Reliability-based design optimization using kriging surrogates and subset simulation
V. Dubourg, B. Sudret, J.-M. Bourinet

TL;DR
This paper presents an adaptive, surrogate-based approach combining kriging and subset simulation for efficient reliability-based design optimization, especially when dealing with expensive performance models.
Contribution
It introduces a novel refinement strategy for kriging surrogates that quantifies and reduces error, integrated into RBDO with enhanced efficiency and reusability.
Findings
The method accurately estimates failure probabilities with fewer evaluations.
It outperforms existing approaches in three structural mechanics examples.
The approach effectively quantifies and propagates surrogate error.
Abstract
The aim of the present paper is to develop a strategy for solving reliability-based design optimization (RBDO) problems that remains applicable when the performance models are expensive to evaluate. Starting with the premise that simulation-based approaches are not affordable for such problems, and that the most-probable-failure-point-based approaches do not permit to quantify the error on the estimation of the failure probability, an approach based on both metamodels and advanced simulation techniques is explored. The kriging metamodeling technique is chosen in order to surrogate the performance functions because it allows one to genuinely quantify the surrogate error. The surrogate error onto the limit-state surfaces is propagated to the failure probabilities estimates in order to provide an empirical error measure. This error is then sequentially reduced by means of a…
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