tittuvmathew / tvmathew1986-Physics_Informed_Neural_Network_for_Continuum_Mechanics_applicationLinks
The repository contains implementations of examples provided in the literature on energy minimization based approach to Physics Informed Neural Network implementation in Tensorflow using Jupyter notebooks.
☆11Updated 5 years ago
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