L (2006) A sequential approximate programming strategy for reliability-based structural optimization. Comput Struct 84(21):1353–1367
go back to reference Cho TM, Lee BC (2011) Reliability-based design optimization using convex linearization and sequential optimization and reliability assessment method. Struct Saf 33(1):42–50MathSciNet Cho TM, Lee BC (2011) Reliability-based design optimization using convex linearization and sequential optimization and reliability assessment method. Struct Saf 33(1):42–50MathSciNet
go back to reference de Angelis M, Patelli E, Beer M (2015) Advanced line sampling for efficient robust reliability analysis. Struct Saf 52(B):170–182 de Angelis M, Patelli E, Beer M (2015) Advanced line sampling for efficient robust reliability analysis. Struct Saf 52(B):170–182
go back to reference Ditlevsen O, Madsen H (1996) Structural reliability methods. Wiley, Chichester Ditlevsen O, Madsen H (1996) Structural reliability methods. Wiley, Chichester
go back to reference Du X, Chen W (2004) Sequential optimization and reliability assessment method for efficient probabilistic design. J Mech Design 126(2):225–233 Du X, Chen W (2004) Sequential optimization and reliability assessment method for efficient probabilistic design. J Mech Design 126(2):225–233
go back to reference Dubourg V (2011) Adaptive surrogate models for reliability analysis and reliability-based design optimization. PhD thesis université Blaise Pascal, Clermont-Ferrand, France Dubourg V (2011) Adaptive surrogate models for reliability analysis and reliability-based design optimization. PhD thesis université Blaise Pascal, Clermont-Ferrand, France
go back to reference Dubourg V, Sudret B, Bourinet JM (2011) Reliability-based design optimization using Kriging and subset simulation. Struct Multidisc Optim 44(5):673–690 Dubourg V, Sudret B, Bourinet JM (2011) Reliability-based design optimization using Kriging and subset simulation. Struct Multidisc Optim 44(5):673–690
go back to reference Enevoldsen I, Sørensen JD (1994) Reliability-based optimization in structural engineering. Struct Saf 15 (3):169–196 Enevoldsen I, Sørensen JD (1994) Reliability-based optimization in structural engineering. Struct Saf 15 (3):169–196
go back to reference Foschi RO, Li H, Zhang J (2002) Reliability and performance-based design: a computational approach and applications. Struct Saf 24(2–4):205–218 Foschi RO, Li H, Zhang J (2002) Reliability and performance-based design: a computational approach and applications. Struct Saf 24(2–4):205–218
go back to reference Frangopol DM (1985) Structural optimization using reliability concepts. J Struct Eng 111(11):2288–2301 Frangopol DM (1985) Structural optimization using reliability concepts. J Struct Eng 111(11):2288–2301
go back to reference Frangopol DM, Maute K (2003) Life-cycle reliability-based optimization of civil and aerospace structures. Comput Struct 81:397–410 Frangopol DM, Maute K (2003) Life-cycle reliability-based optimization of civil and aerospace structures. Comput Struct 81:397–410
go back to reference Gao T, Li J (2017) A derivative-free trust-region algorithm for reliability-based optimization. Struct Multidisc Optim 55(4):1535–1539MathSciNet Gao T, Li J (2017) A derivative-free trust-region algorithm for reliability-based optimization. Struct Multidisc Optim 55(4):1535–1539MathSciNet
go back to reference Gaspar B, Teixeira AP, Guedes Soares C (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 Soares C (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 Geyer S, Papaiannou I, Straub D (2019) Cross-entropy-based importance sampling using gaussian densities revisited. Struct Saf 76:15–27 Geyer S, Papaiannou I, Straub D (2019) Cross-entropy-based importance sampling using gaussian densities revisited. Struct Saf 76:15–27
