An ɛ-accelerated bivariate dimension-reduction interval finite element method

Heng Zhao, Feng Li, Chao Fu

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

To address the issue of low accuracy resulting from approximation errors in conventional interval finite element methods, this study presents an ɛ-accelerated bivariate dimension-reduction interval finite element method. The proposed method aims to accurately and efficiently predict the static response of structures with high dimensionality and large uncertainty parameters. We first approximate the structural interval equilibrium equation using a bivariate dimension-reduction method. An explicit expression for the sequence of displacements is derived by approximating the inverse of the structural interval stiffness matrix using the Neumann series. Adjoint-based sensitivity analysis can effectively avoid the response interval expansion caused by parameter coupling. For improving the convergence speed and computational accuracy, the displacement response sequence is accelerated by a vector ɛ acceleration algorithm and an adaptive strategy. Finally, three engineering structures with uncertain-but-bounded parameters are analyzed with the proposed method. Compared with conventional interval analysis methods, the proposed method effectively balances computational accuracy and efficiency, making it more suitable for non-linear and large uncertainty problems with multiple interval parameters. The study shows that ɛ-accelerated bivariate dimension-reduction interval finite element method has a promising application.

Original languageEnglish
Article number116811
JournalComputer Methods in Applied Mechanics and Engineering
Volume421
DOIs
StatePublished - 1 Mar 2024

Keywords

  • Acceleration algorithm
  • Dimension-reduction algorithm
  • Interval finite element
  • Intrusive method
  • Unknown-but-bounded uncertainty

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