Hierarchical surrogate model with dimensionality reduction technique for high-dimensional uncertainty propagation

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Abstract

In this article, hierarchical surrogate model combined with dimensionality reduction technique is investigated for uncertainty propagation of high-dimensional problems. In the proposed method, a low-fidelity sparse polynomial chaos expansion model is first constructed to capture the global trend of model response and exploit a low-dimensional active subspace (AS). Then a high-fidelity (HF) stochastic Kriging model is built on the reduced space by mapping the original high-dimensional input onto the identified AS. The effective dimensionality of the AS is estimated by maximum likelihood estimation technique. Finally, an accurate HF surrogate model is obtained for uncertainty propagation of high-dimensional stochastic problems. The proposed method is validated by two challenging high-dimensional stochastic examples, and the results demonstrate that our method is effective for high-dimensional uncertainty propagation.

Original languageEnglish
Pages (from-to)2068-2085
Number of pages18
JournalInternational Journal for Numerical Methods in Engineering
Volume121
Issue number9
DOIs
StatePublished - 15 May 2020

Keywords

  • active subspace
  • dimensionality reduction
  • polynomial chaos expansion
  • stochastic Kriging
  • uncertainty propagation

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