Towards an optimization of automatic defect detection by artificial neural network using Lamb waves

Nissabouri Salah, Elhadji Barra Ndiaye
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Abstract

This paper presents a damage detection method based on the inverse pattern recognition technique by artificial neural network (ANN) using ultrasonic waves. Lamb waves are guided elastic waves, are widely employed in nondestructive testing thanks to their attractive properties such as their sensitivity to the small defects. In this work, finite element method was conducted by Abaqus to study Lamb modes propagation. A data collection is performed by the signals recorded from the sensor of 300 models: healthy and damaged plates excited by a tone burst signal with the frequencies: 100 kHz, 125 kHz, 150 kHz, 175 kHz, 200 kHz, and 225 kHz. The captured signals in undamaged plat are the baseline, whereas the signals measured in damaged plates are recorded for various positions of external rectangular defects. To reduce the amount of training data, only two peaks of measured signals are required to be the input of the model. Continuous wavelet transform (CWT) was adopted to calculate the key features of the signal in the time domain. The feed forward neural network is implemented using MATLAB program. The data are divided as follows: 70% for training the model, 25% for the validation, and 5% for the test. The proposed model is accurate estimating the position of the defect with an accuracy of 99.98%.
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利用 Lamb 波的人工神经网络实现自动缺陷检测的优化
本文介绍了一种基于人工神经网络(ANN)反模式识别技术的超声波损伤检测方法。λ波是一种导向弹性波,由于其对微小缺陷的敏感性等诱人特性,被广泛应用于无损检测。在这项工作中,采用 Abaqus 有限元方法研究了λ模式的传播。数据收集是通过 300 个模型的传感器记录的信号进行的:健康和受损板材由频率为 100 kHz、125 kHz、125 kHz 的音爆信号激励:频率分别为 100 kHz、125 kHz、150 kHz、175 kHz、200 kHz 和 225 kHz。未损坏板材的捕获信号为基线信号,而损坏板材的测量信号则是外部矩形缺陷的不同位置的信号。为了减少训练数据量,模型只需要输入两个峰值的测量信号。采用连续小波变换(CWT)计算时域信号的关键特征。前馈神经网络使用 MATLAB 程序实现。数据划分如下:70% 用于训练模型,25% 用于验证,5% 用于测试。所提出的模型能准确估计缺陷的位置,准确率达到 99.98%。
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