基于神经网络的开关磁阻电机无传感器转子位置估计

J. Makwana, P. Agarwal, S. P. Srivastava
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引用次数: 9

摘要

开关磁阻电动机的相位激励脉冲必须与转子的角度位置同步,以保证转子的转矩和旋转连续,并获得开关磁阻电动机的最佳驱动性能。提出了一种基于人工神经网络的无传感器转子位置估计技术,以满足SRM的位置反馈要求。利用MATLAB simulink环境设计了一个神经网络,并对所提出的无传感器方法进行了仿真,取得了满意的结果。提出了一种减少用于映射神经网络磁特性的神经元数量的方法,在不影响SRM性能的前提下,降低了映射神经网络的复杂度和计算量。本文首次对磁特性的感兴趣区域进行了描述和讨论,有助于分析转子位置估计精度比外部区域更重要的磁特性区域。
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ANN based sensorless rotor position estimation for the Switched Reluctance Motor
The phase excitation pulse of the Switched Reluctance Motor (SRM) must be synchronized with the angular rotor position to ensure the continuous torque and rotation of the rotor and also to obtain the optimum performance of the SRM drive. In this paper Artificial Neural Network (ANN) based sensorless rotor position estimation technique is presented to fulfill the requirement of the position feedback for the SRM. MATLAB simulink environment is used to design a neural network and to simulate the proposed sensorless method which shows satisfactory result. An idea is presented to reduce the number of neuron for mapping the magnetic characteristics of the neural network which can reduce the complexity and computation burden without much affecting the performance of the SRM. Region of interest of the magnetic characteristics is described & discussed first time in this paper which helps to analyse a region of the magnetic characteristics where the significance of accuracy of the rotor position estimation is more compared to exterior region.
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