GA Optimization for Regression Modeling of Electromagnetic Performances Predicted by a Subdomain Model for SMPMSM in an Electric Vehicle

Syauqina Akmar Mohd-Shafri, T. Tiang, Choo Jun Tan, D. Ishak, M. S. Ahmad
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引用次数: 1

Abstract

This paper investigates a nonlinear modeling optimization of 12s/8p surface-mounted permanent magnet synchronous machines (SMPMSM) with a radial magnetization pattern. The modeling is based on subdomain model (SDM) computation, where the analytical models are developed to predict the electromagnetic (EM) performances, such as, average EM torque and EM torque ripple in PM machines. A genetic algorithm is applied to the proposed model in order to search for the optimal solutions. The objective function of the optimizations is obtaining a higher average EM torque and achieving the minimum EM torque ripple. The data, viz, and the average EM torque and its ripples predicted by SDM are employed in regression analysis in order to find the model of best fit. After that, the most suitable fit of the computing equation is selected. The preliminary and optimal designs of 12s/8p PM motors are also compared in terms of parameters and motor performance. As a result, the regression model and GA framework has reduced the use of magnet materials and the EM torque ripple of the SMPMSM, making it ideal for use in an electric car. Lastly, the proposed model can determine the appropriate configuration design parameters for SMPMSM in order to achieve the best motor performance.
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基于子域模型预测电动汽车SMPMSM电磁性能回归建模的遗传算法优化
研究了径向磁化模式下12s/8p表面贴装永磁同步电机(SMPMSM)的非线性建模优化。该模型基于子域模型(SDM)计算,建立了分析模型来预测永磁电机的电磁性能,如平均电磁转矩和电磁转矩脉动。为了寻找最优解,将遗传算法应用于该模型。优化的目标函数是获得较高的平均电磁转矩和最小的电磁转矩脉动。利用SDM预测的电磁转矩均值及其波动进行回归分析,寻找最优拟合模型。然后选择最合适的计算方程进行拟合。并对12s/8p永磁电机的初步设计和优化设计进行了参数和电机性能的比较。因此,回归模型和遗传框架减少了磁铁材料的使用和SMPMSM的电磁转矩脉动,使其非常适合用于电动汽车。最后,该模型可以为SMPMSM确定合适的配置设计参数,以达到最佳的电机性能。
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