基于机器学习的大功率异步电动机实时故障识别与分类研究

Usman Ali, R. Hafiz, T. Tauqeer, U. Younis, Waqas Ali, Asrar Ahmad
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引用次数: 1

摘要

电机电流特征分析和振动分析技术已被用于大功率感应电机的故障识别和分类。将快速傅里叶变换应用于异步电动机定子电流信号和振动信号的时域分析。对正常和不正常的电机电流和振动信号进行了频谱比较。已经使用了五种不同的机器学习分类算法来评估感应电机的性能。开发的系统为传统的离线异步电机状态监测系统提供了一种经济、实时的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Machine Learning based Real-time Fault Identification and Classification in High Power Induction Motors
Motor current signature analysis and vibration analysis techniques have been used for the identification and classification of faults in high power induction motors. Fast fourier transform has been applied to the time domain stator current signal and vibration signal of the induction motor. A comparison of the frequency spectrum has been performed between healthy and unhealthy motor current and vibration signals. Five different machine learning classification algorithms have been used to evaluate the performance of the induction motor. The developed system provides a cost-effective and real-time alternative to the conventional off-line induction motor condition monitoring systems.
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