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An unsupervised, on-line system for induction motor fault detection using stator current monitoring

机译:使用定子电流监控的无监督在线系统,用于感应电动机故障检测

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摘要

A new method for online induction motor fault detection is presented in this paper. This system utilizes artificial neural networks to learn the spectral characteristics of a good motor operating online. This learned spectrum may contain many harmonics due to the load which correspond to normal operating conditions. In order to reduce the number of harmonics which are continuously monitored to a manageable number, a selective frequency filter is employed. This frequency filter only passes those harmonics which are known to be of importance in fault detection, or which are continuously above a set level, to a neural net clustering algorithm. After a sufficient training period, the neural network signals a potential failure condition when a new cluster is formed and persists for some time. Since a fault condition is found by comparison to a prior condition of the machine, online failure prediction is possible with this system without requiring information on the motor or load characteristics. The detection algorithm was implemented and its performance verified on various fault types.
机译:提出了一种在线感应电动机故障在线检测的新方法。该系统利用人工神经网络来学习良好的在线运行电动机的光谱特性。该学习到的频谱可能由于负载而包含许多谐波,这些谐波对应于正常工作条件。为了将被连续监视的谐波的数量减少到可管理的数量,采用了选择性频率滤波器。该频率滤波器仅将已知在故障检测中很重要的谐波或连续超过设定水平的谐波传递给神经网络聚类算法。经过足够的训练时间后,当形成新的群集并持续一段时间后,神经网络会发出潜在的故障情况信号。由于通过与机器的先验条件进行比较发现了故障状况,因此使用该系统可以进行在线故障预测,而无需提供有关电动机或负载特性的信息。实现了检测算法,并在各种故障类型上验证了其性能。

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