Chinese Journal of Lasers, Volume. 50, Issue 8, 0802104(2023)
Quantitative Evaluation of Penetration State in Pulsed Laser Welding of Aluminum Alloys Based on Acoustic‐Wave Time‐Frequency Characteristics and Deep Learning
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Zhongyi Luo, Di Wu, Run Wang, Jinfang Dong, Fangyi Yang, Peilei Zhang, Zhishui Yu. Quantitative Evaluation of Penetration State in Pulsed Laser Welding of Aluminum Alloys Based on Acoustic‐Wave Time‐Frequency Characteristics and Deep Learning[J]. Chinese Journal of Lasers, 2023, 50(8): 0802104
Category: Laser Forming Manufacturing
Received: Jul. 7, 2022
Accepted: Aug. 10, 2022
Published Online: Apr. 14, 2023
The Author Email: Wu Di (wudi@sues.edu.cn)