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Condition monitoring of induction motor using negative sequence component and THD of the stator current

机译:使用负序分量和定子电流的THD的感应电动机状态监测

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The Condition Monitoring of Induction Motor (IM) is performed to ensure optimal and reliable operation, as IM has numerous applications spread across varied sectors. Mechanical faults such as Broken Rotor bar fault of IM along with supply PQ disturbances create a high degree of non-linearity in the supply. This non-linearity is examined by stator current signature analysis which involves the computation of the Negative Sequence Components (NSC) and Total Harmonic Distortions (THD) of the stator current. These values are given as inputs to the Artificial Neural Network (ANN), Support Vector Machine (SVM) and k-Nearest Neighbor (kNN) classifiers. The results of the classifiers are obtained and compared. It is seen that the classification accuracy for ANN is found to be 90.63%, while for SVM is found to be 92.71% and that of kNN is found to be 85.41%.
机译:由于IM具有遍及各个领域的众多应用,因此对感应电动机(IM)进行状态监视以确保最佳且可靠的运行。机械故障(例如IM的转子条损坏)以及电源PQ干扰会在电源中产生高度的非线性。通过定子电流签名分析来检查这种非线性,该分析涉及定子电流的负序分量(NSC)和总谐波失真(THD)的计算。这些值作为人工神经网络(ANN),支持向量机(SVM)和k最近邻(kNN)分类器的输入给出。获得并比较分类器的结果。可以看出,ANN的分类准确度为90.63 \%,而SVM的分类准确度为92.71 \%,kNN的分类准确度为85.41 \%。

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