FPGA based intelligent condition monitoring of induction motors: Detection, diagnosis, and prognosis

E. Akin, I. Aydin, M. Karakose
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引用次数: 20

Abstract

This paper presents three intelligent methods for condition monitoring of induction motors in real-time. A structured neural network has been designed to prognosis of instantaneous faults. The inputs of neural network are the standard deviation and mean of feature signal obtained by Hilbert transform of one phase current signal. The stator related faults have been diagnosed by designing fuzzy logic. The amplitudes of three phase currents have been given to fuzzy logic and the condition of stator has been diagnosed. The last algorithm uses the phase space of the Hilbert transform of one phase current and detects broken rotor bar faults using negative selection algorithm. The contribution of the algorithm is the development of synchronously worked algorithms, optimized for low-cost Field Programmable Gate Array (FPGA) implementation. Extensive simulations were applied to test the performance of each algorithm, and the results show that the algorithms give high accuracy in detecting whether a possible fault has occurred in any component of the motor. The average detection time of the faults is above within 2 milliseconds or less.
基于FPGA的感应电机智能状态监测:检测、诊断和预测
本文介绍了异步电动机状态实时监测的三种智能方法。设计了一种结构化的神经网络对瞬时故障进行预测。神经网络的输入是对一相电流信号进行希尔伯特变换得到的特征信号的标准差和均值。通过设计模糊逻辑,对定子相关故障进行了诊断。将三相电流幅值进行模糊逻辑处理,并对定子的状态进行了诊断。最后一种算法利用一相电流希尔伯特变换的相空间,采用负选择算法检测转子断条故障。该算法的贡献在于开发了同步工作算法,并针对低成本的现场可编程门阵列(FPGA)实现进行了优化。大量的仿真应用来测试每个算法的性能,结果表明,算法在检测电机的任何部件是否发生可能的故障方面具有很高的准确性。故障的平均检测时间在2毫秒以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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