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Feature Knowledge Based Fault Detection of Induction Motors Through the Analysis of Stator Current Data

机译:基于定子电流数据分析的基于特征知识的异步电动机故障检测

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摘要

The fault detection of electrical or mechanical anomalies in induction motors has been a challenging problem for researchers over decades to ensure the safety and economic operations of industrial processes. To address this issue, this paper studies the stator current data obtained from inverter-fed laboratory induction motors and investigates the unique signatures of the healthy and faulty motors with the aim of developing knowledge based fault detection method for performing online detection of motor fault problems, such as broken-rotor-bar and bearing faults. Stator current data collected from induction motors were analyzed by leveraging fast Fourier transform (FFT), and the FFT results were further analyzed by the independent component analysis (ICA) method to obtain independent components and signature features that are referred to as FFT-ICA features of stator currents. The resulting FFT-ICA features contain rich information on the signatures of the healthy and faulty motors, which are further analyzed to build a feature knowledge database for online fault detection. Through case studies, this paper demonstrated the high accuracy, simplicity, and robustness of the proposed fault detection scheme for fault detection of induction motors. In addition, with the integration of the feature knowledge database, prior knowledge of the motor parameters, such as rotor speed and per-unit slip, which are needed by the other motor current signature analysis (MCSA) methods, is not required for the proposed method, which makes it more efficient compared with the other MCSA methods.
机译:几十年来,对于确保工业过程的安全性和经济性运行,对于研究人员而言,感应电动机中电气或机械异常的故障检测一直是研究人员面临的难题。为了解决这个问题,本文研究了从逆变器供电的实验室感应电动机获得的定子电流数据,并研究了健康和故障电动机的独特特征,目的是开发基于知识的故障检测方法以在线检测电动机故障问题,如转子断条和轴承故障。利用快速傅里叶变换(FFT)分析从感应电动机收集的定子电流数据,并通过独立分量分析(ICA)方法进一步分析FFT结果,以获得独立分量和签名特征,称为FFT-ICA特征定子电流。所得的FFT-ICA特征包含有关正常电动机和故障电动机特征的丰富信息,可对其进行进一步分析以建立用于在线故障检测的特征知识数据库。通过案例研究,本文证明了所提出的用于感应电动机故障检测的故障检测方案的高精度,简便性和鲁棒性。此外,通过集成特征知识数据库,建议的其他电动机电流特征分析(MCSA)方法不需要电动机参数的先验知识,例如转子速度和每单位转差率。方法,与其他MCSA方法相比,效率更高。

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