基于经验模态分解和小波去噪的内部缺陷检测

Z. Cheng, Kaixiong Zhu, Xinghui Li, Xiang Qian
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引用次数: 1

摘要

磁性瓦等工业部件的内部缺陷严重影响其性能。随着智能制造技术的发展,工业制造企业需要一种高效、准确检测磁瓦内部缺陷的自动化方法。提出了一种基于经验模态分解(EMD)和小波去噪的缺陷检测回波信号预处理算法。然后利用方差曲线和自适应处理方法对缺陷进行精确定位。实验结果表明,本文提出的算法可以成功地用于不同换能器频率、不同缺陷尺寸和不同缺陷深度的缺陷样本。与原b扫描图像相比,增强后的b扫描图像能更明显地检测到试件内部缺陷,缺陷深度的准确率可达98.76%,优于现有技术水平。结果表明,该方法可以有效地优化超声b模扫描,准确定位磁瓦内部缺陷。
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Detection of Internal Defects Based on Empirical Mode Decomposition and Wavelets Denoising
The internal defects of industrial components such as magnetic tiles seriously affect their performance. With the development of intelligent manufacturing technology, industrial manufacturing enterprises need an automatic method to efficiently and accurately detect the internal defects of magnetic tiles. In this paper, a signal pre-processing algorithm based on Empirical Mode Decomposition (EMD) and wavelets denoising is proposed for echo signals for defect detection. Then the variance curve and the adaptive processing method are used to locate the defects accurately. The experimental results show that the algorithm proposed in this paper can been successfully used in defect specimen with different transducer frequency, different defect size and different defect depth. Compared with the original B-scan image, and the internal defects of the specimen could be detected more prominently in enhanced B-scan image, and the accuracy of the defect depth could reach 98.76%, which is better than existing state of the art. Thus, the proposed method has been proved to be effective for optimizing ultrasonic B-mode scanning and accurately locating defects inside magnetic tiles.
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