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首页> 外文期刊>Journal of computer sciences >Artificial Neural Network Based Rotor Capacitive Reactance Control for Energy Efficient Wound Rotor Induction Motor
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Artificial Neural Network Based Rotor Capacitive Reactance Control for Energy Efficient Wound Rotor Induction Motor

机译:基于人工神经网络的高效绕线转子感应电动机转子电容电抗控制

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Problem statement: The Rotor reactance control by inclusion of external capacitance in the rotor circuit has been in recent research for improving the performances of Wound Rotor Induction Motor (WRIM). The rotor capacitive reactance is adjusted such that for any desired load torque the efficiency of the WRIM is maximized. The rotor external capacitance can be controlled using a dynamic capacitor in which the duty ratio is varied for emulating the capacitance value. This study presents a novel technique for tracking maximum efficiency point in the entire operating range of WRIM using Artificial Neural Network (ANN). The data for ANN training were obtained on a three phase WRIM with dynamic capacitor control and rotor short circuit at different speed and load torque values. Approach: A novel neural network model based on the back-propagation algorithm has been developed and trained in determining the maximum efficiency of the motor with no prior knowledge of the machine parameters. The input variables to the ANN are stator current (I_s), Speed (N) and Torque (T_m) and the output variable is the duty ratio (D). Results: The target is pre-set and the accuracy of the ANN model is measured using Mean Square Error (MSE) and R2 parameters. The result of R2 value of the proposed ANN model is found to be 0.99980. Conclusion: The optimal duty ratio and corresponding optimal rotor capacitance for improving the performances of the motor are predicted for low, medium and full loads by using proposed ANN model.
机译:问题陈述:通过研究在转子电路中包含外部电容来进行转子电抗控制是最近的一项研究,旨在提高绕线转子感应电动机(WRIM)的性能。调节转子电容电抗,以使对于任何所需的负载转矩,WRIM的效率都达到最大。可以使用动态电容器来控制转子的外部电容,在动态电容器中,为了模拟电容值而改变占空比。这项研究提出了一种使用人工神经网络(ANN)跟踪WRIM整个工作范围内最大效率点的新技术。用于ANN训练的数据是在三相WRIM上获得的,该WRIM具有动态电容器控制和转子短路,且转速和负载转矩值不同。方法:已经开发并训练了一种基于反向传播算法的新型神经网络模型,无需事先了解机器参数,即可确定电动机的最大效率。 ANN的输入变量是定子电流(I_s),速度(N)和转矩(T_m),输出变量是占空比(D)。结果:预先设定了目标,并使用均方误差(MSE)和R2参数测量了ANN模型的准确性。所提出的人工神经网络模型的R2值的结果为0.99980。结论:使用拟议的ANN模型,可以预测低,中和满负载下用于改善电动机性能的最佳占空比和相应的最佳转子电容。

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