Accelerated Training of Physics-Informed Neural Networks (PINNs) using Meshless Discretizations
–Neural Information Processing Systems
Physics-informed neural networks (PINNs) are neural networks trained by using physical laws in the form of partial differential equations (PDEs) as soft constraints. We present a new technique for the accelerated training of PINNs that combines modern scientific computing techniques with machine learning: discretely-trained PINNs (DT-PINNs). The repeated computation of the partial derivative terms in the PINN loss functions via automatic differentiation during training is known to be computationally expensive, especially for higher-order derivatives. DT-PINNs are trained by replacing these exact spatial derivatives with high-order accurate numerical discretizations computed using meshless radial basis function-finite differences (RBF-FD) and applied via sparse-matrix vector multiplication. While in principle any high-order discretization may be used, the use of RBF-FD allows for DT-PINNs to be trained even on point cloud samples placed on irregular domain geometries.
Neural Information Processing Systems
Apr-24-2026, 09:50:21 GMT
- Country:
- North America > United States (0.93)
- Genre:
- Instructional Material (0.70)
- Research Report > New Finding (0.68)
- Technology: