Detection of coil shorting in an induction motor by means of wavelet detectors based on orthogonal Legendre polynomials

M. Zajac, M. Sułowicz
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引用次数: 1

Abstract

This paper presents the application of narrowband detection wavelet filters, which use the Legendre orthogonal polynomial family, in the diagnostics of coil shorting in induction motors. Wavelet orthonormal bases were built with the use of the recurrent relationships generating higher-degree Legendre polynomials. For the scaling function constructed in the form of linear combination of Legendre polynomials of the selected levels, synthesis of the basic wavelet was performed - this mapped the characteristic properties of the signal carrying the information about the nature of the fault. A signal proportional to the machine axial flux was used for the analysis - this enabled the required diagnostics. On the basis of the constructed wavelet bases, the results of the analyses of the signals registered in the different states of the winding short-circuits of the stator winding of an induction motor operating under the constant load, were presented. The choice of an advanced method of analysis was dictated by the occurrence of the periodic energy flow of signals between the adjacent frequency bands which made the Fourier analyses ineffective.
基于正交勒让德多项式的小波检测器检测感应电机线圈短路
本文介绍了基于勒让德正交多项式族的窄带检测小波滤波器在异步电动机线圈短路诊断中的应用。利用生成高次勒让德多项式的循环关系建立了小波正交基。对于以所选层次的勒让德多项式的线性组合形式构造的标度函数,进行基本小波的合成-这映射了携带有关故障性质信息的信号的特征属性。与机器轴向磁通成比例的信号用于分析,从而实现所需的诊断。基于所构建的小波基,对恒负载下异步电动机定子绕组绕组短路不同状态下的信号进行了分析。选择一种先进的分析方法取决于信号在相邻频带之间的周期性能量流的出现,这使得傅里叶分析无效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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