English

Nonlinear projection-based model order reduction with machine learning regression for closure error modeling in the latent space

Fluid Dynamics 2026-01-22 v3 Mathematical Physics math.MP

Abstract

A significant advancement in nonlinear projection-based model order reduction (PMOR) is presented through a highly effective methodology. This methodology employs Gaussian process regression (GPR) and radial basis function (RBF) interpolation for closure error modeling in the latent space, offering notable gains in efficiency and expanding the scope of PMOR. Moving beyond the limitations of deep artificial neural networks (ANNs), previously used for this task, this approach provides crucial advantages in terms of interpretability and a reduced demand for extensive training data. The capabilities of GPR and RBFs are showcased in two demanding applications: a two-dimensional parametric inviscid Burgers problem, featuring propagating shocks across the entire computational domain, and a complex three-dimensional turbulent flow simulation around an Ahmed body. The results demonstrate that this innovative approach preserves accuracy and achieves substantial improvements in efficiency and interpretability when contrasted with traditional PMOR and ANN-based closure modeling.

Keywords

Cite

@article{arxiv.2507.00634,
  title  = {Nonlinear projection-based model order reduction with machine learning regression for closure error modeling in the latent space},
  author = {S. Ares de Parga and Radek Tezaur and Carlos G. Hernández and Charbel Farhat},
  journal= {arXiv preprint arXiv:2507.00634},
  year   = {2026}
}
R2 v1 2026-07-01T03:41:22.083Z