Importance analysis for models with correlated variables and its sparse grid solution

Luyi Li, Zhenzhou Lu

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

For structural models involving correlated input variables, a novel interpretation for variance-based importance measures is proposed based on the contribution of the correlated input variables to the variance of the model output. After the novel interpretation of the variance-based importance measures is compared with the existing ones, two solutions of the variance-based importance measures of the correlated input variables are built on the sparse grid numerical integration (SGI): double-loop nested sparse grid integration (DSGI) method and single loop sparse grid integration (SSGI) method. The DSGI method solves the importance measure by decreasing the dimensionality of the input variables procedurally, while SSGI method performs importance analysis through extending the dimensionality of the inputs. Both of them can make full use of the advantages of the SGI, and are well tailored for different situations. By analyzing the results of several numerical and engineering examples, it is found that the novel proposed interpretation about the importance measures of the correlated input variables is reasonable, and the proposed methods for solving importance measures are efficient and accurate.

Original languageEnglish
Pages (from-to)207-217
Number of pages11
JournalReliability Engineering and System Safety
Volume119
DOIs
StatePublished - 2013

Keywords

  • Correlated input variables
  • Single loop Monte Carlo method
  • Sparse grid integration
  • Variance-based importance measure

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