TinSn50 / PINNs-Applications-in-Linear-Elastic-Solid-MechanicsLinks
This project is divided in a two parts. In first study, Lame parameters are identified using tanh activation function. After that, six activation functions are analysed on the basis of minimum loss, training time and convergence order for different error norms.
☆12Updated 2 years ago
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