Xiaofeng Guo
;
Miaomiao He
;
Ikumu Watanabe
;
Jiaxin Zhou
;
Takayuki Yamada
;
Yong Yi
;
Xiaoyang Zheng
説明:
(abstract)Modular mechanical metamaterials offer unique opportunities for programmable and reconfigurable functionality through simple geometric rearrangements. Inspired by the modularity of Lego blocks, we propose a new class of modular metamaterials composed of three standardized modules—linear, yielding-like, and snap-through buckling elements—that can be assembled into two- and three-dimensional grids to realize diverse nonlinear stress–strain responses. To accelerate design and optimization, we integrate deep learning (DL) with the metamaterial design process. A convolutional neural network-based predictor rapidly estimates the stress–strain curves of given modular configurations, achieving a prediction accuracy of . Furthermore, a conditional variational autoencoder-based inverse designer enables the automatic generation of modular configurations that match target stress–strain curves, demonstrating high fidelity (). The proposed DL framework allows rapid, scalable, and reprogrammable design of nonlinear mechanical responses without exhaustive simulations or manual tuning. This study establishes a universal, data-driven strategy for the inverse design of modular metamaterials, paving the way toward intelligent, reconfigurable material systems for applications in soft robotics and adaptive structures.
権利情報:
キーワード: Mechanical metamaterials, Deep learning, Inverse design, Nonlinear mechanical property, Modular material
刊行年月日: 2026-01-30
出版者: Elsevier BV
掲載誌:
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.2026.115584
関連資料:
その他の識別子:
連絡先:
更新時刻: 2026-02-27 16:30:39 +0900
MDRでの公開時刻: 2026-02-27 13:49:39 +0900
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