go back to reference Hansen N, Ostermeier A (2001) Completely derandomized self-adaptation in evolution strategies. Evol Comput 9(2):159–195 Hansen N, Ostermeier A (2001) Completely derandomized self-adaptation in evolution strategies. Evol Comput 9(2):159–195
go back to reference Hilton HH, Feigen M (1960) Minimum weight analysis based on structural reliability. J Aerospace Sci 27 (9):641–652MathSciNetMATH Hilton HH, Feigen M (1960) Minimum weight analysis based on structural reliability. J Aerospace Sci 27 (9):641–652MathSciNetMATH
go back to reference Jia G, Taflanidis AA (2013) Non-parametric stochastic subset optimization for optimal-reliability design problems. Comput Struct 126:86–99 Jia G, Taflanidis AA (2013) Non-parametric stochastic subset optimization for optimal-reliability design problems. Comput Struct 126:86–99
go back to reference Jiang C, Qiu H, Gao L, Cai X, Li P (2017) An adaptive hybrid single-loop method for reliability-based design optimization using iterative control strategy. Struct Multidisc Optim, pp 1–16 Jiang C, Qiu H, Gao L, Cai X, Li P (2017) An adaptive hybrid single-loop method for reliability-based design optimization using iterative control strategy. Struct Multidisc Optim, pp 1–16
go back to reference Kaveh A, Talatahari S (2009) Particle swarm optimizer, and colony strategy and harmony search scheme hybridized for optimization of truss structures. Comput Struct 87:1267–283 Kaveh A, Talatahari S (2009) Particle swarm optimizer, and colony strategy and harmony search scheme hybridized for optimization of truss structures. Comput Struct 87:1267–283
go back to reference Kaymaz I (2007) Approximation methods for reliability-based design optimization problems. GAMM-Mitt 30 (2):225–268MathSciNetMATH Kaymaz I (2007) Approximation methods for reliability-based design optimization problems. GAMM-Mitt 30 (2):225–268MathSciNetMATH
go back to reference Kharmanda G, Mohamed A, Lemaire M (2002) Efficient reliability-based design optimization using a hybrid space with application to finite element analysis. Struct Multidisc Optim, 24(3) Kharmanda G, Mohamed A, Lemaire M (2002) Efficient reliability-based design optimization using a hybrid space with application to finite element analysis. Struct Multidisc Optim, 24(3)
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 Kuschel N, Rackwitz R (1997) Two basic problems in reliability-based structural optimization. Math Method Oper Res 46(3):309–333MathSciNetMATH Kuschel N, Rackwitz R (1997) Two basic problems in reliability-based structural optimization. Math Method Oper Res 46(3):309–333MathSciNetMATH
go back to reference Lacaze S, Missoum M (2014) A generalized max-min sample for surrogate updates. Struct Multidisc Optim 49:683–687 Lacaze S, Missoum M (2014) A generalized max-min sample for surrogate updates. Struct Multidisc Optim 49:683–687
go back to reference Lacaze S, Missoum S (2013) Reliability-based design optimization using Kriging and support vector machines. In: Proceedings of the 11th International Conference on Structural Safety and Reliability (ICOSSAR), June 16–20, 2013, New York, United States, p 2013 Lacaze S, Missoum S (2013) Reliability-based design optimization using Kriging and support vector machines. In: Proceedings of the 11th International Conference on Structural Safety and Reliability (ICOSSAR), June 16–20, 2013, New York, United States, p 2013
go back to reference Lataniotis C, Marelli S, Sudret B (2018) The gaussian process modeling module in UQLab. Soft Computing in Civil Engineering 2(3):91–116 Lataniotis C, Marelli S, Sudret B (2018) The gaussian process modeling module in UQLab. Soft Computing in Civil Engineering 2(3):91–116
go back to reference Lee I, Choi KK, Du L, Gorsich D (2008) Inverse analysis method using MPP-based dimension reduction for reliability-based design optimization of nonlinear and multi-dimensional systems. Comput Methods Appl Mech Engrg 198:14–27MATH Lee I, Choi KK, Du L, Gorsich D (2008) Inverse analysis method using MPP-based dimension reduction for reliability-based design optimization of nonlinear and multi-dimensional systems. Comput Methods Appl Mech Engrg 198:14–27MATH
