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基于支持向量机的激光超声表面缺陷识别研究

Research on laser ultrasonic surface defect identification based on a support vector machine.

作者信息

Chen Chao, Zhang Xingyuan

机构信息

School of Air Transport, 66323Shanghai University of Engineering Science, Shanghai, China.

出版信息

Sci Prog. 2021 Oct;104(4):368504211059038. doi: 10.1177/00368504211059038.

Abstract

To solve the problem of difficult quantitative identification of surface defect depth during laser ultrasonic inspection, a support vector machine-based method for quantitative identification of surface rectangular defect depth is proposed. Based on the thermal-elastic mechanism, the finite element model for laser ultrasound inspection of aluminum materials containing surface defects was developed by using the finite element software COMSOL. The interaction process between laser ultrasound and rectangular defects was simulated, and the reflected wave signals corresponding to defects of different depths under pulsed laser irradiation were obtained. Laser ultrasonic detection experiments were conducted for surface defects of different depths, and multiple sets of ultrasonic signal waveform were collected, and several feature vectors such as time-domain peak, center frequency peak, waveform factor and peak factor were extracted by using MATLAB, the quantitative defect depth identification model based on support vector machine was established. The experimental results show that the laser ultrasonic surface defect identification model based on support vector machine can achieve high accuracy prediction of defect depth, the regression coefficient of determination is kept above 0.95, and the average relative error between the true value and the predicted value is kept below 10%, and the prediction accuracy is better than that of the reflection echo method and BP neural network model.

摘要

为解决激光超声检测中表面缺陷深度定量识别困难的问题,提出了一种基于支持向量机的表面矩形缺陷深度定量识别方法。基于热弹性机制,利用有限元软件COMSOL建立了含表面缺陷铝材料激光超声检测的有限元模型。模拟了激光超声与矩形缺陷的相互作用过程,得到了脉冲激光照射下不同深度缺陷对应的反射波信号。对不同深度的表面缺陷进行了激光超声检测实验,采集了多组超声信号波形,并利用MATLAB提取了时域峰值、中心频率峰值、波形因子和峰值因子等多个特征向量,建立了基于支持向量机的缺陷深度定量识别模型。实验结果表明,基于支持向量机的激光超声表面缺陷识别模型能够实现对缺陷深度的高精度预测,决定系数回归系数保持在0.95以上,真值与预测值之间的平均相对误差保持在10%以下,预测精度优于反射回波法和BP神经网络模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/573e/10358582/4521e824eb69/10.1177_00368504211059038-fig1.jpg

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