論文 Controllable inverse design of auxetic metamaterials using deep learning

Xiaoyang Zheng ; Ta-Te Chen (National Institute for Materials ScienceROR) ; Xiaofeng Guo ; Sadaki Samitsu SAMURAI ORCID (National Institute for Materials ScienceROR) ; Ikumu Watanabe SAMURAI ORCID (National Institute for Materials ScienceROR)

コレクション

引用
Xiaoyang Zheng, Ta-Te Chen, Xiaofeng Guo, Sadaki Samitsu, Ikumu Watanabe. Controllable inverse design of auxetic metamaterials using deep learning. MATERIALS & DESIGN. 2021, 211 (), 110178-110178. https://doi.org/10.1016/j.matdes.2021.110178

説明:

(abstract)

As typical mechanical metamaterials with negative Poisson's ratios, auxetic metamaterials exhibit counterintuitive auxetic behaviors that are highly dependent on their geometric arrangements. The realization of the geometric arrangement required to achieve a negative Poisson's ratio relies considerably on the experience of designers and trial-and-error approaches. This report proposes an inverse design method for auxetic metamaterials using deep learning, in which a batch of auxetic metamaterials with a user-defined Poisson's ratio and Young's modulus can be generated by a conditional generative adversarial network without prior knowledge. The network was trained based on supervised learning using a large number of geometrical patterns generated by Voronoi tessellation. The performance of the network was demonstrated by verifying the mechanical properties of the generated patterns using finite element method simulations and uniaxial compression tests. The successful realization of user-desired properties can potentially accelerate the inverse design and development of mechanical metamaterials.

権利情報:

キーワード: Negative Poisson’s ratio, Metamaterial, Generative adversarial network, Additive manufacturing, Voronoi tessellation

刊行年月日: 2021-10-18

出版者: Elsevier BV

掲載誌:

  • MATERIALS & DESIGN (ISSN: 02641275) vol. 211 p. 110178-110178

研究助成金:

原稿種別: 出版者版 (Version of record)

MDR DOI:

公開URL: https://doi.org/10.1016/j.matdes.2021.110178

関連資料:

その他の識別子:

連絡先:

更新時刻: 2024-01-05 22:12:12 +0900

MDRでの公開時刻: 2023-02-28 11:37:18 +0900

ファイル名 サイズ
ファイル名 zheng_MD2021b.pdf (サムネイル)
application/pdf
サイズ 3.71MB 詳細