LGOct 29, 2025

Hierarchical Physics-Embedded Learning for Spatiotemporal Dynamical Systems

arXiv:2510.25306v1h-index: 3
Originality Incremental advance
AI Analysis

This addresses the challenge of modeling far-from-equilibrium systems with incomplete physics, offering a method that balances data-driven flexibility with physical constraints, though it appears incremental in combining existing techniques like Fourier Neural Operators with symbolic components.

The paper tackles modeling complex spatiotemporal dynamical systems by proposing a hierarchical physics-embedded learning framework that integrates prior physical knowledge into data-driven models, achieving improved physical consistency and data efficiency for forward prediction and inverse discovery from sparse, noisy data.

Modeling complex spatiotemporal dynamics, particularly in far-from-equilibrium systems, remains a grand challenge in science. The governing partial differential equations (PDEs) for these systems are often intractable to derive from first principles, due to their inherent complexity, characterized by high-order derivatives and strong nonlinearities, coupled with incomplete physical knowledge. This has spurred the development of data-driven methods, yet these approaches face limitations: Purely data-driven models are often physically inconsistent and data-intensive, while existing physics-informed methods lack the structural capacity to represent complex operators or systematically integrate partial physical knowledge. Here, we propose a hierarchical physics-embedded learning framework that fundamentally advances both the forward spatiotemporal prediction and inverse discovery of physical laws from sparse and noisy data. The key innovation is a two-level architecture that mirrors the process of scientific discovery: the first level learns fundamental symbolic components of a PDE, while the second learns their governing combinations. This hierarchical decomposition not only reduces learning complexity but, more importantly, enables a structural integration of prior knowledge. Known physical laws are directly embedded into the models computational graph, guaranteeing physical consistency and improving data efficiency. By building the framework upon adaptive Fourier Neural Operators, we can effectively capture the non-local dependencies and high-order operators characteristic of dynamical systems. Additionally, by structurally decoupling known and unknown terms, the framework further enables interpretable discovery of underlying governing equations through symbolic regression, without presupposing functional forms.

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