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Offline Parameter Estimation of Induction Motor Using a Meta Heuristic Algorithm

机译:基于元启发式算法的异步电动机离线参数估计

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An offline parameter estimation problem of an induction motor using a well known, efficient yet simple meta heuristic algorithm DEGL (Differential Evolution with a neighborhood based mutation scheme) has been presented in this article. Two different induction motor models such as approximate and exact models are considered. The parameter estimation methodology describes a method for estimating the steady-state equivalent circuit parameters from the motor performance characteristics, which is normally available from the manufacturer data or from tests. Differential Evolution is not completely free from the problems of slow or premature convergence, that's why the idea of a much more efficient variant of DE comes. The variant of DE used for solving this problem utilize the concept of the neighborhood of each population member. The feasibility of the proposed method is demonstrated for two different motors and it is compared with the genetic algorithm and the Particle Swarm Optimization algorithm. From the simulation results it is evident that DEGL outperforms both the algorithms (GA and PSO) in the estimation of the parameters of the induction motor.
机译:本文提出了一种使用众所周知的,高效而简单的元启发式算法DEGL(基于邻域突变方案的差分演化)的感应电动机的离线参数估计问题。考虑了两种不同的感应电动机模型,例如近似模型和精确模型。参数估计方法描述了一种根据电动机性能特征估计稳态等效电路参数的方法,通常可从制造商数据或测试中获得。差异演化并不是完全摆脱缓慢收敛或过早收敛的问题,这就是为什么要有效率更高的DE变体的想法。用于解决此问题的DE的变体利用了每个人口成员附近的概念。证明了该方法在两种不同电机上的可行性,并与遗传算法和粒子群优化算法进行了比较。从仿真结果可以明显看出,在感应电动机的参数估计中,DEGL优于算法(GA和PSO)。

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