使用估计定子电流的感应电机无传感器FS-PTC的改进

M. Habibullah, D. Lu
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引用次数: 2

摘要

传统的有限状态预测转矩控制(FS-PTC)策略是利用测量的定子电流和估计的定子和转子磁链来预测异步电动机的定子磁链和转矩。在FS-PTC中,预测模型的精度直接取决于定子电流和转子转速。直接将测量到的定子电流应用到预测模型中会降低电流总谐波失真(THD)和速度误差方面的控制性能,特别是在低速时。这是因为在预测模型中注入噪声会导致逆变器不希望的开关驱动。为了避免这一问题,本文提出了一种改进的IM驱动器无速度传感器FS-PTC预测模型。将定子电流的估计值而不是测量值反馈给控制器,从而确定了较小的定子电流THD。扩展卡尔曼滤波(EKF)是一种很有前途的无传感器控制系统状态观测器,将其与FS-PTC结合,可以准确估计转子转速、转子磁链和定子电流。实验验证了所提出的控制策略,并取得了较好的转矩和磁链响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved sensorless FS-PTC of induction motors using estimated stator currents
Conventionally a finite state predictive torque control (FS-PTC) strategy uses measured stator currents and estimated stator and rotor flux to predict stator flux and torque of induction motor (IM). In FS-PTC, the accuracy of the prediction model is directly dependent on the stator currents and the rotor speed. Direct application of measured stator currents into the prediction model degrades the control performance in terms of current total harmonic distortion (THD) and speed error, especially at lower speeds. This is because injection of noise into the prediction model leads to undesired switching actuation for the inverter. To avoid this problem, this paper proposes an improved prediction model for speed sensorless FS-PTC of IM drives. The estimated stator currents instead of measured currents are fed back to the controller and thus small stator current THD is confirmed. Extended Kalman filter (EKF), a promising state observer for sensorless control system, has been employed with FS-PTC to estimate rotor speed, rotor flux and stator currents accurately. The proposed control strategy has been verified experimentally, and improved torque and flux responses are achieved.
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