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首页> 外文期刊>Recent advances in electrical & electronic engineering >Incipient Inter-turn Short Circuit Fault Estimation Based on a Faulty Model Observer and ANN-method for Induction Motor Drives
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Incipient Inter-turn Short Circuit Fault Estimation Based on a Faulty Model Observer and ANN-method for Induction Motor Drives

机译:基于故障模型观测器和Ann-Method的初始匝间短路故障估计

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Background: According to statistics, short circuit faults are the second most frequent faults in induction motors. Thus, in this paper, we investigated inter turn short circuit faults in their early stage. Methods: A new equivalent model of the induction motor with turn to turn fault on one phase has been developed. This model has been used to establish two schemes to estimate the severity of the short circuit fault. In the first scheme, the faulty model is considered as an observer, where a correction of an error between the measured and the estimated currents is the kernel of the fault severity estimator. However, to develop the second method, the model was required only in the training process of an artificial neural network (ANN). Since stator faults have a signature on symmetrical components of phase currents, the magnitudes and angles of these components were used with the mean speed value as inputs of the ANN. A simulation on MATLAB of both techniques has been performed with various stator frequencies. Results: The suggested schemes prove a unique efficiency in the estimation of incipient turn to turn fault. Besides, the ANN based scheme is less complex which reduces its implementation cost. Conclusion: To monitor the stator of an induction motor, the choice of the appropriate algorithm should be done according to the system in which the motor will be installed. If the motor is directing connected to the grid or fed via an inverter with a variable DC bus voltage, the observer would be better, otherwise, the ANN algorithm is recommended.
机译:背景:根据统计,短路故障是感应电机中的第二个最常用的故障。因此,在本文中,我们在早期阶段调查了间隙短路故障。方法:开发了一种新的等效模型,在一相上转弯转动故障的电动机的新等效模型。该模型已被用于建立两个方案来估计短路故障的严重性。在第一种方案中,故障模型被认为是观察者,其中测量和估计电流之间的误差是故障严重性估计器的内核。然而,为了开发第二种方法,仅在人工神经网络(ANN)的培训过程中需要该模型。由于定子故障在相电流的对称分量上具有签名,因此这些部件的幅度和角度与ANN的输入的平均速度值一起使用。通过各种定子频率进行了两种技术的MATLAB模拟。结果:建议的方案证明了初始转弯转向故障的估计中的独特效率。此外,基于ANN的方案不太复杂,降低其实施成本。结论:要监控感应电机的定子,应根据将安装电机的系统进行适当算法的选择。如果电机通过变频器连接到电网或通过变频器馈送变频器,则会更好地,观察者将更好,否则建议使用ANN算法。

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