*Result*: Machine learning in additive manufacturing: enhancing design, manufacturing and performance prediction intelligence.

Title:
Machine learning in additive manufacturing: enhancing design, manufacturing and performance prediction intelligence.
Authors:
Wang, Teng1 (AUTHOR), Li, Yanfeng2 (AUTHOR), Li, Taoyong2 (AUTHOR), Liu, Bei1 (AUTHOR) liubeinano@163.com, Li, Xiaowei2 (AUTHOR) lixiaowei@bit.edu.cn, Zhang, Xiangyu2 (AUTHOR) zhangxiangyu0012@gmail.com
Source:
Journal of Intelligent Manufacturing. Feb2026, Vol. 37 Issue 2, p711-736. 26p.
Database:
Business Source Premier

*Further Information*

*Machine learning (ML) is reshaping additive manufacturing (AM) with its potent capability of data analysis, antonomous learning and intelligent decision-making. ML empowers designers by enhancing the capabilities of structural design, improving process optimization, and elevating product performance, thus further help to propose designs that can adapt to diversified manufacturing conditions and meet multi-functional requirements. We herein comprehensively review the cutting-edge advances of ML-based AM in various domains. ML technologies and methods used in multiple AM domains are summarized and the technical features are introduced. ML-based materials preparation, structure design, performance prediction and optimization of AM are comprehesively compared and discussed. Lastly the encountered challenges and the future developments are demonstrated. With an in-depth analysis, we hope this review can propel the applications of ML in the intelligence-led design of AM. [ABSTRACT FROM AUTHOR]

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