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Investigation of monitoring methods for ultrasonic metal welding

机译:超声波金属焊接监测方法研究

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Ultrasonic metal welding (UMW) is becoming a more broadly used technology for joining ductile materials, especially in the electric vehicle sector. The process, however, lacks monitoring capabilities that would improve confidence in the repeatability of welded joints. Often only destructive testing is used for quality evaluation. This method of inspection is insufficient for a production line and can lead to high scrap rates and failure to identify all poorly welded components. The work discussed in this paper aims to close the gap of weld quality evaluation for UMW through in-process monitoring. Multiple sensors were installed in line with a linear ultrasonic metal welder. Current, voltage, frequency, shear force, and displacement of the horn both laterally and vertically were monitored throughout welding trials. Parameters for expected overweld, underweld, and acceptable weld qualities were selected through screening trials and design of experiment (DOE) methods. Twenty welds from each of these three quality sets were made with all monitoring tools for several rounds of testing. Destructive analysis was used to confirm the weld quality for each experiment. This included peel testing by hand for qualitative results and mechanical peel testing for quantifiable results, as well as metallographic analysis of the cross section and weld interface. Signal analysis, performed for each set of sensor data, extracted unique features that may be correlated to the input weld parameters and resulting weld quality. Machine learning techniques were applied on these features to classify weld quality based on in-process monitoring data. Algorithms predicted weld quality with over 90% accuracy.
机译:超声波金属焊接(UMW)正在成为加入延展材料的更广泛使用的技术,特别是在电动车辆领域。然而,该过程缺乏监测能力,可以提高对焊接接头的可重复性的置信度。通常只有破坏性测试用于质量评估。这种检查方法对于生产线不足,可以导致高废料率和未能识别所有粘合的组件。本文讨论的工作旨在通过过程监测来缩放UMW焊接质量评估的差距。多个传感器与线性超声波金属焊机一致安装。在整个焊接试验中监测横向和垂直喇叭的电流,电压,频率,剪切力和位移。通过筛选试验和实验(DOE)方法,选择预期的超熔性,普遍存在和可接受的焊接品质的参数。来自这三种质量套中的每一个的二十次焊缝采用几轮测试,采用所有监测工具进行。破坏性分析用于确认每个实验的焊接质量。这包括手动对定性结果和机械剥离测试的剥离测试,以便可量化结果,以及横截面和焊接界面的金相分析。对每组传感器数据执行的信号分析,提取可以与输入焊接参数相关的唯一特征,并产生焊接质量。应用机器学习技术对这些特征进行了基于过程中的焊接质量来分类。算法预测焊接质量超过90%。

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