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Automatic and Online Detection of Rotor Fault State

机译:转子故障状态的自动在线检测

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In this work, we propose a new and simple method to insure an online and automatic detection of faults that affect induction motor rotors. Induction motors now occupy an important place in the industrial environment and cover an extremely wide range of applications. They require a system installation that monitors the motor state to suit the operating conditions for a given application. The proposed method is based on the consideration of the spectrum of the single-phase stator current envelope as input of the detection algorithm. The characteristics related to the broken bar fault in the frequency domain extracted from the Hilbert Transform is used to estimate the fault severity for different load levels through classification tools. The frequency analysis of the envelope gives the frequency component and the associated amplitude which define the existence of the fault. The clustering of the indicator is chosen in a two-dimensional space by the fuzzy c mean clustering to find the center of each class. The distance criterion, the K-Nearest Neighbor (KNN) algorithm and the neural networks are used to determine the fault type. This method is validated on a 5.5-kW induction motor test bench.
机译:在这项工作中,我们提出了一种新的简单方法,以确保在线和自动检测影响感应电动机转子的故障。现在,感应电动机在工业环境中占据着重要的位置,并涵盖了极其广泛的应用领域。他们需要系统安装来监视电动机状态,以适应给定应用的运行条件。所提出的方法是基于对单相定子电流包络的频谱作为检测算法输入的考虑。从希尔伯特变换中提取的与频域中的断条故障相关的特性用于通过分类工具估算不同负载水平下的故障严重性。包络线的频率分析给出了定义故障存在的频率分量和相关的幅度。通过模糊c均值聚类在二维空间中选择指标的聚类,以找到每个类别的中心。距离准则,K最近邻算法(KNN)和神经网络用于确定故障类型。该方法在5.5 kW感应电动机测试台上得到验证。

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