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Friction stir weld classification by applying wavelet analysis and support vector machine on weld surface images

机译:应用小波分析和支持向量机在焊接表面图像上进行搅拌摩擦焊的分类

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摘要

Online monitoring of friction stirwelding (FSW) is inevitable due to the increasing demand of this process. Also the machine vision system has industrial importance for monitoring of manufacturing processes due to its non-invasiveness and flexibility. Therefore, in this research, an attempt has been made to monitor friction stir welding process by analyzing the weld surface images. Here, discrete wavelet transform has been applied on FSW images to extract useful features for describing the good and defective weld. These obtained features have been fed to support vector machine based classification model for classifying good and defective weld with 99% and 97% accuracy with Gaussian and polynomial kernel, respectively.
机译:由于此过程的需求不断增加,因此不可避免地需要在线监视搅拌摩擦焊(FSW)。而且,机器视觉系统由于其非侵入性和灵活性而对于监视制造过程也具有工业重要性。因此,在这项研究中,已经尝试通过分析焊接表面图像来监测搅拌摩擦焊接过程。在此,离散小波变换已应用于FSW图像,以提取有用的特征来描述良好和有缺陷的焊缝。这些获得的特征已被馈送到基于支持向量机的分类模型中,以高斯和多项式核分别以99%和97%的准确度对良好和不良焊缝进行分类。

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