焊接
超声波传感器
过程(计算)
超声波焊接
机械工程
停工期
汽车工业
计算机科学
汽车工程
工程类
声学
可靠性工程
操作系统
物理
航空航天工程
作者
S. Shawn Lee,Chenhui Shao,Tae Hyung Kim,S. Jack Hu,Elijah Kannatey‐Asibu,Wayne Cai,J. Patrick Spicer,Jeffrey A. Abell
出处
期刊:Journal of Manufacturing Science and Engineering-transactions of The Asme
[ASM International]
日期:2014-07-21
卷期号:136 (5)
被引量:62
摘要
Online process monitoring in ultrasonic welding of automotive lithium-ion batteries is essential for robust and reliable battery pack assembly. Effective quality monitoring algorithms have been developed to identify out of control parts by applying purely statistical classification methods. However, such methods do not provide the deep physical understanding of the manufacturing process that is necessary to provide diagnostic capability when the process is out of control. The purpose of this study is to determine the physical correlation between ultrasonic welding signal features and the ultrasonic welding process conditions and ultimately joint performance. A deep understanding in these relationships will enable a significant reduction in production launch time and cost, improve process design for ultrasonic welding, and reduce operational downtime through advanced diagnostic methods. In this study, the fundamental physics behind the ultrasonic welding process is investigated using two process signals, weld power and horn displacement. Several online features are identified by examining those signals and their variations under abnormal process conditions. The joint quality is predicted by correlating such online features to weld attributes such as bond density and postweld thickness that directly impact the weld performance. This study provides a guideline for feature selection and advanced diagnostics to achieve a reliable online quality monitoring system in ultrasonic metal welding.
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