International Journal of Extreme Manufacturing, Volume. 7, Issue 3, 32006(2025)
New era towards autonomous additive manufacturing: a review of recent trends and future perspectives
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Fan Haolin, Liu Chenshu, Bian Shijie, Ma Changyu, Huang Junlin, Liu Xuan, Doyle Marshall, Lu Thomas, Chow Edward, Chen Lianyi, Fuh Jerry Ying Hsi, Lu Wen Feng, Li Bingbing. New era towards autonomous additive manufacturing: a review of recent trends and future perspectives[J]. International Journal of Extreme Manufacturing, 2025, 7(3): 32006
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Received: Aug. 8, 2024
Accepted: Sep. 29, 2025
Published Online: Sep. 29, 2025
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