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Reliability-based design optimization using kriging surrogates and subset simulation

TLDR
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.
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 population-based adaptive refinement technique until the kriging surrogates are accurate enough for reliability analysis. This original refinement strategy makes it possible to add several observations in the design of experiments at the same time. Reliability and reliability sensitivity analyses are performed by means of the subset simulation technique for the sake of numerical efficiency. The adaptive surrogate-based strategy for reliability estimation is finally involved into a classical gradient-based optimization algorithm in order to solve the RBDO problem. The kriging surrogates are built in a so-called augmented reliability space thus making them reusable from one nested RBDO iteration to the other. The strategy is compared to other approaches available in the literature on three academic examples in the field of structural mechanics.

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Citations
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Journal ArticleDOI

Metamodel-based importance sampling for structural reliability analysis

TL;DR: In this paper, the authors propose to use a Kriging surrogate for the performance function as a means to build a quasi-optimal importance sampling density, which can be applied to analytical and finite element reliability problems and proves efficient up to 100 basic random variables.

Selecting probabilistic approaches for reliability-based design optimization

TL;DR: In this article, a guide for selecting an appropriate method in RBDO is provided by comparing probabilistic design approaches from the perspective of various numerical considerations, and it has been found in the literature that PMA is more efficient and stable than RIA in terms of numerical accuracy, simplicity, and stability.
Journal ArticleDOI

A new surrogate modeling technique combining Kriging and polynomial chaos expansions - Application to uncertainty analysis in computational dosimetry

TL;DR: A novel approach to build such a surrogate model from a design of experiments using the selected polynomials as regression functions for the universal Kriging model, which seems to be an optimal solution between the two other classical approaches.
Journal ArticleDOI

An active-learning algorithm that combines sparse polynomial chaos expansions and bootstrap for structural reliability analysis

TL;DR: In this paper, the authors propose a new method to provide local metamodel error estimates based on bootstrap resampling and sparse polynomial chaos expansions (PCE).
Journal ArticleDOI

An active learning kriging model for hybrid reliability analysis with both random and interval variables

TL;DR: It is figured out that a surrogate model just rightly predicting the sign of performance function can meet the requirement of HRA in accuracy and a methodology based on active learning Kriging (ALK) model named ALK-HRA is proposed.
References
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Journal ArticleDOI

Sparse polynomial chaos expansions and adaptive stochastic finite elements using a regression approach

TL;DR: Blatman et al. as mentioned in this paper proposed a method to build a sparse polynomial chaos expansion of a mechanical model whose input parameters are random, and an adaptive algorithm is described for automatically detecting the significant coefficients of the PC expansion.

Selecting probabilistic approaches for reliability-based design optimization

TL;DR: In this article, a guide for selecting an appropriate method in RBDO is provided by comparing probabilistic design approaches from the perspective of various numerical considerations, and it has been found in the literature that PMA is more efficient and stable than RIA in terms of numerical accuracy, simplicity, and stability.
Journal ArticleDOI

Selecting Probabilistic Approaches for Reliability-Based Design Optimization

TL;DR: It is found that PMA is accurate enough and stable at an allowable efficiency, whereas AMA has some difficulties in RBDO process such as a second-order design sensitivity required for design optimization, an inaccuracy to measure a probability of failure, and numerical instability due to its inaccuracy.
Journal ArticleDOI

An examination of methods for approximating implicit limit state functions from the viewpoint of statistical learning theory

TL;DR: This task is performed from the point of view of the Theory of Statistical Learning, which provides a unified framework for all regression, classification and probability density estimation and it is shown that only one group is useful for structural reliability, according to some specific criteria.
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