English

On Geometry Regularization in Autoencoder Reduced-Order Models with Latent Neural ODE Dynamics

Machine Learning 2026-03-04 v1 Numerical Analysis Numerical Analysis Computational Physics

Abstract

We investigate geometric regularization strategies for learned latent representations in encoder--decoder reduced-order models. In a fixed experimental setting for the advection--diffusion--reaction (ADR) equation, we model latent dynamics using a neural ODE and evaluate four regularization approaches applied during autoencoder pre-training: (a) near-isometry regularization of the decoder Jacobian, (b) a stochastic decoder gain penalty based on random directional gains, (c) a second-order directional curvature penalty, and (d) Stiefel projection of the first decoder layer. Across multiple seeds, we find that (a)--(c) often produce latent representations that make subsequent latent-dynamics training with a frozen autoencoder more difficult, especially for long-horizon rollouts, even when they improve local decoder smoothness or related sensitivity proxies. In contrast, (d) consistently improves conditioning-related diagnostics of the learned latent dynamics and tends to yield better rollout performance. We discuss the hypothesis that, in this setting, the downstream impact of latent-geometry mismatch outweighs the benefits of improved decoder smoothness.

Keywords

Cite

@article{arxiv.2603.03238,
  title  = {On Geometry Regularization in Autoencoder Reduced-Order Models with Latent Neural ODE Dynamics},
  author = {Mikhail Osipov},
  journal= {arXiv preprint arXiv:2603.03238},
  year   = {2026}
}

Comments

25 pages, 2 figures, 3 tables

R2 v1 2026-07-01T11:01:37.392Z