异步起动同步电动机的遗传算法优化

F. Ismagilov, V. Vavilov, R. Urazbakhtin
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引用次数: 3

摘要

本文提出了一种新的基于遗传算法的LSPMSM优化算法,并给出了该算法在电机设计中的实现方法。利用该算法对固定频率、网络频率和电源电压的LSPMSM的7种不同拓扑结构同时进行优化。结果,考虑了大约6000种不同的几何尺寸组合和LSPMSM的各种拓扑结构。在此基础上,确定了输入条件下具有最优几何尺寸的两个最优拓扑结构。利用FEMM方法对拓扑数据进行了计算,并建立了其中一个拓扑的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Synchronous Electric Motors with Asynchronous Start by Genetic Algorithms
In this article, the authors offer a new optimization algorithm for the LSPMSM based on genetic algorithms, as well as the methods for their implementation for the design of electrical machines. With this algorithm, 7 different topologies of the LSPMSM with fixed frequency, network frequency and supply voltage were simultaneously optimized. As a result, about 6000 different combinations of geometric sizes and various topologies of the LSPMSM were considered. After this, two optimal topologies with optimal geometric dimensions for input conditions were identified. The topology data were calculated using FEMM methods and a model of one of them was created.
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