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Condition Monitoring and Fault Diagnosis of Induction Motor Using Support Vector Machine

机译:支持向量机在异步电动机状态监测与故障诊断中的应用

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This article deals with the condition monitoring and fault diagnosis of a three-phase induction motor using a support vector machine classifier. By acquiring the three line voltages and currents of the motor in real time (experimentally on a 3-HP motor in the laboratory environment), total harmonic distortion is calculated, which in turn is used for the training of the support vector machine. A laboratory prototype has been developed through which various data have been generated by conducting extensive experiments on a healthy motor as well on a motor having faulty bearing, shorting of stator turns, and broken rotor bars with varying load conditions. The performance of the projected support vector machine-based scheme has been assessed for two kernel runctions on the basis of fault classification accuracy. It can be noted that the accuracy of the radial basis function kernel is higher than that of the polynomial kernel. The proposed support vector machine-based scheme gives satisfactorily results, as the fault discrimination accuracy is found to be more than 98%. Simultaneously, it also gives an accuracy of the order of 95% for different motor design specifications, which confirms robustness of the proposed scheme.
机译:本文使用支持向量机分类器处理三相感应电动机的状态监测和故障诊断。通过实时获取电动机的三线电压和电流(在实验室环境中以实验方式在3-HP电动机上),可以计算出总谐波失真,进而将其用于支持向量机的训练。已经开发出了实验室原型,通过对健康的电动机以及轴承故障,定子匝数短路以及转子条在负载条件变化的情况下进行广泛的实验,可以通过各种实验数据生成各种数据。基于故障分类的准确性,已经针对两个核函数对基于支持向量机的计划方案的性能进行了评估。可以注意到,径向基函数核的精度高于多项式核。所提出的基于支持向量机的方案给出了令人满意的结果,因为发现的故障识别准确率超过98%。同时,对于不同的电机设计规格,它还提供了95%的精度,这证实了所提出方案的鲁棒性。

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