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Enhanced feature selection from wavelet packet coefficients in fault diagnosis of induction motors with artificial neural networks

机译:小波包系数的增强特征选择在人工神经网络感应电动机故障诊断中的应用

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Wavelet packet decomposition (WPD) of line current has been successfully applied in motor fault detection. Enhanced feature selection from wavelet packet coefficients (WPCs) is presented in this paper. This method involves the decomposition of motor current into equally spaced frequency bands by using an all-pass implementation of elliptic IIR half-band filters in the filter bank structure to obtain WPCs in a computationally efficient way. Then, the bias in WPCs for each frequency band is removed to suppress both power system harmonics and leakage from adjacent frequency bands. Finally, the enhanced features are used as inputs to an ANN to provide motor fault detection with higher fault detection rate.
机译:线路电流的小波包分解(WPD)已成功应用于电机故障检测。本文提出了基于小波包系数(WPC)的增强特征选择。该方法涉及通过在滤波器组结构中使用椭圆IIR半带滤波器的全通实现将电动机电流分解为等间隔的频带,从而以计算有效的方式获得WPC。然后,消除每个频段的WPC中的偏置,以抑制电力系统谐波和相邻频段的泄漏。最后,增强功能用作ANN的输入,以更高的故障检测率提供电动机故障检测。

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