Non-intrusive Learning of Physics-Informed Spatio-temporal Surrogate for Accelerating Design

arXiv cs.LG / 4/17/2026

📰 NewsIdeas & Deep AnalysisModels & Research

Key Points

  • The paper introduces PISTM, a physics-informed spatio-temporal surrogate modeling framework aimed at accelerating end-to-end engineering design when high-fidelity multi-physics simulations are too expensive.
  • It addresses a key weakness of purely data-driven surrogate models—poor generalizability to inputs outside the training distribution—by constraining learning using the underlying system’s physics.
  • PISTM uses Koopman autoencoders to learn spatio-temporal dynamics in a non-intrusive way, avoiding modifications to the original simulator.
  • A coupled spatio-temporal surrogate is used to predict the Koopman operator’s behavior over a specified future time window for unknown operating conditions.
  • The approach is evaluated on a 2D incompressible fluid flow benchmark: flow around a cylinder.

Abstract

Most practical engineering design problems involve nonlinear spatio-temporal dynamical systems. Multi-physics simulations are often performed to capture the fine spatio-temporal scales which govern the evolution of these systems. However, these simulations are often high-fidelity in nature, and can be computationally very expensive. Hence, generating data from these expensive simulations becomes a bottleneck in an end-to-end engineering design process. Spatio-temporal surrogate modeling of these dynamical systems has been a popular data-driven solution to tackle this computational bottleneck. This is because accurate machine learning models emulating the dynamical systems can be orders of magnitude faster than the actual simulations. However, one key limitation of purely data-driven approaches is their lack of generalizability to inputs outside the training distribution. In this paper, we propose a physics-informed spatio-temporal surrogate modeling (PISTM) framework constrained by the physics of the underlying dynamical system. The framework leverages state-of-the-art advancements in the field of Koopman autoencoders to learn the underlying spatio-temporal dynamics in a non-intrusive manner, coupled with a spatio-temporal surrogate model which predicts the behavior of the Koopman operator in a specified time window for unknown operating conditions. We evaluate our framework on a prototypical fluid flow problem of interest: two-dimensional incompressible flow around a cylinder.