GEPS: Boosting Generalization in Parametric PDE Neural Solvers through Adaptive Conditioning
About
Solving parametric partial differential equations (PDEs) presents significant challenges for data-driven methods due to the sensitivity of spatio-temporal dynamics to variations in PDE parameters. Machine learning approaches often struggle to capture this variability. To address this, data-driven approaches learn parametric PDEs by sampling a very large variety of trajectories with varying PDE parameters. We first show that incorporating conditioning mechanisms for learning parametric PDEs is essential and that among them, $\textit{adaptive conditioning}$, allows stronger generalization. As existing adaptive conditioning methods do not scale well with respect to the number of parameters to adapt in the neural solver, we propose GEPS, a simple adaptation mechanism to boost GEneralization in Pde Solvers via a first-order optimization and low-rank rapid adaptation of a small set of context parameters. We demonstrate the versatility of our approach for both fully data-driven and for physics-aware neural solvers. Validation performed on a whole range of spatio-temporal forecasting problems demonstrates excellent performance for generalizing to unseen conditions including initial conditions, PDE coefficients, forcing terms and solution domain. $\textit{Project page}$: https://geps-project.github.io
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| PDE Dynamics Forecasting | Navier-Stokes (NS) OOD | nMSE0.413 | 11 | |
| PDE Dynamics Forecasting | Navier-Stokes (ID) | nMSE0.207 | 11 | |
| PDE Dynamics Forecasting | Heat Convection (HC) (OOD) | nMSE1.35 | 7 | |
| PDE Dynamics Forecasting | DR (ID) | nMSE0.0087 | 7 | |
| PDE Dynamics Forecasting | Diffusion-Reaction (DR) (OOD) | nMSE0.0794 | 7 | |
| PDE Dynamics Forecasting | Burgers OOD | nMSE0.0756 | 7 | |
| PDE Dynamics Forecasting | Heat Convection (ID) | NMSE0.943 | 7 | |
| PDE Dynamics Forecasting | Burgers (ID) | nMSE0.0224 | 7 | |
| PDE Dynamics Forecasting | Shallow Water OOD | nMSE2.76e-4 | 6 | |
| Spatiotemporal physical dynamics forecasting | SSE dynamics | nMSE (Mean)0.0341 | 6 |