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Rotor faults diagnosis in synchronous generators using feature selection and nearest neighbors rule

机译:基于特征选择和最近邻规则的同步发电机转子故障诊断

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Feature selection and nearest neighbors rule technique is used to diagnose large-generator rotor faults. Thus, a specific experimental setup has been designed to perform the methodology of rotor faults detection. This experimental setup is a small scale prototype of a nuclear plant turbo-generator, which is actually DC excited synchronous machine. In this generator, electrical (turn-to-turn failures) and mechanical faults (eccentricities) can be carried out. Sixteen functional states have been performed for five operating points. Stator current, voltage and flux density in the air-gap have been recorded. A list of features is then extracted from these records. To reduce their number, the SBS algorithm is used and the classification is performed by using the k-NN rule. As a result, the classification accuracy is 77.4% and the rotor faults accuracy reaches 85.1% which prove the efficiency of the method.
机译:特征选择和最近邻规则技术用于诊断大型发电机转子故障。因此,已经设计了一种特定的实验装置来执行转子故障检测的方法。该实验装置是核电站涡轮发电机的小型原型,实际上是直流励磁同步电机。在该发电机中,可能会发生电气故障(匝间故障)和机械故障(偏心率)。已针对五个操作点执行了十六个功能状态。记录了气隙中的定子电流,电压和磁通密度。然后从这些记录中提取特征列表。为了减少它们的数量,使用了SBS算法,并使用k-NN规则进行了分类。结果,分类精度为77.4%,转子故障精度达到85.1%,证明了该方法的有效性。

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