Machine Learning-Evolutionary Algorithm Enabled Design for 4D-Printed Active Composite Structures
Affiliation auteurs | !!!! Error affiliation !!!! |
Titre | Machine Learning-Evolutionary Algorithm Enabled Design for 4D-Printed Active Composite Structures |
Type de publication | Journal Article |
Year of Publication | 2022 |
Auteurs | Sun X, Yue L, Yu L, Shao H, Peng X, Zhou K, Demoly F, Zhao R, H. Qi J |
Journal | ADVANCED FUNCTIONAL MATERIALS |
Volume | 32 |
Pagination | 2109805 |
Date Published | MAR |
Type of Article | Article |
ISSN | 1616-301X |
Mots-clés | 4D printing, active composites, evolutionary algorithms, Machine learning |
Résumé | Active composites consisting of materials that respond differently to environmental stimuli can transform their shapes. Integrating active composites and 4D printing allows the printed structure to have a pre-designed complex material or property distribution on numerous small voxels, offering enormous design flexibility. However, this tremendous design space also poses a challenge in efficiently finding appropriate designs to achieve a target shape change. Here, a novel machine learning (ML) and evolutionary algorithm (EA) based approach is presented to guide the design process. Inspired by the beam deformation characteristics, a recurrent neural network (RNN) based ML model whose training dataset is acquired by finite element simulations is developed for the forward shape-change prediction. EA empowered with ML is then used to solve the inverse problem of finding the optimal design. For multiple target shapes with different complexities, the ML-EA approach demonstrates high efficiency. Combining the ML-EA with computer vision algorithms, a new paradigm is presented that streamlines design and 4D printing process where active straight beams can be designed based on hand-drawn lines and be 4D printed that transform into the drawn profiles under the stimulus. The approach thus provides a highly efficient tool for the design of 4D-printed active composites. |
DOI | 10.1002/adfm.202109805 |