Mathematics (Oct 2021)

A Vine Copula-Based Global Sensitivity Analysis Method for Structures with Multidimensional Dependent Variables

  • Zhiwei Bai,
  • Hongkui Wei,
  • Yingying Xiao,
  • Shufang Song,
  • Sergei Kucherenko

DOI
https://doi.org/10.3390/math9192489
Journal volume & issue
Vol. 9, no. 19
p. 2489

Abstract

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For multidimensional dependent cases with incomplete probability information of random variables, global sensitivity analysis (GSA) theory is not yet mature. The joint probability density function (PDF) of multidimensional variables is usually unknown, meaning that the samples of multivariate variables cannot be easily obtained. Vine copula can decompose the joint PDF of multidimensional variables into the continuous product of marginal PDF and several bivariate copula functions. Based on Vine copula, multidimensional dependent problems can be transformed into two-dimensional dependent problems. A novel Vine copula-based approach for analyzing variance-based sensitivity measures is proposed, which can estimate the main and total sensitivity indices of dependent input variables. Five considered test cases and engineering examples show that the proposed methods are accurate and applicable.

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