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INDUCTION MOTOR FAULT DETECTION AND DIAGNOSIS USING ARTIFICIAL NEURAL NETWORKS

机译:基于人工神经网络的感应电机故障检测与诊断

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摘要

This paper investigates induction motor fault detection and diagnosis using Artificial Neural Networks (ANN). The ANN techniques include feedforward backpropagation networks (FFBPN) and self organizing maps (SOM), used individually and in combination. Common induction motor faults such as bearing faults, stator winding fault, unbalanced rotor and broken rotor bars are considered. The ANNs were trained and tested using dynamic measurements of stator currents and mechanical vibration signals. The effects of different network structures and the training set sizes on the performance of the ANNs are discussed. This study shows that, while the feedforward ANNs give satisfactory results and the SOMs can classify the type of motor fault during steady state working conditions, using a combination of SOM and FFBPN techniques yields superior fault detection and diagnostic accuracy. In addition, incipient motor fault detection has been investigated. The above results show that improved induction motor maintenance strategies may be possible through the use of comprehensive on-line induction motor condition monitoring and fault diagnosis systems.
机译:本文研究了使用人工神经网络(ANN)进行的感应电动机故障检测和诊断。 ANN技术包括前馈反向传播网络(FFBPN)和自组织映射(SOM),它们可以单独使用,也可以组合使用。考虑了常见的感应电动机故障,例如轴承故障,定子绕组故障,转子不平衡和转子线断裂。使用定子电流和机械振动信号的动态测量对ANN进行训练和测试。讨论了不同网络结构和训练集大小对人工神经网络性能的影响。这项研究表明,尽管前馈ANN可以提供令人满意的结果,并且SOM可以对稳态工作条件下的电动机故障类型进行分类,但结合使用SOM和FFBPN技术可以产生出色的故障检测和诊断准确性。另外,已经研究了初始电动机故障检测。以上结果表明,通过使用全面的在线感应电动机状态监测和故障诊断系统,可以改善感应电动机的维护策略。

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