Pseudo-Hamiltonian neural networks for learning partial differential equations
About
Pseudo-Hamiltonian neural networks (PHNN) were recently introduced for learning dynamical systems that can be modelled by ordinary differential equations. In this paper, we extend the method to partial differential equations. The resulting model is comprised of up to three neural networks, modelling terms representing conservation, dissipation and external forces, and discrete convolution operators that can either be learned or be given as input. We demonstrate numerically the superior performance of PHNN compared to a baseline model that models the full dynamics by a single neural network. Moreover, since the PHNN model consists of three parts with different physical interpretations, these can be studied separately to gain insight into the system, and the learned model is applicable also if external forces are removed or changed.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| PDE Rollout Prediction | 2D Shallow Water Equations (SWE) random initial condition | Rollout MSE1.1 | 6 | |
| PDE Rollout Prediction | Incompressible Taylor–Green vortex | Rollout MSE3.43 | 6 | |
| PDE Rollout Prediction | 2D Shallow Water Equations (SWE) Gaussian-pulse initial condition | Rollout MSE8.57 | 6 |