Estimation of micro-crack lengths using eddy current C-scan images and neural-wavelet transform

M. Bodruzzaman, S. Zein-Sabatto
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引用次数: 8

Abstract

The work reported in this paper is concerned with the development of neural network-based methods for estimating the size of cracks in the range of mum occurring around a hole on or beneath the surface of metal plate using eddy-current based C-scan images. The developed software includes wavelet transform-based feature extraction from C-scan images with known crack length and computing the energy associated with wavelet coefficient feature data. The feature data were then nonlinearly modeled using feed-forward neural network for the estimation of crack lengths. The results obtained are very promising and the method can be applied for online monitoring and estimation of micro crack sizes. The smallest crack size estimated was 200 mum within 10% estimation error. Due to limitation of resolution of the sensors, all measurements were performed in the millimeter range and images were resized again to simulate crack sizes in the micro-meter scale.
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基于涡流c扫描图像和神经小波变换的微裂纹长度估计
本文报道的工作涉及基于神经网络的方法的发展,该方法用于使用基于涡流的c扫描图像估计金属板表面上或表面下孔周围发生的裂纹尺寸。开发的软件包括对已知裂纹长度的c扫描图像进行基于小波变换的特征提取,并计算与小波系数特征数据相关的能量。然后利用前馈神经网络对特征数据进行非线性建模,估计裂缝长度。结果表明,该方法具有良好的应用前景,可用于微裂纹尺寸的在线监测与估计。在10%的估计误差范围内,估计的最小裂纹尺寸为200 μ m。由于传感器分辨率的限制,所有的测量都在毫米范围内进行,并重新调整图像大小以模拟微米尺度的裂纹尺寸。
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