Top-level design pattern of PM-assisted synchronous reluctance machines
The main challenge of the PM-assisted synchronous reluctance machine (PMASynRM) design is to determine numerous parameters for the requirement of multi-objectives. According to the top-level design concept, the optimization for PMASynRMs can be regarded as multi-parameter and multi-objective optimiz...
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sg-ntu-dr.10356-1612802022-08-23T07:43:27Z Top-level design pattern of PM-assisted synchronous reluctance machines Sun, Yi Cai, Shun Lin, Yingqian Wang, Yunchong Shen, Jianxin School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Top-Level Design Pattern Analytical Model Algorithm The main challenge of the PM-assisted synchronous reluctance machine (PMASynRM) design is to determine numerous parameters for the requirement of multi-objectives. According to the top-level design concept, the optimization for PMASynRMs can be regarded as multi-parameter and multi-objective optimization problems (MOOPs). In this paper, the high-dimensional optimization problem is transformed into two low-dimensional optimization sub-problems. The analytical model algorithm has been established to solve the first sub-problem. Then, the optimization algorithms including the particle swarm optimization (PSO), the standard genetic algorithm (GA) with elitist strategy, and the pattern search (PS) are used for the second sub-problem. It is revealed that the optimization with PS algorithm is superior, in aspects of optimized machine performance and optimization efficiency, compared with that of PSO and GA algorithms. Furthermore, four PMASynRMs have been optimized with the developed process coupled 2D-FEA simulation, and significant performance improvement has been achieved after optimization. Finally, a 7.5kW@3 000r/min prototype machine is manufactured and tested to validate the top-level design pattern. This work was supported by the Natural Science Foundation of China under the grants of 51837010 and 51690182. 2022-08-23T07:43:27Z 2022-08-23T07:43:27Z 2022 Journal Article Sun, Y., Cai, S., Lin, Y., Wang, Y. & Shen, J. (2022). Top-level design pattern of PM-assisted synchronous reluctance machines. Transactions of China Electrotechnical Society《电工技术学报》, 37(9), 2306-2318. https://dx.doi.org/10.19595/j.cnki.1000-6753.tces.210331 1000-6753 https://hdl.handle.net/10356/161280 10.19595/j.cnki.1000-6753.tces.210331 2-s2.0-85129971936 9 37 2306 2318 en Transactions of China Electrotechnical Society《电工技术学报》 © 2022《电工技术学报》编辑部. All rights reserved. |
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Engineering::Electrical and electronic engineering Top-Level Design Pattern Analytical Model Algorithm Sun, Yi Cai, Shun Lin, Yingqian Wang, Yunchong Shen, Jianxin Top-level design pattern of PM-assisted synchronous reluctance machines |
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The main challenge of the PM-assisted synchronous reluctance machine (PMASynRM) design is to determine numerous parameters for the requirement of multi-objectives. According to the top-level design concept, the optimization for PMASynRMs can be regarded as multi-parameter and multi-objective optimization problems (MOOPs). In this paper, the high-dimensional optimization problem is transformed into two low-dimensional optimization sub-problems. The analytical model algorithm has been established to solve the first sub-problem. Then, the optimization algorithms including the particle swarm optimization (PSO), the standard genetic algorithm (GA) with elitist strategy, and the pattern search (PS) are used for the second sub-problem. It is revealed that the optimization with PS algorithm is superior, in aspects of optimized machine performance and optimization efficiency, compared with that of PSO and GA algorithms. Furthermore, four PMASynRMs have been optimized with the developed process coupled 2D-FEA simulation, and significant performance improvement has been achieved after optimization. Finally, a 7.5kW@3 000r/min prototype machine is manufactured and tested to validate the top-level design pattern. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Sun, Yi Cai, Shun Lin, Yingqian Wang, Yunchong Shen, Jianxin |
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Article |
author |
Sun, Yi Cai, Shun Lin, Yingqian Wang, Yunchong Shen, Jianxin |
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Sun, Yi |
title |
Top-level design pattern of PM-assisted synchronous reluctance machines |
title_short |
Top-level design pattern of PM-assisted synchronous reluctance machines |
title_full |
Top-level design pattern of PM-assisted synchronous reluctance machines |
title_fullStr |
Top-level design pattern of PM-assisted synchronous reluctance machines |
title_full_unstemmed |
Top-level design pattern of PM-assisted synchronous reluctance machines |
title_sort |
top-level design pattern of pm-assisted synchronous reluctance machines |
publishDate |
2022 |
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https://hdl.handle.net/10356/161280 |
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1743119472866099200 |