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EKF and UKF-based estimation of a sensor-less axial flux PM machine under an internal-model control scheme using a SVPWM inverter

机译:基于EKF和UKF的内部模型控制方案下使用SVPWM逆变器的无传感器轴向磁通PM电机的估计

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This paper presents a comparative estimation study of rotor speed and position of a sensor-less axial flux permanent magnet synchronous motor (AFPMSM) drive system using extended Kalman filter (EKF) and unscented Kalman filter (UKF) algorithms. An internal model control (IMC) strategy is introduced to control the AFPMSM drive through currents, leading to an extension of PI control with integrators added in the off-diagonal elements to remove the cross-coupling effects between the applied voltages and stator currents in a feed-forward manner. The reference voltage is applied through a space vector pulse width modulation (SVPWM) unit. A diverse set of test scenarios has been realized to comparatively evaluate the state estimation of the sensor-less AFPMSM drive performances under the implemented IMC-based control regime using a SVPWM inverter. The resulting MATLAB simulation outcomes in the face of no-load, nominal load and speed reversal clearly illustrate the well-behaved performances of the two estimation algorithms. The UKF seems to be more promising under noisy conditions. Nevertheless, there is no clear preference for either where steady-state performance is more critical.
机译:本文介绍了使用扩展卡尔曼滤波器(EKF)和无味卡尔曼滤波器(UKF)算法的无传感器轴向磁通永磁同步电动机(AFPMSM)驱动系统的转子速度和位置的比较估算研究。引入了内部模型控制(IMC)策略来通过电流控制AFPMSM驱动器,从而扩展了PI控制,在对角线元素中添加了积分器,从而消除了交流电中施加的电压和定子电流之间的交叉耦合效应。前馈方式。参考电压通过空间矢量脉冲宽度调制(SVPWM)单元施加。已经实现了多种测试方案,以在使用SVPWM逆变器的已实施基于IMC的控制机制下,比较评估无传感器AFPMSM驱动性能的状态估计。在空载,标称负载和速度反转的情况下,所得的MATLAB仿真结果清楚地说明了这两种估算算法的良好性能。 UKF在嘈杂的条件下似乎更有希望。但是,对于稳态性能更为关键的任何一个,都没有明确的偏好。

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