Engineering and TechnologyNature Communications
Machine learning-enabled forward prediction and inverse design of 4D-printed active plates
X. Sun, L. Yue, et al.
This innovative research, conducted by Xiaohao Sun and colleagues, introduces a cutting-edge machine learning approach to design active composite plates capable of 3D shape changes, optimizing material distribution for complex target shapes with high efficiency.
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