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Evaluation stator winding faults severity in inverter-fed induction motors

机译:评估逆变器感应电动机中的定子绕组故障严重性

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Three-phase induction motor are one of the most important elements of electromechanical energy conversion in the production process. However, they are subject to inherent faults or failures under operating conditions. The purpose of this paper is to present a comparative study among intelligent tools to classify short-circuit faults in stator windings of induction motors operating with three different models of frequency inverters. This is performed by analyzing the amplitude of the stator current signal in the time domain, using a dynamic acquisition rate according to machine frequency supply. To assess the classification accuracy across the various levels of faults severity, the performance of three different learning machine techniques were compared: (i) fuzzy ARTMAP network; (ii) multilayer perceptron network; and (iii) support vector machine. Results obtained from 2.268 experimental tests are presented to validate the study, which considered a wide range of operating frequencies and load conditions. (C) 2015 Elsevier B.V. All rights reserved.
机译:三相感应电动机是生产过程中机电能量转换的最重要元素之一。但是,它们在操作条件下会遭受固有的故障或故障。本文的目的是对智能工具进行比较研究,以对使用三种不同型号的变频器运行的感应电动机的定子绕组中的短路故障进行分类。通过在时域中分析定子电流信号的幅度,并根据电机频率的供应情况使用动态采集速率来执行此操作。为了评估故障严重程度各个级别上的分类准确性,比较了三种不同学习机技术的性能:(i)模糊ARTMAP网络; (ii)多层感知器网络; (iii)支持向量机。提出了从2.268个实验测试获得的结果,以验证该研究,该研究考虑了广泛的工作频率和负载条件。 (C)2015 Elsevier B.V.保留所有权利。

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