TL;DR
This paper introduces Implicit Fourier Neural Operators (IFNOs), a deep neural network architecture designed to learn complex material responses directly from data, outperforming traditional models especially in heterogeneous and defect-laden materials.
Contribution
The paper presents a novel deep neural operator architecture, IFNO, that models implicit mappings in material responses, capturing long-range dependencies and handling complex heterogeneity.
Findings
IFNO outperforms traditional constitutive models in predicting displacement fields.
The method effectively learns from digital image correlation measurements.
IFNO captures complex material behaviors like hyperelasticity and anisotropy.
Abstract
Constitutive modeling based on continuum mechanics theory has been a classical approach for modeling the mechanical responses of materials. However, when constitutive laws are unknown or when defects and/or high degrees of heterogeneity are present, these classical models may become inaccurate. In this work, we propose to use data-driven modeling, which directly utilizes high-fidelity simulation and/or experimental measurements to predict a material's response without using conventional constitutive models. Specifically, the material response is modeled by learning the implicit mappings between loading conditions and the resultant displacement and/or damage fields, with the neural network serving as a surrogate for a solution operator. To model the complex responses due to material heterogeneity and defects, we develop a novel deep neural operator architecture, which we coin as the…
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