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首页> 外文期刊>IEEE Transactions on Energy Conversion >Adaptive Extended Kalman Filter for Speed-Sensorless Control of Induction Motors
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Adaptive Extended Kalman Filter for Speed-Sensorless Control of Induction Motors

机译:感应电动机的无速度传感器控制的自适应扩展卡尔曼滤波器

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摘要

This paper presents an adaptive extended Kalman filter (AEKF) algorithm estimating the stator stationary axis components of stator currents, the stator stationary axis components of rotor fluxes, the rotor mechanical speed, and the load torque for speed-sensorless control applications of induction motors (IMs). The performance of a standard extended Kalman filter (SEKF) algorithm depends on the correct selection of system and measurement noise covariance matrices. In SEKF algorithms, these matrices are generally assumed as constant and determined by the trial-and-error method. However, they are affected by the operating conditions of IM and should be updated considering the operating conditions. For this purpose, instead of the time-consuming trial-and-error method for determining these matrices, an innovation-based adaptive estimation approach having the capability of online update is used in this paper. Finally, in order to verify the superiority of the AEKF algorithm, estimation performances of AEKF and SEKF algorithms are compared under challenging scenarios for a wide speed range considering computational burdens and parameter variations.
机译:本文提出了一种自适应扩展卡尔曼滤波器(AEKF)算法,用于估计感应电流的无速度传感器控制应用中的定子电流的定子固定轴分量,转子磁通量的定子固定轴分量,转子机械速度以及负载转矩( IM小号)。标准扩展卡尔曼滤波器(SEKF)算法的性能取决于系统和测量噪声协方差矩阵的正确选择。在SEKF算法中,通常将这些矩阵假定为常数,并通过试错法确定。但是,它们受IM操作条件的影响,应考虑操作条件进行更新。为此,本文使用具有在线更新能力的基于创新的自适应估计方法,而不是使用费时的反复试验方法来确定这些矩阵。最后,为了验证AEKF算法的优越性,在具有挑战性的情况下,考虑计算负担和参数变化,比较了AEKF算法和SEKF算法的估计性能,在宽速度范围内具有挑战性。

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