Automatic Classification of Weld Defects From Ultrasonic Signals Using WPEE-KPCA Feature Extraction and an ABC-SVM Approach

Yuan Chen, Shaonan Liang, Zhongyang Wang, H. Ma, M. Dong, Dengxue Liu, Xiang Wan
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Abstract

The classification of weld defects is very important for the safety assessment of welded structures and feature extraction of ultrasonic defect signals is vital for defect classification. A novel approach based on wavelet packet energy entropy (WPEE) and kernel principal component analysis (KPCA) feature extraction and an artificial bee colony optimisation support vector machine (ABC-SVM) classifier is proposed in this paper. Firstly, the WPEE method is adopted to extract ultrasonic signal features of weld defects and KPCA is used for feature selection. Secondly, an ABC-SVM classifier is employed to perform defect classification. Finally, experiments involving defect feature extraction, selection and classification are carried out using four types of weld defect. The results demonstrate that the performance of the proposed feature extraction method based on WPEE is superior to that of wavelet packet energy (WPE). In addition, the WPEE-KPCA method achieved a higher accuracy rate of defect classification than WPEE.
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基于WPEE-KPCA特征提取和ABC-SVM的超声信号焊缝缺陷自动分类
焊接缺陷的分类是焊接结构安全评价的重要内容,超声缺陷信号的特征提取是缺陷分类的关键。本文提出了一种基于小波包能量熵(WPEE)和核主成分分析(KPCA)特征提取和人工蜂群优化支持向量机(ABC-SVM)分类器的新方法。首先,采用WPEE方法提取焊缝缺陷的超声信号特征,并利用KPCA进行特征选择;其次,采用ABC-SVM分类器对缺陷进行分类。最后,采用四种类型的焊缝缺陷进行缺陷特征提取、选择和分类实验。结果表明,基于小波包能量的特征提取方法优于基于小波包能量的特征提取方法。此外,WPEE- kpca方法的缺陷分类准确率也高于WPEE方法。
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