Penetration Depth Modeling and Process Parameter Maps for Laser Welds Using Machine Learning
Bum-su Go, Hyeonjeong You, Hee-seon Bang, Cheolhee Kim
J Weld Join. 2021;39(4):392-401.   Published online 2021 Aug 11     DOI: https://doi.org/10.5781/JWJ.2021.39.4.7
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