Multi-feature detection for quality assessment in laser beam welding: Experimental results

L. Nicolosi, R. Tetzlaff, F. Abt, A. Blug, H. Höfler
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引用次数: 4

Abstract

Laser beam welding (LBW) has been largely used in manufacturing processes ranging from automobile production to precision mechanics. The complexity of LBW requires the development of strategies for the real-time control of the process. Most of the available feedback systems lack of temporal and/or spatial resolution and, therefore, they hardly allow observing more than one characteristic of the process. In the last years, we proposed some high-speed visual algorithms for image feature extraction from process images. The detection of the full penetration hole (FPH) allowed controlling the laser power at rates of up to 14 kHz. Another strategy enables observing the occurrence of spatters at monitoring rates of 15 kHz. The achievement of these results was made possible by the adoption of a visual system including a focal plane processor programmable by typical Cellular Neural Network (CNN) operations. This paper is focused on a new visual algorithm for the simultaneous detection of FPH and spatters, which led to real-time control rates of about 8 kHz. Besides the algorithm description, some interesting experimental results will be presented.
用于激光焊接质量评定的多特征检测:实验结果
激光焊接(LBW)已广泛应用于从汽车生产到精密机械的制造过程。LBW的复杂性要求制定实时控制过程的策略。大多数可用的反馈系统缺乏时间和/或空间分辨率,因此,它们几乎不允许观察过程的多个特征。在过去的几年里,我们提出了一些高速的视觉算法来从过程图像中提取图像特征。全穿透孔(FPH)的检测允许以高达14 kHz的速率控制激光功率。另一种策略能够以15 kHz的监测速率观察飞溅的发生。这些结果的实现是通过采用视觉系统实现的,该视觉系统包括一个焦平面处理器,可通过典型的细胞神经网络(CNN)操作进行编程。本文重点研究了一种同时检测FPH和飞溅的新视觉算法,该算法的实时控制率约为8 kHz。除了算法描述外,还将介绍一些有趣的实验结果。
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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