Continuous PDE Dynamics Forecasting with Implicit Neural Representations
Abstract
Effective data-driven PDE forecasting methods often rely on fixed spatial and / or temporal discretizations. This raises limitations in real-world applications like weather prediction where flexible extrapolation at arbitrary spatiotemporal locations is required. We address this problem by introducing a new data-driven approach, DINo, that models a PDE's flow with continuous-time dynamics of spatially continuous functions. This is achieved by embedding spatial observations independently of their discretization via Implicit Neural Representations in a small latent space temporally driven by a learned ODE. This separate and flexible treatment of time and space makes DINo the first data-driven model to combine the following advantages. It extrapolates at arbitrary spatial and temporal locations; it can learn from sparse irregular grids or manifolds; at test time, it generalizes to new grids or resolutions. DINo outperforms alternative neural PDE forecasters in a variety of challenging generalization scenarios on representative PDE systems.
Cite
Text
Yin et al. "Continuous PDE Dynamics Forecasting with Implicit Neural Representations." NeurIPS 2022 Workshops: AI4Science, 2022.Markdown
[Yin et al. "Continuous PDE Dynamics Forecasting with Implicit Neural Representations." NeurIPS 2022 Workshops: AI4Science, 2022.](https://mlanthology.org/neuripsw/2022/yin2022neuripsw-continuous/)BibTeX
@inproceedings{yin2022neuripsw-continuous,
title = {{Continuous PDE Dynamics Forecasting with Implicit Neural Representations}},
author = {Yin, Yuan and Kirchmeyer, Matthieu and Franceschi, Jean-Yves and Rakotomamonjy, Alain and Gallinari, Patrick},
booktitle = {NeurIPS 2022 Workshops: AI4Science},
year = {2022},
url = {https://mlanthology.org/neuripsw/2022/yin2022neuripsw-continuous/}
}