TENG-BC: Unified Time-Evolving Natural Gradient for Neural PDE Solvers with General Boundary Conditions
About
Accurately solving time-dependent partial differential equations (PDEs) with neural networks remains challenging due to long-time error accumulation and the difficulty of enforcing general boundary conditions. We introduce TENG-BC, a high-precision neural PDE solver based on the Time-Evolving Natural Gradient, designed to perform under general boundary constraints. At each time step, TENG-BC performs a boundary-aware optimization that jointly enforces interior dynamics and boundary conditions, accommodating Dirichlet, Neumann, Robin, and mixed types within a unified framework. This formulation admits a natural-gradient interpretation, enabling stable time evolution without delicate penalty tuning. Across benchmarks over diffusion, transport, and nonlinear PDEs with various boundary conditions, TENG-BC achieves solver-level accuracy under comparable sampling budgets, outperforming conventional solvers and physics-informed neural network (PINN) baselines.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Neural PDE Solving | Burgers equation periodic boundary conditions spectral-1024 reference (T=1) | Relative L2 Error2.24e-6 | 5 | |
| Neural PDE Solving | Burgers equation periodic boundary conditions spectral-1024 reference (T=2) | Relative L2 Error2.52e-5 | 5 | |
| Neural PDE Solving | Burgers equation periodic boundary conditions spectral-1024 reference (T=3) | Relative L2 Error1.15e-4 | 5 | |
| Neural PDE Solving | Burgers equation periodic boundary conditions spectral-1024 reference (T=4) | Relative L2 Error2.24e-4 | 5 |