go back to reference Lee I, Choi KK, Zhao L (2011) Sampling-based RBDO using the stochastic sensitivity analysis and dynamic Kriging method. Struct Multidisc Optim 44(3):299–317MathSciNetMATH Lee I, Choi KK, Zhao L (2011) Sampling-based RBDO using the stochastic sensitivity analysis and dynamic Kriging method. Struct Multidisc Optim 44(3):299–317MathSciNetMATH
go back to reference Lee JO, Yang YS, Ruy WS (2002) A comparative study of reliability-index and target-performance-based probabilistic structural design optimization. Comput Struct 80:257–269 Lee JO, Yang YS, Ruy WS (2002) A comparative study of reliability-index and target-performance-based probabilistic structural design optimization. Comput Struct 80:257–269
go back to reference Lee PM (1997) Bayesian statistics: an introduction, 2nd edn. Wiley Publishing, LondonMATH Lee PM (1997) Bayesian statistics: an introduction, 2nd edn. Wiley Publishing, LondonMATH
go back to reference Lee T, Jung J (2008) A sampling technique enhancing accuracy and efficiency of metamodel-based RBDO: Constraint boundary sampling. Comput Struct 86(13–14):1463–1476 Lee T, Jung J (2008) A sampling technique enhancing accuracy and efficiency of metamodel-based RBDO: Constraint boundary sampling. Comput Struct 86(13–14):1463–1476
go back to reference Lehký D, Slowik O, Novák D (2017) Reliability-based design: Artificial neural networks and double-loop reliability-based optimization approaches. Adv Eng Soft, pp 1–13 Lehký D, Slowik O, Novák D (2017) Reliability-based design: Artificial neural networks and double-loop reliability-based optimization approaches. Adv Eng Soft, pp 1–13
go back to reference Li G, Meng Z, Hu H (2015) An adaptive hybrid approach for reliability-based design optimization. Struct Multidisc Optim 51(5):1051–1065MathSciNet Li G, Meng Z, Hu H (2015) An adaptive hybrid approach for reliability-based design optimization. Struct Multidisc Optim 51(5):1051–1065MathSciNet
go back to reference Li W, Yang L (1994) An effective optimization procedure based on structural reliability. Comput Struct 52(5):1061–1067MATH Li W, Yang L (1994) An effective optimization procedure based on structural reliability. Comput Struct 52(5):1061–1067MATH
go back to reference Li X, Qiu H, Chen Z, Gao L, Shao X (2016) A local Kriging approximation method using MPP for reliability-based design optimization. Comput Struct 162:102–115 Li X, Qiu H, Chen Z, Gao L, Shao X (2016) A local Kriging approximation method using MPP for reliability-based design optimization. Comput Struct 162:102–115
go back to reference Liang J, Mourelatos Z, Tu J (2004) A single-loop method for reliability-based design optimization. In: Proc. DETC’04 ASME 2004 Design engineering technical conferences and computers and information in engineering conference, Sept. 28 – Oct. 2, 2004, Salt Lake City, Utah, USA Liang J, Mourelatos Z, Tu J (2004) A single-loop method for reliability-based design optimization. In: Proc. DETC’04 ASME 2004 Design engineering technical conferences and computers and information in engineering conference, Sept. 28 – Oct. 2, 2004, Salt Lake City, Utah, USA
go back to reference Liang J, Mourelatos ZP, Nikolaidis E (2007) A single-loop approach for system reliability-based design optimization. J Mech Des 129(12):1215–1224 Liang J, Mourelatos ZP, Nikolaidis E (2007) A single-loop approach for system reliability-based design optimization. J Mech Des 129(12):1215–1224
go back to reference Lim J, Lee B (2016) A semi-single-loop method using approximation of most probable point for reliability-based design optimization. Struct Multidisc Optim 53(4):745–757MathSciNet Lim J, Lee B (2016) A semi-single-loop method using approximation of most probable point for reliability-based design optimization. Struct Multidisc Optim 53(4):745–757MathSciNet
