Laplace-fPINNs: Laplace-based fractional physics-informed neural networks for solving forward and inverse problems of a time fractional equation
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Publication:6630929
DOI10.4208/eajam.2023-197.171223MaRDI QIDQ6630929
Xiong-bin Yan, Zheng Ma, Zhi-Qin John Xu
Publication date: 31 October 2024
Published in: East Asian Journal on Applied Mathematics (Search for Journal in Brave)
Laplace transformnumerical inverse Laplace transformphysics-informed neural networkstime fractional equations
Shocks and singularities for hyperbolic equations (35L67) Fractional partial differential equations (35R11) Euler equations (35Q31)
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