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The Comparisons of Optimized Extended Kalman Filters for Speed-Sensorless Control of Induction Motors

机译:感应电动机无速度传感器控制优化扩展卡尔曼滤波器的比较

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摘要

This paper presents the comparisons of optimized extended Kalman filters (EKFs) using different fitness functions for speed-sensorless vector control of induction motors (IMs). In order to achieve high performance estimations of states/parameter by EKF algorithm, state and noise covariance matrices must be accurately selected. For this aim, instead of using time-consuming trial-and-error method to determine those covariance matrices, in this paper EKF algorithm is optimized by differential evolution algorithm (DEA) and multi-objective DEA (MODEA) with the utilization of different fitness functions. The optimally obtained set of each covariance matrices is used in EKF algorithm built on the same IM model and thus, the estimation results of the optimized EKF algorithms are compared in real-time experiments in order to conclude which fitness function is better for motion control applications.
机译:本文介绍了使用不同适应度函数对感应电动机(IM)进行无速度传感器矢量控制的优化扩展卡尔曼滤波器(EKF)的比较。为了通过EKF算法实现状态/参数的高性能估计,必须精确选择状态和噪声协方差矩阵。为此,本文采用差分进化算法(DEA)和多目标DEA(MODEA)来优化EKF算法,而不是使用耗时的试错法确定那些协方差矩阵,而是利用了不同的适应度。功能。在同一IM模型上建立的EKF算法中使用了每个协方差矩阵的最优获得的集合,因此,在实时实验中比较了优化的EKF算法的估计结果,以得出哪种适应度函数更适合运动控制应用。

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