2024
DOI: 10.1177/10812865241233013
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ResUNet involved generative adversarial network-based topology optimization for design of 2D microstructure with extreme material properties

Jicheng Li,
Hongling Ye,
Nan Wei
et al.

Abstract: Topology optimization is one of the most common methods for design of material distribution in mechanical metamaterials, but resulting in expensive computational cost due to iterative simulation of finite element method. In this work, a novel deep learning-based topology optimization method is proposed to design mechanical microstructure efficiently for metamaterials with extreme material properties, such as maximum bulk modulus, maximum shear modulus, or negative Poisson’s ratio. Large numbers of microstructu… Show more

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