Space-Time Continuous PDE Forecasting Using Equivariant Neural Fields
Abstract
Recently, Conditional Neural Fields (NeFs) have emerged as a powerful modelling paradigm for PDEs, by learning solutions as flows in the latent space of the Conditional NeF. Although benefiting from favourable properties of NeFs such as grid-agnosticity and space-time-continuous dynamics modelling, this approach limits the ability to impose known constraints of the PDE on the solutions -- such as symmetries or boundary conditions -- in favour of modelling flexibility. Instead, we propose a space-time continuous NeF-based solving framework that - by preserving geometric information in the latent space of the Conditional NeF - preserves known symmetries of the PDE. We show that modelling solutions as flows of pointclouds over the group of interest $G$ improves generalization and data-efficiency. Furthermore, we validate that our framework readily generalizes to unseen spatial and temporal locations, as well as geometric transformations of the initial conditions - where other NeF-based PDE forecasting methods fail -, and improve over baselines in a number of challenging geometries.
Cite
Text
Knigge et al. "Space-Time Continuous PDE Forecasting Using Equivariant Neural Fields." Neural Information Processing Systems, 2024. doi:10.52202/079017-2438Markdown
[Knigge et al. "Space-Time Continuous PDE Forecasting Using Equivariant Neural Fields." Neural Information Processing Systems, 2024.](https://mlanthology.org/neurips/2024/knigge2024neurips-spacetime/) doi:10.52202/079017-2438BibTeX
@inproceedings{knigge2024neurips-spacetime,
title = {{Space-Time Continuous PDE Forecasting Using Equivariant Neural Fields}},
author = {Knigge, David M. and Wessels, David R. and Valperga, Riccardo and Papa, Samuele and Sonke, Jan-Jakob and Gavves, Efstratios and Bekkers, Erik J.},
booktitle = {Neural Information Processing Systems},
year = {2024},
doi = {10.52202/079017-2438},
url = {https://mlanthology.org/neurips/2024/knigge2024neurips-spacetime/}
}