基于最佳拟合三维椭圆法的感应电机匝间短路识别分类算法比较

Julien Maître, B. Bouchard, A. Bouzouane, S. Gaboury
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引用次数: 3

摘要

感应电机因其坚固和易于实现而在工业中无处不在。然而,这些电动机仍然承认故障[例如,匝间短路(ITSC)和转子条断],这可能导致意外停机。因此,制造业投入了大量的资源来避免它们的维护。在这方面的研究已经取得了一些成果,但尚未开发出任何最优解决方案(检测、定位和估计故障严重程度)。因此,在本文中,我们建议在不同的分类算法之间进行性能和鲁棒性的比较,这些算法可以检测,近似(故障的严重程度),并定位(哪个相位)三相感应电机定子相的ITSC。据我们所知,这是第一次通过在定子相位检测(识别)中使用ITSC预先定义的自动分类来提出这样的评估。本文旨在提供对可能发生的故障识别的理解愿景,以便开发未来的最佳解决方案,这些解决方案将在工业环境中部署。
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Classification Algorithms Comparison for Interturn Short-Circuit Recognition in Induction Machines Using Best-Fit 3-D-Ellipse Method
Induction machines are omnipresent in industry because of their sturdiness and their ease of implementation. Nevertheless, these electrical motors still concede failures [e.g., interturn short circuit (ITSC) and broken rotor bar], which may lead to unplanned shutdowns. Consequently, manufacturing industries invest significant resources to avoid them with maintenance. Some studies have been achieved in this area of research, but any of the optimal solution (detecting, localizing, and estimating the degree of severity of failures) has been developed. Thus, in this paper, we propose to perform a comparison of performance and robustness between different classification algorithms, which can detect, approximate (severity of the failure), and localize (which phase) the ITSC in the stator phase(s) of the three-phase induction machine. To the best of our knowledge, it is the first time that such an evaluation has been suggested by using automated classification into predefined categories for ITSC in the stator phase(s) detection (recognition). This paper aims at providing an understanding vision of the recognition of failures that may occur, in order to develop future optimal solutions, which will be deployed in industry environment.
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期刊介绍: The Canadian Journal of Electrical and Computer Engineering (ISSN-0840-8688), issued quarterly, has been publishing high-quality refereed scientific papers in all areas of electrical and computer engineering since 1976
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