基于模糊聚类和遗传算法的人工免疫激励故障检测算法

I. Aydin, M. Karakose, E. Akin
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引用次数: 28

摘要

早期发现和诊断早期故障是对异步电动机进行在线状态监测和提高运行效率的重要手段。本文提出了一种基于模糊聚类和遗传算法的人工免疫激励故障检测算法,用于感应电动机转子断条和接头断条故障的检测。该算法只使用一相定子电流作为输入,不需要任何其他信号。利用希尔伯特变换得到新的特征信号包络。该信号在非线性时间序列分析方法构造的相空间中进行检测。采用负选择人工免疫算法检测故障。采用模糊聚类方法得到健康运动相空间的聚类中心,并将其作为自模式。负选择检测器采用遗传算法生成。由模糊聚类产生的自模式加快了算法的训练阶段,并且只需要少量的检测器就足以检测到感应电机的任何故障。结果表明,该系统能够成功地检测三相异步电动机的故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial immune inspired fault detection algorithm based on fuzzy clustering and genetic algorithm methods
Early detection and diagnosis of incipient faults are desired for online condition monitoring and improved operational efficiency of induction motors. In this study, an artificial immune inspired fault detection algorithm based on fuzzy clustering and genetic algorithm is developed to detect broken rotor bar and broken connector faults in induction motors. The proposed algorithm uses only one phase stator current as input without the need for any other signals. The new feature signal called envelop is obtained by using Hilbert transform. This signal is examined in a phase space that is constructed by nonlinear time series analysis method. The artificial immune algorithm called negative selection is used to detect faults. The cluster centers of healthy motor phase space are obtained by fuzzy clustering method and they are taken as self patterns. The detectors of negative selection are generated by genetic algorithm. Self patterns generated by fuzzy clustering speed up the training stage of our algorithm and only small numbers of detectors are sufficient to detect any faults of induction motor. Results have demonstrated that the proposed system is able to detect faults in a three phase induction motor, successfully.
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