English

Learning dominant physical processes with data-driven balance models

Fluid Dynamics 2021-03-16 v2

Abstract

Throughout the history of science, physics-based modeling has relied on judiciously approximating observed dynamics as a balance between a few dominant processes. However, this traditional approach is mathematically cumbersome and only applies in asymptotic regimes where there is a strict separation of scales in the physics. Here, we automate and generalize this approach to non-asymptotic regimes by introducing the idea of an equation space, in which different local balances appear as distinct subspace clusters. Unsupervised learning can then automatically identify regions where groups of terms may be neglected. We show that our data-driven balance models successfully delineate dominant balance physics in a much richer class of systems. In particular, this approach uncovers key mechanistic models in turbulence, combustion, nonlinear optics, geophysical fluids, and neuroscience.

Keywords

Cite

@article{arxiv.2001.10019,
  title  = {Learning dominant physical processes with data-driven balance models},
  author = {Jared L. Callaham and James V. Koch and Bingni W. Brunton and J. Nathan Kutz and Steven L. Brunton},
  journal= {arXiv preprint arXiv:2001.10019},
  year   = {2021}
}

Comments

30 pages, 13 figures

R2 v1 2026-06-23T13:22:12.946Z