Prediction of spatiotemporal dynamics using deep learning: coupled neural networks of long short-terms memory, auto-encoder and physics-informed neural networks
DOI10.1016/J.PHYSD.2024.134399MaRDI QIDQ6650113
Feifan Zhang, Luowei Tan, Weixi Gong, Ziyang Zhang, Tailai Chen, Heng Gui
Publication date: 6 December 2024
Published in: Physica D (Search for Journal in Brave)
Numerical computation using splines (65D07) Artificial neural networks and deep learning (68T07) Numerical optimization and variational techniques (65K10) Reaction-diffusion equations (35K57) Finite difference methods for initial value and initial-boundary value problems involving PDEs (65M06) Numerical interpolation (65D05) Developmental biology, pattern formation (92C15) Ecology (92D40) Finite difference methods for boundary value problems involving PDEs (65N06) Numerical differentiation (65D25) Bifurcations in context of PDEs (35B32) Numerical methods for partial differential equations, initial value and time-dependent initial-boundary value problems (65M99) Plant biology (92C80) Pattern formations in context of PDEs (35B36)
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