Mechanics of materials

Training an AI hyperelastic constitutive model with experimental data

Publié le - Photomechanics - IDICs

Auteurs : Clément Jailin, Antoine Benady, Emmanuel Baranger

A Physics-Augmented Neural network is trained to model a hyperelastic behavior. The dataset used for the training, validation, and test are displacement-force couples obtained from two experiments on a rubber-like material. One experiment was dedicated for the test, to assess the capacity of the model to generalize on unseen loadings and geometries. The trained AI model outperforms a standard Neo Hookean model identified on the same data. Particular attention is paid to the mechanical data information contained in the different datasets.