基于锁孔和熔池特性的高功率光纤激光厚板焊接根驼峰缺陷监测

D. Huang, Leshi Shu, Qi Zhou, P. Jiang, Geng Shaoning
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引用次数: 0

摘要

大功率激光焊接过程中容易出现根部驼峰缺陷。通过对焊接实验的观察,发现根部驼峰缺陷与锁孔和熔池的特性有明显的相关性。因此,本文提出了一种通过识别焊接过程中的锁孔和熔池特征来监测根部驼峰缺陷的方法。该方法采用图像传感技术和机器视觉技术对锁眼和焊池信息进行实时分析提取。采用BP神经网络算法对焊接状态进行分类。研究发现,加入熔池长度特征作为输入,可以大大提高模型的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Root hump defect monitoring of high power fiber laser thick plate welding based on the character of keyhole and molten pool
The root hump defect is easy to appear in the process of high power laser welding. Through the observation of welding experiment, it is found that there is obvious correlation between root hump defect and the character of keyhole and molten pool. Therefore, this paper proposes a method to monitor the root hump defect by identifying the keyhole and molten pool features in the welding process. In this method, image sensing technology and machine vision method are used to analyze and extract the keyhole and weld pool information in real time. The BP neural network algorithm is used to classify the welding states. It is found that adding the feature of weld pool length as input will greatly improve the recognition accuracy of the model.
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