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Rotor Resistance Online Identification of Vector Controlled Induction Motor Based on Neural Network

机译:基于神经网络的矢量控制感应电动机转子电阻在线辨识

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Rotor resistance identification has been well recognized as one of the most critical factors affecting the theoretical study and applications of AC motor’s control for high performance variable frequency speed adjustment. This paper proposes a novel model for rotor resistance parameters identification based on Elman neural networks. Elman recurrent neural network is capable of performing nonlinear function approximation and possesses the ability of time-variable characteristic adaptation. Those influencing factors of specified parameter are analyzed, respectively, and various work states are covered to ensure the completeness of the training samples. Through signal preprocessing on samples and training dataset, different input parameters identifications with one network are compared and analyzed. The trained Elman neural network, applied in the identification model, is able to efficiently predict the rotor resistance in high accuracy. The simulation and experimental results show that the proposed method owns extensive adaptability and performs very well in its application to vector controlled induction motor. This identification method is able to enhance the performance of induction motor’s variable-frequency speed regulation.
机译:转子电阻识别已被公认为是影响交流电动机高性能变频调速控制的理论研究和应用的最关键因素之一。提出了一种基于埃尔曼神经网络的转子电阻参数辨识模型。 Elman递归神经网络能够执行非线性函数逼近,并具有随时间变化的特征自适应能力。分别分析了指定参数的影响因素,并涵盖了各种工作状态,以确保训练样本的完整性。通过对样本和训练数据集进行信号预处理,比较和分析一个网络的不同输入参数识别。应用于识别模型的训练有素的Elman神经网络能够高效,高效地预测转子电阻。仿真和实验结果表明,该方法具有广泛的适应性,在矢量控制感应电动机中的应用效果很好。这种识别方法可以增强感应电动机的变频调速性能。

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