A computationally efficient multi-physics optimization technique for permanent magnet machines in electric vehicle traction applications

Liang Chen, Xiao Chen, Jiabin Wang, P. Lazari
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引用次数: 13

Abstract

This paper describes a computationally efficient optimization technique for permanent magnet machines in electric vehicle (EV) traction applications. It addresses multi-physics machine designs against driving cycles, including inverter-machine system energy efficiency, thermal behaviors and mechanical stress in rotor lamination. To drastically reduce computation time of repeated finite element analysis (FE) of the non-linear electromagnetic field and mechanical stress in permanent magnet machines especially interior permanent magnet machines (IPM), a set of analytical machine models characterized from FE calculations are developed which lead to significant reduction in computation time without compromising accuracy during an optimization. The proposed technique is applied to a multi-physics design optimization of an IPM machine for EV traction against 6-8 leading design parameters, and is validated by a series of tests on a prototype machine.
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用于电动汽车牵引的永磁电机计算效率高的多物理场优化技术
本文介绍了一种计算效率高的电动汽车牵引用永磁电机优化技术。它解决了针对驱动循环的多物理场机器设计,包括逆变器-机器系统的能效、热行为和转子层压中的机械应力。为了大幅度减少永磁电机特别是内部永磁电机非线性电磁场和机械应力的重复有限元分析(FE)的计算时间,开发了一套以有限元计算为特征的分析机器模型,在不影响优化精度的情况下显著减少了计算时间。基于6-8个主要设计参数对电动汽车牵引IPM机械进行了多物理场优化设计,并在样机上进行了一系列试验验证。
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