线路起动同步磁阻电机拓扑优化

I. Lolová, J. Bárta, G. Bramerdorfer, S. Silber
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引用次数: 8

摘要

研究了线路启动同步磁阻电机的拓扑优化问题。由于优化后的电机效率更高,拓扑优化可以降低能耗。本文的拓扑优化基于归一化高斯网络(NGnet)。详细分析了NGnet对高斯函数分布的依赖性。提出了单个个体的评价算法。该算法管理Ansys Maxwell与软件工具SyMSpace之间的通信。此外,该算法由于预先选择了不可行的几何形状,从而减少了计算时间。后者是必要的,因为考虑到机器的启动,需要进行耗时的瞬态分析。对基于NGnet的LSSynRM进行了拓扑优化,并对优化结果进行了讨论。详细分析了一种选定的优化设计方案。主要贡献是创建了基于评估算法扩展的NGnet的LSSynRM拓扑优化方法,可用于进一步改进起线机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topology optimization of line-start synchronous reluctance machine
This paper deals with the topology optimization of line-start synchronous reluctance machines (LSSynRM). Topology optimization can lead to a reduction in energy consumption thanks to the higher efficiency of optimized electrical machines. The topology optimization is based on the normalized Gaussian network (NGnet) within this paper. The dependency of the NGnet on the distribution of Gaussian functions is analysed in detail. The evaluation algorithm of a single individual is developed. The algorithm manages communication between Ansys Maxwell and software tool SyMSpace. Furthermore, the algorithm leads to a reduction in computational time due to the preselection of unfeasible geometries. The latter is necessary due to a time-consuming transient analysis considering the machine’s start-up. The topology optimization of LSSynRM based on the NGnet is performed and the results are discussed. One selected optimized design is analysed in detail. The main contribution is the creation of the methodology for the topology optimization of LSSynRM based on the NGnet extended with the evaluation algorithm, which can be used for further improvement of line-start machines.
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