基于锁孔特征和极限学习机的VPPAW焊透识别

Di Wu, Huabin Chen, Yiming Huang, Yinshui He, Shanben Chen
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引用次数: 5

摘要

变极性等离子弧焊作为一种先进的制造技术,由于其能量密度高,已成功地应用于工业生产。在VPPAW工艺中,对焊缝渗透的控制仍然是一个长期关注的问题。本研究建立了一种简单的柔性视觉系统来获取一系列锁孔图像,并基于零件树模型提取了锁孔的几何外观,包括锁孔宽度和面积。然后利用获取的小孔特征,利用一种新的极限学习机模型对焊缝熔深进行预测。研究表明,ELM模型能较好地预测变极性等离子弧焊的熔透状态,实现对焊接质量的实时监控。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weld penetration identification for VPPAW based on keyhole features and extreme learning machine
Variable polarity plasma arc welding, as an advanced manufacturing technology, has been successfully used in industrial production due to high energy density. The need for the control of the weld penetration remains of a long term interest in VPPAW process. In this study, a simple-flexible vision system was established to acquire a series of keyhole images, and the geometrical appearance of keyhole including the keyhole width and area are extracted based on part-based tree model. Then the acquired keyhole features are used to predict the weld penetration by using a novel extreme learning machine model. The research shows that ELM model can predict the penetration state of variable polarity plasma arc welding credibly and achieve real time monitoring for welding quality.
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