Finite Difference Neural Networks: Fast Prediction of Partial Differential Equations

2 Jun 2020Zheng ShiNur Sila GulgecAlbert S. BerahasShamim N. PakzadMartin Takáč

Discovering the underlying behavior of complex systems is an important topic in many science and engineering disciplines. In this paper, we propose a novel neural network framework, finite difference neural networks (FDNet), to learn partial differential equations from data... (read more)

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