go back to reference Liu WS, Cheung SH (2017) Reliability-based design optimization with approximate failure probability function in partitioned design space. Reliab Eng Syst Saf 167:602–611 Liu WS, Cheung SH (2017) Reliability-based design optimization with approximate failure probability function in partitioned design space. Reliab Eng Syst Saf 167:602–611
go back to reference Madsen HO, Hansen PF (1992) A comparison of some algorithms for reliability based structural optimization and sensitivity analysis. In: Rackwitz R, Thoft-Christensen P (eds) Reliability and Optimization of Structural Systems’91. Lectures Notes in Engineering, vol 76. Springer, Berlin, pp 443–451 Madsen HO, Hansen PF (1992) A comparison of some algorithms for reliability based structural optimization and sensitivity analysis. In: Rackwitz R, Thoft-Christensen P (eds) Reliability and Optimization of Structural Systems’91. Lectures Notes in Engineering, vol 76. Springer, Berlin, pp 443–451
go back to reference Marelli S, Sudret B (2014) UQLab: a framework for uncertainty quantification in Matlab. In: Vulnerability, uncertainty, and risk (Proc. 2nd int. Conf. on vulnerability, risk analysis and management (ICVRAM2014), Liverpool, United Kingdom), pp 2554–2563 Marelli S, Sudret B (2014) UQLab: a framework for uncertainty quantification in Matlab. In: Vulnerability, uncertainty, and risk (Proc. 2nd int. Conf. on vulnerability, risk analysis and management (ICVRAM2014), Liverpool, United Kingdom), pp 2554–2563
go back to reference McKay MD, Beckman RJ, Conover WJ (1979) A comparison of three methods for selecting values of input variables in the analysis of output from a computer code. Technometrics 2:239–245MathSciNetMATH McKay MD, Beckman RJ, Conover WJ (1979) A comparison of three methods for selecting values of input variables in the analysis of output from a computer code. Technometrics 2:239–245MathSciNetMATH
go back to reference Moustapha M, Sudret B (2017) Quantile-based optimization under uncertainties using bootstrap polynomial chaos expansions. In: Proc 12th Internatinoal Conference on Structural Safety and Reliability (ICOSSAR), August 6–10, Vienna, Austria, p 2017 Moustapha M, Sudret B (2017) Quantile-based optimization under uncertainties using bootstrap polynomial chaos expansions. In: Proc 12th Internatinoal Conference on Structural Safety and Reliability (ICOSSAR), August 6–10, Vienna, Austria, p 2017
go back to reference Moustapha M, Sudret B, Bourinet JM, Guillaume B (2016) Quantile-based optimization under uncertainties using adaptive Kriging surrogate models. Struct Multidisc Optim 54(6):1403–1421MathSciNet Moustapha M, Sudret B, Bourinet JM, Guillaume B (2016) Quantile-based optimization under uncertainties using adaptive Kriging surrogate models. Struct Multidisc Optim 54(6):1403–1421MathSciNet
go back to reference Moustapha M, Lataniotis C, Marelli S, Sudret B (2018a) UQLAb user manual – support vector machines for regression. Tech rep, chair of risk, safety & uncertainty quantification, ETH Zurich, report # UQLab-V1.1–111 Moustapha M, Lataniotis C, Marelli S, Sudret B (2018a) UQLAb user manual – support vector machines for regression. Tech rep, chair of risk, safety & uncertainty quantification, ETH Zurich, report # UQLab-V1.1–111
go back to reference Moustapha M, Sudret B, Bourinet JM, Guillaume B (2018b) Comparative study of Kriging and support vector regression for structural engineering applications. ASCE-ASME J Risk Uncertainty Eng Syst, Part A: Civ Eng 4(2) Moustapha M, Sudret B, Bourinet JM, Guillaume B (2018b) Comparative study of Kriging and support vector regression for structural engineering applications. ASCE-ASME J Risk Uncertainty Eng Syst, Part A: Civ Eng 4(2)
