PeSANet: Physics-encoded Spectral Attention Network for Simulating PDE-Governed Complex Systems
About
Accurately modeling and forecasting complex systems governed by partial differential equations (PDEs) is crucial in various scientific and engineering domains. However, traditional numerical methods struggle in real-world scenarios due to incomplete or unknown physical laws. Meanwhile, machine learning approaches often fail to generalize effectively when faced with scarce observational data and the challenge of capturing local and global features. To this end, we propose the Physics-encoded Spectral Attention Network (PeSANet), which integrates local and global information to forecast complex systems with limited data and incomplete physical priors. The model consists of two key components: a physics-encoded block that uses hard constraints to approximate local differential operators from limited data, and a spectral-enhanced block that captures long-range global dependencies in the frequency domain. Specifically, we introduce a novel spectral attention mechanism to model inter-spectrum relationships and learn long-range spatial features. Experimental results demonstrate that PeSANet outperforms existing methods across all metrics, particularly in long-term forecasting accuracy, providing a promising solution for simulating complex systems with limited data and incomplete physics.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Partial Differential Equation Solving | KSE 1D (Case E1) | Relative L2 Error0.2028 | 12 | |
| Partial Differential Equation Solving | NSE Case E5 10^-5, f2 | Relative L2 Error0.9705 | 12 | |
| Partial Differential Equation Solving | Burgers Case E6 2D | Relative L2 Error0.2667 | 12 | |
| Partial Differential Equation Solving | Burgers Case E8 Mixed BC | Relative L2 Error0.3398 | 12 |