A new algorithm for variance based importance analysis of models with correlated inputs

Changcong Zhou, Zhenzhou Lu, Luyi Li, Jun Feng, Bintuan Wang

Research output: Contribution to journalArticlepeer-review

36 Scopus citations

Abstract

Importance analysis is aimed at finding the contributions of the inputs to the output uncertainty. For structural models involving correlated input variables, the variance contribution by an individual input variable is decomposed into correlated contribution and uncorrelated contribution in this study. Based on point estimate, this work proposes a new algorithm to conduct variance based importance analysis for correlated input variables. Transformation of the input variables from correlation space to independence space and the computation of conditional distribution in the process ensure that the correlation information is inherited correctly. Different point estimate methods can be employed in the proposed algorithm, thus the algorithm is adaptable and evolvable. Meanwhile, the proposed algorithm is also applicable to uncertainty systems with multiple modes. The proposed algorithm avoids the sampling procedure, which usually consumes a heavy computational cost. Results of several examples in this work have proven the proposed algorithm can be used as an effective tool to deal with uncertainty analysis involving correlated inputs.

Original languageEnglish
Pages (from-to)864-875
Number of pages12
JournalApplied Mathematical Modelling
Volume37
Issue number3
DOIs
StatePublished - 1 Feb 2013

Keywords

  • Correlation
  • Importance measure
  • Input variable
  • Point estimate
  • Variance

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