Neural network-based Godunov corrections for approximate Riemann solvers using bi-fidelity learning
- URL: http://arxiv.org/abs/2503.13248v1
- Date: Mon, 17 Mar 2025 15:01:26 GMT
- Title: Neural network-based Godunov corrections for approximate Riemann solvers using bi-fidelity learning
- Authors: Akshay Thakur, Matthew J. Zahr,
- Abstract summary: We propose constructing neural network-based surrogate models, trained using supervised learning, to map interior and exterior conservative state variables to the corresponding exact flux.<n>The performance of the proposed approaches is demonstrated through applications to one-dimensional and two-dimensional partial differential equations.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Riemann problem is fundamental in the computational modeling of hyperbolic partial differential equations, enabling the development of stable and accurate upwind schemes. While exact solvers provide robust upwinding fluxes, their high computational cost necessitates approximate solvers. Although approximate solvers achieve accuracy in many scenarios, they produce inaccurate solutions in certain cases. To overcome this limitation, we propose constructing neural network-based surrogate models, trained using supervised learning, designed to map interior and exterior conservative state variables to the corresponding exact flux. Specifically, we propose two distinct approaches: one utilizing a vanilla neural network and the other employing a bi-fidelity neural network. The performance of the proposed approaches is demonstrated through applications to one-dimensional and two-dimensional partial differential equations, showcasing their robustness and accuracy.
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