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Frequency invariant classification of ultrasonic weld inspection signals

机译:超声波焊接检查信号的频率不变分类

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Automated signal classification systems are finding increasing use in many applications for the analysis and interpretation of large volumes of signals. Such systems show consistency of response and help reduce the effect of variabilities associated with human interpretation. This paper deals with the analysis of ultrasonic NDE signals obtained during weld inspection of piping in boiling water reactors. The overall approach consists of three major steps, namely, frequency invariance, multiresolution analysis, and neural network classification. The data are first preprocessed whereby signals obtained using different transducer center frequencies are transformed to an equivalent reference frequency signal. Discriminatory features are then extracted using a multiresolution analysis technique, namely, the discrete wavelet transform (DWT). The compact feature vector obtained using wavelet analysis is classified using a multilayer perceptron neural network. Two different databases containing weld inspection signals have been used to test the performance of the neural network. Initial results obtained using this approach demonstrate the effectiveness of the frequency invariance processing technique and the DWT analysis method employed for feature extraction.
机译:自动化信号分类系统在许多应用中越来越多地用于分析和解释大量信号。这样的系统显示了响应的一致性,并有助于减少与人类解释相关的变异性的影响。本文分析了在沸水反应堆管道的焊接检查过程中获得的超声波NDE信号。总体方法包括三个主要步骤,即频率不变性,多分辨率分析和神经网络分类。首先对数据进行预处理,从而将使用不同换能器中心频率获得的信号转换为等效参考频率信号。然后使用多分辨率分析技术(即离散小波变换(DWT))提取歧视性特征。使用多层感知器神经网络对使用小波分析获得的紧凑特征向量进行分类。包含焊缝检查信号的两个不同数据库已用于测试神经网络的性能。使用这种方法获得的初步结果证明了频率不变处理技术和用于特征提取的DWT分析方法的有效性。

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