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Machine learning-enabled forward prediction and inverse design of 4D-printed active plates.
Sun, Xiaohao; Yue, Liang; Yu, Luxia; Forte, Connor T; Armstrong, Connor D; Zhou, Kun; Demoly, Frédéric; Zhao, Ruike Renee; Qi, H Jerry.
Afiliação
  • Sun X; The George W. Woodruff School of Mechanical Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
  • Yue L; The George W. Woodruff School of Mechanical Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
  • Yu L; The George W. Woodruff School of Mechanical Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
  • Forte CT; The George W. Woodruff School of Mechanical Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
  • Armstrong CD; The George W. Woodruff School of Mechanical Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
  • Zhou K; Singapore Centre for 3D Printing, School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore, Singapore.
  • Demoly F; ICB UMR 6303 CNRS, Belfort-Montbeliard University of Technology, UTBM, Belfort, France.
  • Zhao RR; Institut universitaire de France (IUF), Paris, France.
  • Qi HJ; Department of Mechanical Engineering, Stanford University, Stanford, CA, USA.
Nat Commun ; 15(1): 5509, 2024 Jun 29.
Article em En | MEDLINE | ID: mdl-38951533
ABSTRACT
Shape transformations of active composites (ACs) depend on the spatial distribution of constituent materials. Voxel-level complex material distributions can be encoded by 3D printing, offering enormous freedom for possible shape-change 4D-printed ACs. However, efficiently designing the material distribution to achieve desired 3D shape changes is significantly challenging yet greatly needed. Here, we present an approach that combines machine learning (ML) with both gradient-descent (GD) and evolutionary algorithm (EA) to design AC plates with 3D shape changes. A residual network ML model is developed for the forward shape prediction. A global-subdomain design strategy with ML-GD and ML-EA is then used for the inverse material-distribution design. For a variety of numerically generated target shapes, both ML-GD and ML-EA demonstrate high efficiency. By further combining ML-EA with a normal distance-based loss function, optimized designs are achieved for multiple irregular target shapes. Our approach thus provides a highly efficient tool for the design of 4D-printed active composites.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article