Multiprecision computing for multistage fractional physics-informed neural networks
Multiprecision computing for multistage fractional physics-informed neural networks
Fractional physics-informed neural networks (fPINNs) have been successfully introduced in [Pang, Lu and Karniadakis, SIAM J. Sci. Comput. 41 (2019) A2603-A2626], which observe relative errors of $10^{-3} \, \sim \, 10^{-4}$ for the subdiffusion equations. However their high-precision (multiprecision) numerical solution remains challenging, due to the limited regularity of the subdiffusion model caused by the nonlocal operator. To fill in the gap, we present the multistage fPINNs based on traditional multistage PINNs [Wang and Lai, J. Comput. Phys. 504 (2024) 112865]. Numerical experiments show that the relative errors improve to $10^{-7} \, \sim \, 10^{-8}$ for the subdiffusion equations on uniform or nouniform meshes.
Na Xue、Minghua Chen
计算技术、计算机技术物理学
Na Xue,Minghua Chen.Multiprecision computing for multistage fractional physics-informed neural networks[EB/OL].(2025-05-28)[2025-07-22].https://arxiv.org/abs/2505.22377.点此复制
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