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首页> 外文期刊>Journal of magnetism and magnetic materials >Multiobjective design optimization and analysis of magnetic flux distribution for slotless permanent magnet brushless DC motor using evolutionary algorithms
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Multiobjective design optimization and analysis of magnetic flux distribution for slotless permanent magnet brushless DC motor using evolutionary algorithms

机译:基于进化算法的无槽永磁无刷直流电动机多目标设计优化与磁通分布分析

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In this paper, Multi-Objective Optimization (MOO) techniques namely: Weighted Sum Method (WSM), Multi Objective Genetic Algorithm (MOGA) and Niched Pareto Genetic Algorithm (NPGA) are proposed for the design optimization and analysis of magnetic flux distribution for a slotless permanent magnet Brushless DC (BLDC) motor. The sensitivity analysis is carried out to identify the design variables of BLDC motor which influence the objective function. The objective functions are conflicting in nature (maximization of output torque and minimization of total volume and losses), hence, are optimized simultaneously by means of MOO algorithms. The proposed MOOs account for four kinds of design variables namely: rotor radius, stator/rotor axial length, magnet thickness and winding thickness simultaneously to maximize the output torque and to reduce the total volume and total power loss. The conventional MOO such as WSM gives single pareto optimal solution. However, the proposed MOGA and NPGA algorithms create accurate and well-distributed pareto front set with few function evaluations. The performances of the three MOOs are evaluated and compared using the four performance metrics namely: Hyper Volume (HV), Generational Distance (GD), Inverted Generational Distance (IGD) and Spread. From the comparison, it is observed that NPGA gives better results. Using the design parameter obtained from NPGA, the magnetic flux distribution analysis of the BLDC motor is carried out to analyze variation of flux distribution in the different parts of the motor. The results thus obtained are compared with those obtained through Partial differential equation and single objective GA optimization. The detailed thermal analysis is also carried out to analyze the thermal behavior at different parts of the machine for different working conditions in the continuous operation mode and hence, the results obtained are compared with single objective GA optimization. The advantages of MOOs in the design optimization of slotless permanent magnet BLDC motor are highlighted.
机译:本文提出了多目标优化(MOO)技术,即加权和法(WSM),多目标遗传算法(MOGA)和尼基帕累托遗传算法(NPGA),用于磁通量分布的设计优化和分析。无槽永磁无刷直流(BLDC)电动机。进行灵敏度分析以识别影响目标功能的BLDC电机的设计变量。目标函数本质上是矛盾的(输出扭矩的最大化以及总体积和损耗的最小化),因此,这些目标函数可以通过MOO算法同时进行优化。提出的MOO考虑了四种设计变量,即:转子半径,定子/转子轴向长度,磁体厚度和绕组厚度,以同时实现最大输出转矩并减少总体积和总功率损耗。诸如WSM之类的常规MOO给出了单一的最优解决方案。但是,提出的MOGA和NPGA算法创建了准确且分布均匀的pareto前沿集合,而很少进行功能评估。使用四个性能指标对三个MOO的性能进行评估和比较,这些指标分别是:超体积(HV),世代距离(GD),逆世代距离(IGD)和价差。从比较中可以看出,NPGA提供了更好的结果。使用从NPGA获得的设计参数,对BLDC电动机的磁通量分布进行了分析,以分析电动机不同部分的磁通量分布的变化。将由此获得的结果与通过偏微分方程和单目标遗传算法优化获得的结果进行比较。还进行了详细的热分析,以分析连续运行模式下不同工况下机器不同部分的热性能,因此,将获得的结果与单目标GA优化进行比较。强调了MOO在无槽永磁BLDC电机设计优化中的优势。

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