English

Solving and learning advective multiscale Darcian dynamics with the Neural Basis Method

Numerical Analysis 2026-04-14 v2 Machine Learning Numerical Analysis

Abstract

Physics-governed models are increasingly paired with machine learning for accelerated predictions, yet most "physics--informed" formulations treat the governing equations as a penalty loss whose scale and meaning are set by heuristic balancing. This blurs operator structure, thereby confounding solution approximation error with governing-equation enforcement error and making the solving and learning progress hard to interpret and control. Here we introduce the Neural Basis Method, a projection-based formulation that couples a predefined, physics-conforming neural basis space with an operator-induced residual metric to obtain a well-conditioned deterministic minimization. Stability and reliability then hinge on this metric: the residual is not merely an optimization objective but a computable certificate tied to approximation and enforcement, remaining stable under basis enrichment and yielding reduced coordinates that are learnable across parametric instances. We use advective multiscale Darcian dynamics as a concrete demonstration of this broader point. Our method produce accurate and robust solutions in single solves and enable fast and effective parametric inference with operator learning.

Keywords

Cite

@article{arxiv.2602.17776,
  title  = {Solving and learning advective multiscale Darcian dynamics with the Neural Basis Method},
  author = {Yuhe Wang and Min Wang},
  journal= {arXiv preprint arXiv:2602.17776},
  year   = {2026}
}

Comments

further editing

R2 v1 2026-07-01T10:43:32.748Z