Neural Classification of Rotor Faults in Three-Phase Induction Motors using Electric Current Signals in the Frequency Domain

Q4 Computer Science
R. H. Palácios, I. Nunes da Silva, Wagner Fontes Godoy
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引用次数: 0

Abstract

Three-phase induction motors are widely used in different applications in the industry due to their robustness, low cost, and reliability. Untimely identification and correct diagnosis of incipient faults reduce cost and improve the maintenance management of these machines. This paper explores a new method for robust classification of rotor failures in three-phase induction motors (MITs) connected directly to the electrical network, operating in a steady-state, under unbalanced voltages and load conditions. Through an innovative methodology, an analysis of the electrical current signals from 1 hp and 2 hp motors in the frequency domain was performed. Such analysis was applied in constructing input matrices for a Multilayer Perceptron Neural Network (MLPNN) to detect faults. Furthermore, this methodology proved to be robust because the samples of the failing and healthy motors include voltage unbalance conditions in the electrical supply and a significant variation in the load applied to the motor shaft. Such load variation was used for the detection of failures of 1, 2, and 4 broken bars consecutively on the rotor and in the condition of 2 broken bars and 2 other broken bars diametrically opposite. The results were promising and were obtained using 847 real samples from an experimental bench used to construct the neural model and its respective validation.
基于频域电流信号的三相异步电动机转子故障神经网络分类
三相异步电动机因其稳健性、低成本和可靠性而广泛应用于工业的不同领域。早期故障的及时识别和正确诊断降低了成本,提高了这些机器的维护管理。本文探讨了一种对三相异步电动机转子故障进行鲁棒分类的新方法,该方法对三相异步电动机在稳态、不平衡电压和负载条件下的转子故障进行鲁棒分类。通过一种创新的方法,对1hp和2hp电机的电流信号进行了频域分析。将这种分析应用于多层感知器神经网络(MLPNN)的输入矩阵构造中,用于故障检测。此外,该方法被证明是稳健的,因为故障和健康电机的样本包括电源中的电压不平衡条件和施加在电机轴上的负载的显著变化。利用这种载荷变化检测转子上连续出现1、2、4根断条故障,以及2根断条与另外2根断条完全相反的情况。实验台上847个真实样本构建了神经网络模型并对其进行了验证,结果令人满意。
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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来源期刊
Revista de Informatica Teorica e Aplicada
Revista de Informatica Teorica e Aplicada Computer Science-Computer Science (all)
CiteScore
0.90
自引率
0.00%
发文量
14
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