DGNN: A Neural PDE Solver Induced by Discontinuous Galerkin Methods
By: Guanyu Chen , Shengze Xu , Dong Ni and more
Potential Business Impact:
Teaches computers to solve hard math problems faster.
We propose a general framework for the Discontinuous Galerkin-induced Neural Network (DGNN), inspired by the Interior Penalty Discontinuous Galerkin Method (IPDGM). In this approach, the trial space consists of piecewise neural network space defined over the computational domain, while the test function space is composed of piecewise polynomials. We demonstrate the advantages of DGNN in terms of accuracy and training efficiency across several numerical examples, including stationary and time-dependent problems. Specifically, DGNN easily handles high perturbations, discontinuous solutions, and complex geometric domains.
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