Title of article
Global sensitivity analysis using polynomial chaos expansions
Author/Authors
Bruno Sudret، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
16
From page
964
To page
979
Abstract
Global sensitivity analysis (SA) aims at quantifying the respective effects of input random variables (or combinations thereof) onto the variance of the response of a physical or mathematical model. Among the abundant literature on sensitivity measures, the Sobol’ indices have received much attention since they provide accurate information for most models. The paper introduces generalized polynomial chaos expansions (PCE) to build surrogate models that allow one to compute the Sobol’ indices analytically as a post-processing of the PCE coefficients. Thus the computational cost of the sensitivity indices practically reduces to that of estimating the PCE coefficients. An original non intrusive regression-based approach is proposed, together with an experimental design of minimal size. Various application examples illustrate the approach, both from the field of global SA (i.e. well-known benchmark problems) and from the field of stochastic mechanics. The proposed method gives accurate results for various examples that involve up to eight input random variables, at a computational cost which is 2–3 orders of magnitude smaller than the traditional Monte Carlo-based evaluation of the Sobol’ indices.
Keywords
Regression , Stochastic finite elements , Global sensitivity analysis , Sobol’ indices , analysis of variance , Generalized chaos , Polynomial chaos
Journal title
Reliability Engineering and System Safety
Serial Year
2008
Journal title
Reliability Engineering and System Safety
Record number
1187808
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