go back to reference Moustapha M, Marelli S, Sudret B (2019) UQLab user manual- Reliability-based design optimization. Tech rep, chair of risk, safety & uncertainty quantification, ETH Zurich, report # UQLab-V1.2–114 Moustapha M, Marelli S, Sudret B (2019) UQLab user manual- Reliability-based design optimization. Tech rep, chair of risk, safety & uncertainty quantification, ETH Zurich, report # UQLab-V1.2–114
go back to reference Nikolaidis E, Burdisso R (1988) Reliability-based optimization: a safety index approach. Comput Struct 28(6):781–788MATH Nikolaidis E, Burdisso R (1988) Reliability-based optimization: a safety index approach. Comput Struct 28(6):781–788MATH
go back to reference Papadrakakis M, Lagaros ND, Plevris V (2005) Design optimization of steel structures considering uncertainties. Eng Struct 27(9):1408–1418MATH Papadrakakis M, Lagaros ND, Plevris V (2005) Design optimization of steel structures considering uncertainties. Eng Struct 27(9):1408–1418MATH
go back to reference Papaioannou I, Betz W, Zwirglmaier K, Straub D (2015) MCMC Algorithms for subset simulation. Prob Eng Mech 41:89–103 Papaioannou I, Betz W, Zwirglmaier K, Straub D (2015) MCMC Algorithms for subset simulation. Prob Eng Mech 41:89–103
go back to reference Pradlwarter HJ, Schuëller G I, Koutsourelakis PS, Charmpis DC (2007) Application of line sampling simulation method to reliability benchmark problems. Struct Saf 29(3):208–221 Pradlwarter HJ, Schuëller G I, Koutsourelakis PS, Charmpis DC (2007) Application of line sampling simulation method to reliability benchmark problems. Struct Saf 29(3):208–221
go back to reference Rahman S, Wei D (2008) Design sensitivity and reliability-based structural optimization by univariate decomposition. Struct Multidisc Optim 35(3):245–261 Rahman S, Wei D (2008) Design sensitivity and reliability-based structural optimization by univariate decomposition. Struct Multidisc Optim 35(3):245–261
go back to reference Rahman S, Xu H (2004) A univariate dimension-reduction method for multi-dimensional integration in stochastic mechanics. Prob Eng Mech 19:393–408 Rahman S, Xu H (2004) A univariate dimension-reduction method for multi-dimensional integration in stochastic mechanics. Prob Eng Mech 19:393–408
go back to reference Rashki M, Miri M, Moghaddam MA (2014) A simulation-based method for reliability-based design optimization problems with highly nonlinear constraints. Autom Constr 47:24–36 Rashki M, Miri M, Moghaddam MA (2014) A simulation-based method for reliability-based design optimization problems with highly nonlinear constraints. Autom Constr 47:24–36
go back to reference Rasmussen CE, Williams CKI (2006) Gaussian processes for machine learning, Internet edn. Adaptive computation and machine learning. MIT Press, Cambridge Rasmussen CE, Williams CKI (2006) Gaussian processes for machine learning, Internet edn. Adaptive computation and machine learning. MIT Press, Cambridge
go back to reference Royset JO (2004) Reliability-based optimal design using sample average approximations. Prob Eng Mech 19:331–343 Royset JO (2004) Reliability-based optimal design using sample average approximations. Prob Eng Mech 19:331–343
go back to reference Royset JO, Der Kiureghian A, Polak E (2001) Reliability-based optimal structural design by the decoupling approach. Reliab Eng Sys Safety 73(3):213–221 Royset JO, Der Kiureghian A, Polak E (2001) Reliability-based optimal structural design by the decoupling approach. Reliab Eng Sys Safety 73(3):213–221
go back to reference Santner TJ, Williams BJ, Notz WI (2003) The design and analysis of computer experiments. Springer, New YorkMATH Santner TJ, Williams BJ, Notz WI (2003) The design and analysis of computer experiments. Springer, New YorkMATH
go back to reference Shetty NK, Guedes-Soares C, Thoft-Christensen P, Jensen FM (1998) Fire safety assessment and optimal design of passive fire protection for offshore structures. Reliab Eng Syst Saf 61(1–2):139–149 Shetty NK, Guedes-Soares C, Thoft-Christensen P, Jensen FM (1998) Fire safety assessment and optimal design of passive fire protection for offshore structures. Reliab Eng Syst Saf 61(1–2):139–149
