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Induction machine fault detection using stray flux EMF measurement and neural network-based decision

机译:基于杂散磁通量电动势测量和基于神经网络的决策的感应电机故障检测

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摘要

The aim of this paper is to present the performances of voltage unbalance and rotor fault detections using an external stray flux sensor in a working three-phase induction machine. The automatic classification and fault severity degree evaluation are realized by using a neural network approach based on a multi-layer perceptron (MLP) structure. In this paper, it is proved that a simple external stray flux sensor is more efficient than the classical stator current sensor to detect rotor broken bar and voltage unbalance, using data processing at low-frequency resolution.
机译:本文的目的是介绍在工作的三相感应电机中使用外部杂散磁通传感器进行电压不平衡和转子故障检测的性能。通过使用基于多层感知器(MLP)结构的神经网络方法来实现自动分类和故障严重程度评估。本文证明,使用低频分辨率的数据处理,简单的外部杂散磁通传感器比传统的定子电流传感器更有效地检测转子断条和电压不平衡。

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