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Online fault detection of induction motors using independent component analysis and fuzzy neural network

机译:基于独立分量分析和模糊神经网络的感应电动机在线故障检测

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This paper proposes the use of independent component analysis and fuzzy neural network for online fault detection of induction motors. The most dominating components of the stator currents measured from laboratory motors are directly identified by an improved method of independent component analysis, which are then used to obtain signatures of the stator current with different faults. The signatures are used to train a fuzzy neural network for detecting induction-motor problems such as broken rotor bars and bearing fault. Using signals collected from laboratory motors, the robustness of the proposed method for online fault detection is demonstrated for various motor load conditions.
机译:本文提出将独立分量分析和模糊神经网络用于感应电动机的在线故障检测。通过改进的独立分量分析方法,可以直接识别从实验室电动机测得的定子电流中最主要的分量,然后将其用于获得具有不同故障的定子电流的信号。签名用于训练模糊神经网络,以检测感应电动机问题,例如转子条断裂和轴承故障。使用从实验室电动机收集的信号,证明了所提出的在线故障检测方法在各种电动机负载条件下的鲁棒性。

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