Simulation and modeling of stator flux estimator for induction motor using artificial neural network technique

Yushaizad Yusof, A. Yatim
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引用次数: 20

Abstract

Accurate stator flux estimation for high performance induction motor drives is very important to ensure proper drive operation and stability. Unfortunately, there is some problems occurred when estimating stator flux especially at zero speed and at low frequency. Hence a simple open loop controller of pulse width modulation voltage source inverter (PWM-VSI) fed induction motor configuration is presented. By a selection of voltage model-based of stator flux estimation, a simple method using artificial neural network (ANN) technique is proposed to estimate stator flux by means of feed forward back propagation algorithm. In motor drives applications, artificial neural network has several advantages such as faster execution speed, harmonic ripple immunity and fault tolerance characteristics that will result in a significant improvement in the steady state performances. Thus, to simulate and model stator flux estimator, Matlab/Simulink software package particularly power system block set and neural network toolbox is implemented. A structure of three-layered artificial neural network technique has been applied to the proposed stator flux estimator. As a result, this technique gives good improvement in estimating stator flux which the estimated stator flux is very similar in terms of magnitude and phase angle if compared to the real stator flux.
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应用人工神经网络技术对异步电动机定子磁链估计器进行仿真与建模
准确的定子磁链估计对高性能异步电机驱动的正常运行和稳定性至关重要。但在定子磁链的估计中存在一些问题,特别是在低速和低速时。因此,提出了一种简单的脉宽调制电压源逆变器(PWM-VSI)馈电电机开环控制器。通过选择基于电压模型的定子磁链估计方法,提出了一种利用人工神经网络(ANN)技术,采用前馈-反向传播算法估计定子磁链的简便方法。在电机驱动应用中,人工神经网络具有更快的执行速度、谐波纹波抗扰性和容错特性等优点,可以显著改善电机的稳态性能。为此,采用Matlab/Simulink软件包,特别是电力系统模块集和神经网络工具箱,对定子磁链估计器进行仿真和建模。将三层人工神经网络技术应用于该定子磁链估计器。结果表明,该方法在估计定子磁链方面有较好的改进,估计的定子磁链在大小和相位角方面与实际的定子磁链非常相似。
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