CANN
Constitutive artificial neural networks: a fast and general approach to predictive data-driven constitutive modeling by deep learning. In this paper we introduce constitutive artificial neural networks (CANNs), a novel machine learning architecture for data-driven modeling of the mechanical constitutive behavior of materials. CANNs are able to incorporate by their very design information from three different sources, namely stress-strain data, theoretical knowledge from materials theory, and diverse additional information (e.g., about microstructure or materials processing). CANNs can easily and efficiently be implemented in standard computational software. They require only a low-to-moderate amount of training data and training time to learn without human guidance the constitutive behavior also of complex nonlinear and anisotropic materials. Moreover, in a simple academic example we demonstrate how the input of microstructural data can endow CANNs with the ability to describe not only the behavior of known materials but to predict also the properties of new materials where no stress-strain data are available yet. This ability may be particularly useful for the future in-silico design of new materials. The developed source code of the CANN architecture and accompanying example data sets are available at url{https://github.com/ConstitutiveANN/CANN}.
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References in zbMATH (referenced in 6 articles , 1 standard article )
Showing results 1 to 6 of 6.
Sorted by year (- Fuhg, Jan N.; Bouklas, Nikolaos: On physics-informed data-driven isotropic and anisotropic constitutive models through probabilistic machine learning and space-filling sampling (2022)
- Kalina, Karl A.; Linden, Lennart; Brummund, Jörg; Metsch, Philipp; Kästner, Markus: Automated constitutive modeling of isotropic hyperelasticity based on artificial neural networks (2022)
- Gärtner, Til; Fernández, Mauricio; Weeger, Oliver: Nonlinear multiscale simulation of elastic beam lattices with anisotropic homogenized constitutive models based on artificial neural networks (2021)
- Guo, Theron; Rokoš, Ondřej; Veroy, Karen: Learning constitutive models from microstructural simulations via a non-intrusive reduced basis method (2021)
- Linka, Kevin; Hillgärtner, Markus; Abdolazizi, Kian P.; Aydin, Roland C.; Itskov, Mikhail; Cyron, Christian J.: Constitutive artificial neural networks: a fast and general approach to predictive data-driven constitutive modeling by deep learning (2021)
- Zhao, Hongbo; Braatz, Richard D.; Bazant, Martin Z.: Image inversion and uncertainty quantification for constitutive laws of pattern formation (2021)