go back to reference Smola AJ, Schölkopf B (2004) A tutorial on support vector regression. Stat Comput 14:199–222MathSciNet Smola AJ, Schölkopf B (2004) A tutorial on support vector regression. Stat Comput 14:199–222MathSciNet
go back to reference Sobol’ IM (1967) Distribution of points in a cube and approximate evaluation of integrals. USSR Comput Maths Math Phys 7:86–112MathSciNetMATH Sobol’ IM (1967) Distribution of points in a cube and approximate evaluation of integrals. USSR Comput Maths Math Phys 7:86–112MathSciNetMATH
go back to reference Song H (2013) Efficient sampling-based RBDO by using virtual support vector machine and improving the accuracy of the Kriging method. PhD thesis, University of Iowa, USA Song H (2013) Efficient sampling-based RBDO by using virtual support vector machine and improving the accuracy of the Kriging method. PhD thesis, University of Iowa, USA
go back to reference Spall JC (1998a) Implementation of the simultaneous perturbation algorithm for stochastic optimization. IEEE Trans Aerosp Electron Syst 34(3):817–823 Spall JC (1998a) Implementation of the simultaneous perturbation algorithm for stochastic optimization. IEEE Trans Aerosp Electron Syst 34(3):817–823
go back to reference Spall JC (1998b) An overview of the simultaneous perturbation method for efficient optimization. Johns Hopkins Apl Technical Digest 19(4):482–492 Spall JC (1998b) An overview of the simultaneous perturbation method for efficient optimization. Johns Hopkins Apl Technical Digest 19(4):482–492
go back to reference Spall JC (2003a) Introduction to stochastic search and optimization: Estimation, simulation and control, Wiley, chap 14: Simulation-based optimization I: regression, common random numbers, and selection methods Spall JC (2003a) Introduction to stochastic search and optimization: Estimation, simulation and control, Wiley, chap 14: Simulation-based optimization I: regression, common random numbers, and selection methods
go back to reference Spall JC (2003b) Introduction to stochastic search and optimization: Estimation, simulation and control. Wiley, New YorkMATH Spall JC (2003b) Introduction to stochastic search and optimization: Estimation, simulation and control. Wiley, New YorkMATH
go back to reference Strömberg N (2017) Reliability-based design optimization using SORM and SQP. Struct Multidisc Optim 56(3):631–645MathSciNet Strömberg N (2017) Reliability-based design optimization using SORM and SQP. Struct Multidisc Optim 56(3):631–645MathSciNet
go back to reference Taflanidis AA (2007) Stochastic system design and applications to stochastic robust structural control. PhD thesis, California Institute of Technology, Pasadena, California, USA Taflanidis AA (2007) Stochastic system design and applications to stochastic robust structural control. PhD thesis, California Institute of Technology, Pasadena, California, USA
go back to reference Taflanidis AA, Beck JL (2008) Stochastic subset optimization for optimal reliability problems. Prob Eng Mech 23:324–338 Taflanidis AA, Beck JL (2008) Stochastic subset optimization for optimal reliability problems. Prob Eng Mech 23:324–338
go back to reference Taflanidis AJ, Medina AC (2014) Adaptive Kriging for simulation-based design under uncertainty: Development of metamodels in augmented input space and adaptive tuning of their characteristics. In: Proc 4th international Conference on Simulation and Modeling Methodologies, Technologies and Applications, August 28-30, 2014, Vienna, Austria Taflanidis AJ, Medina AC (2014) Adaptive Kriging for simulation-based design under uncertainty: Development of metamodels in augmented input space and adaptive tuning of their characteristics. In: Proc 4th international Conference on Simulation and Modeling Methodologies, Technologies and Applications, August 28-30, 2014, Vienna, Austria
