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Indentation offers advantages over other mechanical property measurement tests, requiring minimal material, being relatively non-destructive and adaptable to multi-layered samples like polymer-coated steel plates. However, calibrating constitutive models by iteratively matching experimental indentation force–displacement curves via FEM simulations is computationally intensive. This study addresses the indentation curve matching problem by using a Graph Neural Network (GNN)-based surrogate model to reduce calibration time for viscoelastic materials. By combining GNN with Gated Recurrent Units (GRUs) to capture the material temporal dependency, the model can infer stress–displacement fields as well as the corresponding force–displacement curves using both synthetic and experimental data for training. Performing calibration through an indentation test on a polymer-coated steel panel, the model demonstrates a significant reduction in computational time compared to traditional FEM methods while accurately inferring stress and displacement fields. The surrogate model reliably predicts material behavior within the training range of the parameters, making the trained GNN well-suited for materials that can be described by the same constitutive model used to generate the synthetic data. This study, by improving existing GNN architectures, develops the first surrogate model of a 2D FEM model that includes viscoelasticity and contact. Additionally, a novel procedure for calibrating viscoelastic materials through indentation testing is presented, suitable for samples like thin polymer layer coatings on steel panels. The generality of this procedure highlights its potential applicability to manufacturing processes, such as optimizing the indenting pattern applied to soft coatings on metal sheet in a roll-to-roll hot embossing process.
Secchi et al. (Mon,) studied this question.
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