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Multi-Objective Design Optimization of Synchronous Reluctance Machines Based on the Analytical Model and the Evolutionary Algorithms

机译:基于解析模型和进化算法的同步磁阻电机多目标设计优化

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This paper proposes a fast and generalized multiobjective design optimization method for the synchronous reluctance machines (SynRMs). The novel analytical model, based on the Maxwell's equations and assisted by a magnetic equivalent circuit (MEC), is adopted in order to calculate the essential performance indices (PIs) including the average torque, torque density and efficiency. The proposed model prevails over the prevalent finite element analysis (FEA) in terms of calculation speed, while maintains the accuracy of the calculation results. The multi-objective particle swarm optimization (PSO) and the differential evolution (DE) algorithms are both applied to find the Pareto front. Influences on the Pareto front caused by the parameters in the algorithms are also discussed. Two optimal designs are chosen from the Pareto front for further validation through FEA simulation. The proposed optimal design method is capable of finding the optimized SynRM designs subject to various design requirements and is able to accelerate the entire optimization process.
机译:本文为同步磁阻电机(SynRM)提出了一种快速,通用的多目标设计优化方法。为了计算包括平均扭矩,扭矩密度和效率在内的基本性能指标(PI),采用了基于麦克斯韦方程组并借助磁等效电路(MEC)的新颖分析模型。所提出的模型在计算速度方面优于普遍的有限元分析(FEA),同时保持了计算结果的准确性。多目标粒子群优化算法(PSO)和差分进化算法(DE)均用于找到Pareto前沿。还讨论了算法中的参数对帕累托前沿的影响。从Pareto前端选择了两个最佳设计,以通过FEA仿真进行进一步验证。所提出的最佳设计方法能够找到满足各种设计要求的优化SynRM设计,并能够加速整个优化过程。

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