go back to reference Torre E, Marelli S, Embrechts P, Sudret B (2018) A general framework for data-driven uncertainty quantification under complex input dependencies using vine copulas. Prob Eng Mech (in press) Torre E, Marelli S, Embrechts P, Sudret B (2018) A general framework for data-driven uncertainty quantification under complex input dependencies using vine copulas. Prob Eng Mech (in press)
go back to reference Tu J, Choi KK, Park YH (1999) A new study on reliability-based design optimization. J Mech Des 121:557–564 Tu J, Choi KK, Park YH (1999) A new study on reliability-based design optimization. J Mech Des 121:557–564
go back to reference Valdebenito AM, Schuëller GI (2010) A survey on approaches for reliability-based optimization. Struct Multidisc Optim 42:645–663MathSciNetMATH Valdebenito AM, Schuëller GI (2010) A survey on approaches for reliability-based optimization. Struct Multidisc Optim 42:645–663MathSciNetMATH
go back to reference Vapnik VN (1995) The nature of statistical learning theory. Springer, New YorkMATH Vapnik VN (1995) The nature of statistical learning theory. Springer, New YorkMATH
go back to reference Wang GG (2003) Adaptive response surface method using inherited Latin Hypercube design points. J Mech Design 125:210–220 Wang GG (2003) Adaptive response surface method using inherited Latin Hypercube design points. J Mech Design 125:210–220
go back to reference Wang I-J, Spall JC (1998) A constrained simulation perturbation stochastic approximation algorithm based on penalty functions. In: Proceedings of the 1998 IEEE ISIC/CIRA/ISAS Joint Conference, Sept. 14–17, 1998, Gaithersburg, MD, USA Wang I-J, Spall JC (1998) A constrained simulation perturbation stochastic approximation algorithm based on penalty functions. In: Proceedings of the 1998 IEEE ISIC/CIRA/ISAS Joint Conference, Sept. 14–17, 1998, Gaithersburg, MD, USA
go back to reference Youn BD (2007) Adaptive-loop method for non-deterministic design optimization. Proceedings of the Institution of Mechanical Engineers Part O: Journal of Risk and Reliability 221(2):107– 116 Youn BD (2007) Adaptive-loop method for non-deterministic design optimization. Proceedings of the Institution of Mechanical Engineers Part O: Journal of Risk and Reliability 221(2):107– 116
go back to reference Youn BD, Choi KK, Du L (2005) Enriched performance measure approach for reliability-based design optimization. AIAA J 43(4):874–884 Youn BD, Choi KK, Du L (2005) Enriched performance measure approach for reliability-based design optimization. AIAA J 43(4):874–884
go back to reference Zhang J, Taflanidis AA, Medina JC (2017) Sequential approximate optimization for design under uncertainty problems utilizing Kriging metamodeling in augmented input space. Comput Methods Appl Mech Engrg 315:369–395MathSciNet Zhang J, Taflanidis AA, Medina JC (2017) Sequential approximate optimization for design under uncertainty problems utilizing Kriging metamodeling in augmented input space. Comput Methods Appl Mech Engrg 315:369–395MathSciNet
go back to reference Zou T, Mahadevan S (2006) A direct decoupling approach for efficient reliability-based design optimization. Struct Multidisc Optim 31:190–200 Zou T, Mahadevan S (2006) A direct decoupling approach for efficient reliability-based design optimization. Struct Multidisc Optim 31:190–200
Metadata
Title
Surrogate-assisted reliability-based design optimization: a survey and a unified modular framework
Authors
Maliki Moustapha
Bruno Sudret
Publication date
11-05-2019
Publisher
Springer Berlin Heidelberg
Published in
Structural and Multidisciplinary Optimization / Issue 5/2019
Print ISSN: 1615-147X
Electronic ISSN: 1615-1488
DOI
https://doi.org/10.1007/s00158-019-02290-y

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