articleNature Machine IntelligenceDec 11, 2023HYBRID OA

Inverse design of nonlinear mechanical metamaterials via video denoising diffusion models

ETH Zurich

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Abstract

Abstract The accelerated inverse design of complex material properties—such as identifying a material with a given stress–strain response over a nonlinear deformation path—holds great potential for addressing challenges from soft robotics to biomedical implants and impact mitigation. Although machine learning models have provided such inverse mappings, they are typically restricted to linear target properties such as stiffness. Here, to tailor the nonlinear response, we show that video diffusion generative models trained on full-field data of periodic stochastic cellular structures can successfully predict and tune their nonlinear deformation and stress response under compression in the large-strain regime,…

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201
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Authors

2

Topics & keywords

Keywords
  • Nonlinear system
  • Computer science
  • Deformation (meteorology)
  • Finite element method
  • Inverse
  • Buckling
  • Inverse problem
  • Field (mathematics)
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