Cogging Torque Minimisation of PM Synchronous Motor Using Nature Based Algorithms

G. Cvetkovski, L. Petkovska
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引用次数: 3

Abstract

The permanent magnet brushless DC motors and permanent magnet synchronous motors have been widely used in industrial high performance applications in recent years. Although they have good electrical, magnetic and performance characteristics there is one parameter named cogging torque that has a negative influence on the performance characteristics of the motor. This pulsating torque is produced due to the interaction between the stator teeth and the permanent magnets. The minimization of the torque ripple in those permanent magnet motors is of great importance and is generally achieved by a special motor design which in the design process involves a variation of many geometrical motor parameters. In this paper a novel approach is introduced where different nature inspired algorithms, such as genetic algorithm and cuckoo search algorithm are used as a torque minimization tool, where the function definition of the maximum value of the cogging torque is used as an objective function. For that purpose, a proper mathematical presentation of the maximum value of the cogging torque for the analyzed synchronous motor is developed and used. For the purpose of the different motor models analysis, the initial motor and the optimized motor models are modelled and analyzed using a finite element method approach. The cogging torque is analytically and numerically calculated and the results for all the models are presented.
基于自然算法的永磁同步电机齿槽转矩最小化
永磁无刷直流电动机和永磁同步电机近年来在工业高性能应用中得到了广泛的应用。虽然它们具有良好的电气,磁性和性能特性,但有一个参数称为齿槽转矩,对电机的性能特性有负面影响。这种脉动力矩是由于定子齿和永磁体之间的相互作用而产生的。永磁电机的转矩脉动最小化是非常重要的,通常通过特殊的电机设计来实现,在设计过程中涉及到许多电机几何参数的变化。本文提出了一种利用遗传算法和布谷鸟搜索算法等不同的自然启发算法作为转矩最小化工具,以齿槽转矩最大值的函数定义作为目标函数的新方法。为此,开发并使用了所分析的同步电动机齿槽转矩最大值的适当数学表示。为了对不同电机模型进行分析,采用有限元方法对初始电机模型和优化后的电机模型进行建模和分析。对齿槽转矩进行了解析和数值计算,并给出了各模型的计算结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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