Chinese Journal of Lasers, Volume. 49, Issue 14, 1402101(2022)

Progress in Machine-Learning-Assisted Process Optimization and Novel Material Development in Additive Manufacturing

Jinlong Su1,2, Lequn Chen1, Chaolin Tan1、*, Youxiang Chew1, Fei Weng1, Xiling Yao1, Fulin Jiang2, and Jie Teng2
Author Affiliations
  • 1Singapore Institute of Manufacturing Technology, Agency for Science, Technology and Research (A*STAR), Singapore 637662, Singapore
  • 2College of Materials Science and Engineering, Hunan University, Changsha 410082, Hunan, China
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    Jinlong Su, Lequn Chen, Chaolin Tan, Youxiang Chew, Fei Weng, Xiling Yao, Fulin Jiang, Jie Teng. Progress in Machine-Learning-Assisted Process Optimization and Novel Material Development in Additive Manufacturing[J]. Chinese Journal of Lasers, 2022, 49(14): 1402101

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    Paper Information

    Category: Laser Additive Manufacturing of New Material

    Received: Dec. 15, 2021

    Accepted: Jan. 6, 2022

    Published Online: Jul. 6, 2022

    The Author Email: Tan Chaolin (tclscut@163.com)

    DOI:10.3788/CJL202249.1402101

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