LOCALIZED MODEL REDUCTION FOR NONLINEAR ELLIPTIC PARTIAL DIFFERENTIAL EQUATIONS: LOCALIZED TRAINING, PARTITION OF UNITY, AND ADAPTIVE ENRICHMENT

Kathrin Smetana, Tommaso Taddei

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

We propose a component-based (CB) parametric model order reduction (pMOR) formulation for parameterized nonlinear elliptic partial differential equations. CB-pMOR is designed to deal with large-scale problems for which full-order solves are not affordable in a reasonable time frame or parameters' variations induce topology changes that prevent the application of monolithic pMOR techniques. We rely on the partition-of-unity method to devise global approximation spaces from local reduced spaces, and on Galerkin projection to compute the global state estimate. We propose a randomized data compression algorithm based on oversampling for the construction of the components' reduced spaces: the approach exploits random boundary conditions of controlled smoothness on the oversampling boundary. We further propose an adaptive residual-based enrichment algorithm that exploits global reduced-order solves on representative systems to update the local reduced spaces. We prove exponential convergence of the enrichment procedure for linear coercive problems; we further present numerical results for a two-dimensional nonlinear diffusion problem to illustrate the many features of our methodology and demonstrate its effectiveness.

Original languageEnglish
Pages (from-to)A1300-A1331
JournalSIAM Journal on Scientific Computing
Volume45
Issue number3
DOIs
StatePublished - 2023

Keywords

  • domain decomposition
  • model order reduction
  • parameterized PDEs

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