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Temporary short circuit detection in induction motor winding using combination of wavelet transform and neural network

机译:小波变换与神经网络相结合的感应电动机绕组临时短路检测

摘要

Monitoring system for induction motor is widely developed to detect the incipient fault. Such system is desirable to detect the fault at the running condition to avoid the motor stop running suddenly. In this paper, a new method for detection system is proposed that emphasizes the fault occurrences as temporary short circuit in induction motor winding. The investigation of fault detection is focused on the transient phenomena during starting and ending points of temporary short circuit. The proposed system utilizes the wavelet transform for processing the motor current signal. Energy level of high frequency signal from wavelet transform is used as the input vriable of neural network which works as detection system. Three types of neural networks are developed and evaluated including feed forward neural network (FFNN), Elman neural network (ELMNN) and radial basis functions neural network (RBFNN). The results show that ELMNN is the most simply and accurate system that can recognize all of unseen data test. Laboratory based experimental setup is performed to provide real-time measurement data for this research.
机译:感应电动机的监视系统已被广泛开发以检测早期故障。期望这种系统在运行状况下检测故障,以避免电动机突然停止运行。本文提出了一种新的检测系统方法,该方法强调了由于异步电动机绕组中的临时短路而引起的故障。故障检测的研究集中在临时短路的起点和终点期间的瞬态现象。所提出的系统利用小波变换来处理电动机电流信号。来自小波变换的高频信号的能级被用作神经网络的输入变量,该神经网络用作检测系统。开发并评估了三种类型的神经网络,包括前馈神经网络(FFNN),艾尔曼神经网络(ELMNN)和径向基函数神经网络(RBFNN)。结果表明,ELMNN是最简单,最准确的系统,可以识别所有看不见的数据测试。执行基于实验室的实验设置以为这项研究提供实时测量数据。

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