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Fault diagnosis of the asynchronous machines through magnetic signature analysis using finite-element method and neural networks

机译:有限元方法和神经网络通过磁签名分析对异步电机进行故障诊断

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This paper presents a method for the identification of winding failures in induction motors. The types of failures include unbalanced currents flowing into the motor and short-circuit of the winding. The radiated magnetic field of a typical induction motor was studied while various types of failures applied to the machine. The implementation was performed by applying different types of unbalanced currents flow into the machine. The fields were obtained from both numerical finite-element simulations as well as from experimental setups. The turn to terminal and turn to turn short-circuit of the motor's winding were studied. The frequency response of the 3-D finite-element (3DFE) model of the motor was implemented up to high-order frequencies. The numerical results were compared with the measurement results. The fields with unbalanced currents and short-circuit conditions were identified by studying the harmonic orders of the radiated magnetic fields. This was also implemented using artificial neural networks (ANN). The results show that the signature study of the experimental as well as the simulation models can be utilized for failure identification in electric motors with a high level of accuracy.
机译:本文提出了一种用于识别感应电动机绕组故障的方法。故障类型包括流入电动机的不平衡电流和绕组短路。研究了典型感应电机的辐射磁场,同时将各种类型的故障应用于电机。通过应用流入机器的不同类型的不平衡电流来执行该实现。这些场是从数值有限元模拟以及实验设置中获得的。研究了电机绕组的匝间短路和匝间短路。电机的3-D有限元(3DFE)模型的频率响应已实现到高阶频率。将数值结果与测量结果进行比较。通过研究辐射磁场的谐波阶次,可以确定具有不平衡电流和短路条件的场。这也使用人工神经网络(ANN)实现。结果表明,实验和仿真模型的签名研究可用于高精度的电动机故障识别。

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