Machine learning driven forward prediction and inverse design for 4D printed hierarchical architecture with arbitrary shapes
Liuchao Jin(Chinese University of Hong Kong), Wei‐Hsin Liao(Chinese University of Hong Kong), Mahdi Bodaghi(Nottingham Trent University), Bingcong Jian(Tongji University), Jianxiang Cheng(Southern University of Science and Technology), Kang Zhang(Chinese University of Hong Kong), Haitao Ye(City University of Hong Kong), Jingchao Jiang(University of Exeter), Qi Ge(Massachusetts Institute of Technology), Shouyi Yu(Southern Medical University), Xiaoya Zhai(University of Science and Technology of China)
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