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The study on the PMSM sensorless control using the sub-optimal fading extend Kalman filter

机译:基于次优衰落扩展卡尔曼滤波器的PMSM无传感器控制研究

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EKFs are the very important speed identification methods in PMSM sensorless vector control. With the step changes of the reference speed of the PMSM drive system the residuals in EKFs are not the autocorrelation Gaussian white noise series anymore, which can lead to the EKF lose the ability of tracing state variables and bring out divergence problems in worst case. A sub-optimal fading extend Kalman filter-SFEKF is adopted to identify speed and it can forces the output state variables to tracing the gradual or step changing references. The SFEKF well overcomes varying condition's impacts caused by the disturbances, and improves the dynamic response and tracking precision. The simulation and experiment results show that the SFEKF has a simple arithmetic, moderate calculation and good robustness.
机译:EKF是PMSM无传感器矢量控制中非常重要的速度识别方法。随着PMSM驱动系统参考速度的阶跃变化,EKF中的残差不再是自相关的高斯白噪声序列,这可能导致EKF失去跟踪状态变量的能力,并在最坏的情况下引发发散问题。采用次优衰落扩展卡尔曼滤波器-SFEKF来识别速度,它可以强制输出状态变量跟踪渐变或阶跃参考。 SFEKF很好地克服了由干扰引起的变化条件的影响,并提高了动态响应和跟踪精度。仿真和实验结果表明,SFEKF算法简单,计算适度,鲁棒性强。

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