DGNet: Discrete Green Networks for Data-Efficient Learning of Spatiotemporal PDEs
About
Spatiotemporal partial differential equations (PDEs) underpin a wide range of scientific and engineering applications. Neural PDE solvers offer a promising alternative to classical numerical methods. However, existing approaches typically require large numbers of training trajectories, while high-fidelity PDE data are expensive to generate. Under limited data, their performance degrades substantially, highlighting their low data efficiency. A key reason is that PDE dynamics embody strong structural inductive biases that are not explicitly encoded in neural architectures, forcing models to learn fundamental physical structure from data. A particularly salient manifestation of this inefficiency is poor generalization to unseen source terms. In this work, we revisit Green's function theory-a cornerstone of PDE theory-as a principled source of structural inductive bias for PDE learning. Based on this insight, we propose DGNet, a discrete Green network for data-efficient learning of spatiotemporal PDEs. The key idea is to transform the Green's function into a graph-based discrete formulation, and embed the superposition principle into the hybrid physics-neural architecture, which reduces the burden of learning physical priors from data, thereby improving sample efficiency. Across diverse spatiotemporal PDE scenarios, DGNet consistently achieves state-of-the-art accuracy using only tens of training trajectories. Moreover, it exhibits robust zero-shot generalization to unseen source terms, serving as a stress test that highlights its data-efficient structural design.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Neural PDE Solving | FitzHugh-Nagumo | MSE1.18e-7 | 10 | |
| Neural PDE Solving | Complex Obstacles | MSE6.69e-5 | 10 | |
| Neural PDE Solving | Laser Heat | MSE17.6 | 10 | |
| 3D laser-heat task | 3D laser-heat task (test) | MSE44.2 | 6 | |
| Fluid and pollutant transport | Contaminant Transport Wavy Channel, Re=300 (test) | MSE6.29e-4 | 6 | |
| light-driven reaction | large-scale light-driven reaction (test) | MSE3.97 | 6 | |
| Spatiotemporal PDE Solving | Allen-Cahn | MSE0.0088 | 6 | |
| Spatiotemporal PDE Solving | Fisher-KPP | MSE2.59e-4 | 6 | |
| Spatiotemporal PDE Solving | cylinder | MSE1.00e-4 | 6 | |
| Spatiotemporal PDE Solving | Sediments | MSE4.60e-4 | 6 |