Towards Generalizable PDE Dynamics Forecasting via Physics-Guided Invariant Learning
Abstract
Advanced deep learning-based approaches have been actively applied to forecast the spatiotemporal physical dynamics governed by partial differential equations (PDEs), which acts as a critical procedure in tackling many science and engineering problems. As real-world physical environments like PDE system parameters are always capricious, how to generalize across unseen out-of-distribution (OOD) forecasting scenarios using limited training data is of great importance. To bridge this barrier, existing methods focus on discovering domain-generalizable representations across various PDE dynamics trajectories. However, their zero-shot OOD generalization capability remains deficient, since extra test-time samples for domain-specific adaptation are still required. This is because the fundamental physical invariance in PDE dynamical systems are yet to be investigated or integrated. To this end, we first explicitly define a two-fold PDE invariance principle, which points out that ingredient operators and their composition relationships remain invariant across different domains and PDE system evolution. Next, to capture this two-fold PDE invariance, we propose a physics-guided invariant learning method termed iMOOE, featuring an Invariance-aligned Mixture Of Operator Expert architecture and a frequency-enriched invariant learning objective. Extensive experiments across simulated benchmarks and real-world applications validate iMOOE's superior in-distribution performance and zero-shot generalization capabilities on diverse OOD forecasting scenarios.
Cite
Text
Li et al. "Towards Generalizable PDE Dynamics Forecasting via Physics-Guided Invariant Learning." International Conference on Learning Representations, 2026.Markdown
[Li et al. "Towards Generalizable PDE Dynamics Forecasting via Physics-Guided Invariant Learning." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/li2026iclr-generalizable/)BibTeX
@inproceedings{li2026iclr-generalizable,
title = {{Towards Generalizable PDE Dynamics Forecasting via Physics-Guided Invariant Learning}},
author = {Li, Siyang and Chen, Yize and Guo, Yan and Huang, Ming and Xiong, Hui},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/li2026iclr-generalizable/}
}