基于谱和判别分析的感应电机故障分类

Rahul R. Kumar, A. Tortella, M. Andriollo
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引用次数: 1

摘要

提出了一种用于异步电动机定子和转子相关故障分类的新型状态指示器。它依赖于所讨论的电机的特征故障频率,并且可以扩展到具有不同磁性结构的不同类型的电机。所提出的占带功率比方法侧重于特征故障频率的功率集中,并以无单位量的形式给出最终结果。利用该方法开发的特征使用线性数据解释工具进行研究,并进一步使用判别分析进行分类优化。通过电网和逆变式异步电机的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral and Discriminant Analysis Based Classification of Faults in Induction Machines
This paper presents a new condition indicator for classifying of stator and rotor related faults in induction motors. It relies on the characteristic fault frequencies of the motor in question and can be extended to different types of motors with different magnetic structures. The proposed method, occupied band-power ratio, focuses on the power concentration of the characteristics fault frequencies and yields the final result as a unit-less quantity. Features developed using this method are studied using linear data explanatory tools and further optimized with Discriminant Analysis for classification. The efficacy of the proposed method is validated experimentally by using grid and inverter fed induction motors.
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