Turn To Turn Short Circuit Classification In Induction Motor Stator Windings Caused By Isolation Failure Using Neural Network (NN) Method

I. Karyatanti, Belly Yan Dewantara, D. Rahmatullah, Barli Jeihan Irawan
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Abstract

Almost all industries use induction motors as production aids, this is due to several reasons, namely, the resulting rotational speed is constant, the induction motor does not have a brush so that the friction loss can be reduced, and easy maintenance. In this study is to detect damage to the stator winding caused by lamination of the windings so that a short circuit occurs in one phase, which is also called a turn fault. The Fast Fourier Transform (FFT) method is used to detect currents with a load of 0%, and 100% which will later be detected for classification on the Neural Network (NN). Categorizing the level of loading and the level of damage experienced by induction motors, namely turn to turn u1, turn to turn u1 and v1, and turn to turn u1, v1 and w1. The reading of the test results conducted on the Neural Network has good prediction results because the Mean Squared Error (MSE) produced does not exceed the specified 5% erracy level.
基于神经网络的异步电动机定子绕组隔离故障匝间短路分类
几乎所有的行业都使用感应电机作为生产助剂,这是由于几个原因,即由此产生的转速恒定,感应电机没有电刷从而可以减少摩擦损失,并且易于维护。本研究的目的是检测绕组叠片对定子绕组造成的损坏,从而导致某一相发生短路,也称为匝故障。快速傅里叶变换(FFT)方法用于检测负载为0%和100%的电流,稍后将在神经网络(NN)上进行分类检测。对感应电机的载荷等级和损坏等级进行分类,即转到u1,转到u1和v1,转到u1, v1和w1。在神经网络上进行的测试结果的读取具有良好的预测结果,因为产生的均方误差(MSE)不超过指定的5%的误差水平。
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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