Dominik Walther , Christina Junger , Leander Schmidt , Klaus Schricker , Gunther Notni , Jean Pierre Bergmann , Patrick Mäder
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The probes are dependent on the sheet metal geometry and are limited in their applicability to complex geometric structures. Camera systems such as long-wave infrared (LWIR) cameras can instead be mounted directly behind the laser to overcome a geometry dependent limitation of the jiggles system. In this study we will propose a deep learning approach that utilizes LWIR camera recordings to predict the remaining welding process to enable an early detection of weld interruptions. Our approach reaches 93.33% accuracy for time-wise prediction of the point of failure during the weld.</p></div>","PeriodicalId":34313,"journal":{"name":"Journal of Advanced Joining Processes","volume":"9 ","pages":"Article 100203"},"PeriodicalIF":3.8000,"publicationDate":"2024-02-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2666330924000207/pdfft?md5=f050d9f464ba6277ada965afffed7c4f&pid=1-s2.0-S2666330924000207-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Recurrent Autoencoder for Weld Discontinuity Prediction\",\"authors\":\"Dominik Walther , Christina Junger , Leander Schmidt , Klaus Schricker , Gunther Notni , Jean Pierre Bergmann , Patrick Mäder\",\"doi\":\"10.1016/j.jajp.2024.100203\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Laser beam butt welding is often the technique of choice for a wide range of industrial tasks. To achieve high quality welds, manufacturers often rely on heavy and expensive clamping systems to limit the sheet movement during the welding process, which can affect quality. Jiggless welding offers a cost-effective and highly flexible alternative to common clamping systems. In laser butt welding, the process-induced joint gap has to be monitored in order to counteract the effect by means of an active position control of the sheet metal. Various studies have shown that sheet metal displacement can be detected using inductive probes, allowing the prediction of weld quality by ML-based data analysis. The probes are dependent on the sheet metal geometry and are limited in their applicability to complex geometric structures. Camera systems such as long-wave infrared (LWIR) cameras can instead be mounted directly behind the laser to overcome a geometry dependent limitation of the jiggles system. In this study we will propose a deep learning approach that utilizes LWIR camera recordings to predict the remaining welding process to enable an early detection of weld interruptions. 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引用次数: 0
摘要
激光束对焊通常是各种工业任务的首选技术。为了获得高质量的焊缝,制造商通常依靠笨重而昂贵的夹紧系统来限制焊接过程中的板材移动,这可能会影响焊接质量。无夹具焊接为普通夹紧系统提供了一种经济高效、高度灵活的替代方案。在激光对焊中,必须对焊接过程中产生的接缝间隙进行监控,以便通过对金属板的主动位置控制来抵消这种影响。多项研究表明,可以使用感应探头检测金属板位移,从而通过基于 ML 的数据分析预测焊接质量。这些探头取决于金属板的几何形状,对复杂几何结构的适用性有限。长波红外(LWIR)相机等摄像系统可以直接安装在激光器后面,以克服抖动系统的几何限制。在本研究中,我们将提出一种深度学习方法,利用长波红外摄像机的记录来预测剩余的焊接过程,从而实现焊接中断的早期检测。我们的方法在焊接过程中按时间预测故障点的准确率达到 93.33%。
Recurrent Autoencoder for Weld Discontinuity Prediction
Laser beam butt welding is often the technique of choice for a wide range of industrial tasks. To achieve high quality welds, manufacturers often rely on heavy and expensive clamping systems to limit the sheet movement during the welding process, which can affect quality. Jiggless welding offers a cost-effective and highly flexible alternative to common clamping systems. In laser butt welding, the process-induced joint gap has to be monitored in order to counteract the effect by means of an active position control of the sheet metal. Various studies have shown that sheet metal displacement can be detected using inductive probes, allowing the prediction of weld quality by ML-based data analysis. The probes are dependent on the sheet metal geometry and are limited in their applicability to complex geometric structures. Camera systems such as long-wave infrared (LWIR) cameras can instead be mounted directly behind the laser to overcome a geometry dependent limitation of the jiggles system. In this study we will propose a deep learning approach that utilizes LWIR camera recordings to predict the remaining welding process to enable an early detection of weld interruptions. Our approach reaches 93.33% accuracy for time-wise prediction of the point of failure during the weld.