A monitoring system for laser beam welding based on an algorithm for spatter detection

L. Nicolosi, R. Tetzlaff, A. Blug, H. Höfler, D. Carl, F. Abt, A. Heider
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引用次数: 5

Abstract

This paper deals with the realization of a visual monitoring system for the real time detection of spatters in laser beam welding (LBW). Spatters deteriorate the corrosion resistance and the aesthetics of the welding result. Therefore, the real time detection of spatters allows providing on-line quality information about the process, thus reducing material waste in production chains. The proposed Cellular Neural Network (CNN) based algorithm has been implemented in the Eye-RIS vision system (VS). Monitoring rates up to 15 kHz have been reached, allowing the integration of the spatter detection with the evaluation of additional image features, e.g. the full penetration hole (FPH).
基于飞溅检测算法的激光焊接监控系统
本文研究了一种用于激光焊接过程中飞溅物实时检测的可视化监控系统的实现。飞溅会降低焊接结果的耐腐蚀性和美观性。因此,飞溅的实时检测允许提供有关该过程的在线质量信息,从而减少生产链中的材料浪费。提出的基于细胞神经网络(CNN)的算法已在Eye-RIS视觉系统(VS)中实现。监测速率高达15 kHz,允许将飞溅检测与其他图像特征的评估相结合,例如全穿透孔(FPH)。
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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