Unifying the design space and optimizing linear and nonlinear truss metamaterials by generative modeling

Journal Article (2023)
Author(s)

Li Zheng (ETH Zürich)

Konstantinos Karapiperis (ETH Zürich)

Siddhant Kumar (TU Delft - Team Sid Kumar)

Dennis M. Kochmann (ETH Zürich)

Research Group
Team Sid Kumar
Copyright
© 2023 Li Zheng, Konstantinos Karapiperis, Siddhant Kumar, Dennis M. Kochmann
DOI related publication
https://doi.org/10.1038/s41467-023-42068-x
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 Li Zheng, Konstantinos Karapiperis, Siddhant Kumar, Dennis M. Kochmann
Research Group
Team Sid Kumar
Issue number
1
Volume number
14
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Abstract

The rise of machine learning has fueled the discovery of new materials and, especially, metamaterials—truss lattices being their most prominent class. While their tailorable properties have been explored extensively, the design of truss-based metamaterials has remained highly limited and often heuristic, due to the vast, discrete design space and the lack of a comprehensive parameterization. We here present a graph-based deep learning generative framework, which combines a variational autoencoder and a property predictor, to construct a reduced, continuous latent representation covering an enormous range of trusses. This unified latent space allows for the fast generation of new designs through simple operations (e.g., traversing the latent space or interpolating between structures). We further demonstrate an optimization framework for the inverse design of trusses with customized mechanical properties in both the linear and nonlinear regimes, including designs exhibiting exceptionally stiff, auxetic, pentamode-like, and tailored nonlinear behaviors. This generative model can predict manufacturable (and counter-intuitive) designs with extreme target properties beyond the training domain.

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