Improved Damage Localization and Quantification of CFRP Using Lamb Waves and Convolution Neural Network

兰姆波 卷积(计算机科学) 声学 傅里叶变换 卷积神经网络 信号(编程语言) 人工神经网络 压电传感器 计算机科学 材料科学 生物系统 算法 模式识别(心理学) 人工智能 表面波 数学 物理 压电 数学分析 电信 生物 程序设计语言
作者
Chenhui Su,Mingshun Jiang,Shanshan Lv,Shizeng Lu,Lei Zhang,Faye Zhang,Qingmei Sui
出处
期刊:IEEE Sensors Journal [IEEE Sensors Council]
卷期号:19 (14): 5784-5791 被引量:92
标识
DOI:10.1109/jsen.2019.2908838
摘要

A novel method is proposed in this paper for simultaneously locating and quantifying damage in composite plates by employing Lamb waves and the algorithm of convolution neural network. The interaction between Lamb wave and damage of different degrees is also studied by simulation. The experiments on Lamb wave are carried out by employing a square array which is composed of four piezoelectric wafers. First of all, the sensor array collects response signals of Lamb wave as training data, and then de-noises them adopting the method of the wavelet transform. In the process, the damage caused to the composite can be realized through mass blocks. Besides, the Fourier transform is applied for the extraction of the characteristics shown by the signals. After that, the spectrum with the characteristics of damage and corresponding damage modes are employed as input and output of the convolutional neural network, respectively, and accordingly, the model of damage identification is established. Finally, 191 samples (from a total of 192) were identified accurately and the correct recognition rate achieved is 99.5%, which consequently demonstrates that the convolution neural network can be employed to establish the complex mapping relationship between signal and damage, and further proves that the proposed method performs well in high accuracy and great potential in simultaneous localization and quantitative identification of damage existing in composite plate.
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