The content introduces the Heterogeneous Peridynamic Neural Operators (HeteroPNO) approach for data-driven constitutive modeling of heterogeneous anisotropic materials, focusing on biotissues. The method aims to learn a nonlocal constitutive law and material microstructure from loading field-displacement field measurements. The two-phase learning approach involves training a homogeneous constitutive law and then reinitializing it with a fiber orientation field for each material point. The HeteroPNO architecture ensures objective material models with physical interpretability, capturing anisotropy and heterogeneity in biological tissues. The approach is validated using digital image correlation data on tissue samples, demonstrating consistency with observations from imaging techniques. The framework provides predictions for displacement and stress fields for new loading instances.
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by Siavash Jafa... о arxiv.org 03-28-2024
https://arxiv.org/pdf/2403.18597.pdfГлибші Запити