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The Detection System for Oil Tube Defect Based on Multisensor DataFusion by Wavelet Neural Network

机译:基于小波神经网络的多传感器数据融合油管缺陷检测系统

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A detection system of oil tube defect based on wavelet neural network is presented, it got the original information by multigroup vortex sensors and leakage magnetic sensors. We made multiscale wavelet transform and frequency analysis to multichannels original data and extracted multi-attribute parameters from time domain and frequency domain, then we selected the key attribute parameters that have bigger correlativity with the defect pattern of oil tube among of multiattribute parameters. The oil tube defect pattern had four class that is crack, etch pits, eccentric wear and unbroken. The wavelet neural network was adopt to make the multisensor data fusion to detect the defect pattern of oil tube and those key attribute parameters were used to as input of network. The experimental results show that this method is feasible and effective.
机译:提出了一种基于小波神经网络的油管缺陷检测系统,通过多组涡旋传感器和漏磁传感器获得了原始信息。对多通道原始数据进行多尺度小波变换和频率分析,从时域和频域提取多属性参数,然后从多属性参数中选择与油管缺陷模式具有较大相关性的关键属性参数。油管的缺陷图样有四类,即裂纹,腐蚀坑,偏心磨损和未破坏。采用小波神经网络进行多传感器数据融合,以检测油管的缺陷模式,并将关键属性参数作为网络输入。实验结果表明,该方法是可行和有效的。

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