Evaluation of Machine Learning for Quality Monitoring of Laser Welding Using the Example of the Contacting of Hairpin Windings

A. Mayr, Benjamin Lutz, M. Weigelt, T. Gläßel, Dominik Kißkalt, M. Masuch, A. Riedel, J. Franke
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引用次数: 37

Abstract

In a world of growing electrification, the demand for high-quality, well-optimized electric motors continues to rise. The hairpin winding is one such optimization, improving the slot-fill ratio and handling during production. As this winding technology leads to a high amount of contact points, special attention is drawn to contacting processes, with laser welding being one promising choice. The challenge now is to make the process more stable by means of advanced methods for quality monitoring. Therefore, this paper proposes a novel, cost-efficient quality monitoring system for the laser welding process using a machine learning architecture. The investigated data sources are machine parameters as well as visual information acquired by a CCD camera. Firstly, the usage of machine parameters to predict weld defects and the overall quality of a weld seam before contacting is investigated. In the case of hairpin windings, not only the mechanical but also the electrical properties of each contact point contribute to the overall quality. Secondly, it is illustrated that convolutional neural networks are well suited to analyze image data. Thereby, different network architectures for directly assessing the weld quality as well as for classifying visible weld defects by their severity in a post-process manner are presented. Thirdly, these results are compared to a more explainable two-stage approach which detects weld defects in a first step and uses this information for weld quality prediction in a second step. Finally, these applications are combined into a quality monitoring system consisting of a pre-process plausibility test as well as a post-process quality assessment and defect classification. The proposed system architecture is not only applicable to the contacting of hairpin windings but also to other applications of laser welding.
激光焊接质量监测中的机器学习评价——以发夹绕组接触为例
在电气化不断发展的世界里,对高质量、优化良好的电动机的需求持续上升。发夹绕组就是这样一种优化,提高了补槽率和生产过程中的处理。由于这种缠绕技术会产生大量的接触点,因此需要特别注意接触工艺,其中激光焊接是一种很有前途的选择。现在的挑战是通过先进的质量监测方法使这一过程更加稳定。因此,本文提出了一种采用机器学习架构的新型、经济高效的激光焊接过程质量监控系统。研究的数据来源是由CCD相机采集的机器参数和视觉信息。首先,研究了在接触前利用机器参数预测焊缝缺陷和焊缝整体质量的方法。在发夹绕组的情况下,不仅机械性能,而且每个接触点的电气性能有助于整体质量。其次,说明了卷积神经网络非常适合于图像数据分析。因此,本文提出了不同的网络结构,用于直接评估焊接质量,以及在后处理过程中根据可见焊接缺陷的严重程度对其进行分类。第三,将这些结果与更易于解释的两阶段方法进行比较,该方法在第一步检测焊缝缺陷,并在第二步使用该信息进行焊缝质量预测。最后,将这些应用程序组合成一个质量监控系统,该系统由预处理合理性测试以及后处理质量评估和缺陷分类组成。所提出的系统结构不仅适用于发夹绕组的接触,也适用于激光焊接的其他应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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