Identification of three phase induction motor incipient faults using neural network

A. Siddique, G. Yadava, B. Singh
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引用次数: 12

Abstract

The induction motors are most widely used motors in industrial, commercial and residential sectors because of enormous merits of these over other types of available electrical motors. These motors work under various operating stresses, which deteriorate their motor conditions giving rise to faults. The early detection of these deteriorating conditions in incipient phase and its removal/correction is very necessary for the prevention of any external faults/failure of induction motors reducing repair costs and motor outage time. Fault detection using analytical methods is not always possible because it requires a perfect knowledge of the motor model. The artificial neural network techniques are rather easy to develop and to perform. These networks can be applied when the information about the system is obtained from measurements, which later can be used in the training procedures of the neural networks. Neural detectors can be designed from simulation or experimental tests. In the present paper the applicability/feasibility of artificial neural network (ANN) technique for the detection and identification of incipient faults in an induction motor has been explored. Radial basis function (exact fit) approach has been used for ANN training and test. The applicability of the graphical user interface (GUI) of neural network tool box under Matlab environment has been explored in this paper. The various types of faults have been considered. Three phase instantaneous voltages and currents are utilized in proposed approach. Simulated fault current and voltage data have been used for testing of trained network.
基于神经网络的三相异步电动机早期故障识别
感应电动机是工业、商业和住宅领域应用最广泛的电动机,因为它们比其他类型的可用电动机具有巨大的优点。这些电动机在各种工作应力下工作,这使它们的电动机条件恶化,从而产生故障。在初始阶段早期发现这些恶化的状况并对其进行清除/纠正对于防止感应电机的任何外部故障/故障,减少维修成本和电机停机时间是非常必要的。使用分析方法进行故障检测并不总是可行的,因为它需要对电机模型有充分的了解。人工神经网络技术很容易开发和实现。当从测量中获得关于系统的信息时,这些网络可以被应用于神经网络的训练过程中。神经检测器可以通过仿真或实验测试来设计。本文探讨了人工神经网络(ANN)技术在感应电动机早期故障检测和识别中的适用性和可行性。径向基函数(精确拟合)方法已被用于人工神经网络的训练和测试。探讨了神经网络工具箱图形用户界面(GUI)在Matlab环境下的适用性。考虑了各种类型的断层。该方法利用了三相瞬时电压和电流。模拟的故障电流和电压数据被用于训练网络的测试。
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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