计算机科学
构造(python库)
卷积神经网络
体素
进化算法
算法
3D打印
深度学习
复合数
逆向工程
人工神经网络
人工智能
材料科学
复合材料
程序设计语言
作者
Mengtao Wang,Zaiyang Liu,Hidemitsu Furukawa,Zhuo Li,Yifei Ge,Yifan Xu,Zhe Qiu,Yang Tian,Zhongkui Wang,Ren Xu,Lin Meng
出处
期刊:Advanced Science
[Wiley]
日期:2025-02-01
卷期号:12 (12): e2407825-e2407825
被引量:6
标识
DOI:10.1002/advs.202407825
摘要
Abstract Designing voxelized composite structures via 4D printing involves creating voxel units with distinct material properties that transform in response to stimuli; however, optimally distributing these properties to achieve specific target shapes remains a significant challenge. This study introduces an optimization method combining deep learning (DL) and an evolutionary algorithm, focusing on a solvent‐responsive hydrogel as the target material. A sequence‐enhanced parallel convolutional neural network is developed and generated a dataset through finite element simulations. This DL model enables high‐precision prediction of hydrogel deformation. Furthermore, a progressive evolutionary algorithm (PEA) is proposed by integrating the DL model to construct a DL‐PEA framework. This framework supports rapid reverse engineering of the desired shape, and the average design time for specified target shapes is reduced to ≈3.04 s. The present findings illustrate how 4D printing of optimized hydrogel designs can effectively transform in response to environmental stimuli. This work provides a new perspective on the application of hydrogels in 4D printing and presents an efficient tool for optimizing 4D‐printed voxelized composite structures.
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