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Angular and axial evaluation of superficial defects on non-accessible pipes by wavelet transform and neural network-based classification

机译:基于小波变换和基于神经网络的分类法对不可及管道表面缺陷的角度和轴向评估

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In this paper an effective procedure that allows evaluating the dimensions of corrosive flaws on non-accessible pipes is presented. The method is based on the propagation of ultrasound waves, analyzing the informative content of echoes reflected by defects. The approach exploits the properties of the wavelet transform to represent signals by a reduced form. The coefficients of this representation are selected properly by making use of a filter method followed by a genetic algorithm and, then, they feed a neural network classifier which evaluates the dimensions of defects on the pipe under test. Numerical results show low error rates in the evaluation of both angular and axial extension of each flaw. The main advantage offered by the method consists of analyzing long lines of non-accessible pipes, realizing an automatic evaluation of the dimensions of superficial flaws in pipelines. (C) 2009 Elsevier B.V. All rights reserved.
机译:本文提出了一种有效的程序,该程序可以评估不可触及的管道上的腐蚀缺陷的尺寸。该方法基于超声波的传播,分析缺陷反射回波的信息量。该方法利用小波变换的属性以简化形式表示信号。通过使用滤波方法以及遗传算法来适当选择该表示的系数,然后将它们馈入一个神经网络分类器,该分类器可评估被测管道上缺陷的尺寸。数值结果表明,在评估每个缺陷的角度和轴向延伸率时,错误率较低。该方法提供的主要优点包括分析无法触及的管道的长线,实现对管道表面缺陷尺寸的自动评估。 (C)2009 Elsevier B.V.保留所有权利。

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