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Optimization of Torque Ripples in an Interior Permanent Magnet Synchronous Motor Based on the Orthogonal Experimental Method and MIGA and RBF Neural Networks

机译:基于正交实验方法和MIGA和RBF神经网络的内部永磁同步电动机扭矩波纹的优化

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摘要

Interior permanent magnet synchronous motors (IPMSMs) have high power densities and speed control performance, and they are widely used in the industry. The problem of reducing the torque ripple of an IPMSM is one of the hot issues in the field of electrical machine design. In order to determine the optimal combination of the geometric parameters to reduce the torque ripple of an IPMSM, a range analysis was conducted on the data from the orthogonal experiments in this study, dividing the rotor geometric parameters into two categories (important and ordinary) based on their degree of impact on the torque ripples of the IPMSM. Thereafter, an optimization of the ordinary parameters was carried out based on the results of the range analysis, whereas the optimization of the important parameters was carried out through a method that combined a multi-island genetic algorithm (MIGA) and Radial Basis Function (RBF) neural networks. The torque ripple of the IPMSM was effectively reduced without materially affecting the output power. Finally, the results of this optimization process were verified using a finite element simulation. The optimization method used in this study divided the motor geometric parameters into two categories and applied a different method of optimization to each parameter type, so it was able to efficiently optimize multiple geometric parameters for the IPMSM.
机译:内部永磁同步电机(IPMSMS)具有高功率密度和速度控制性能,它们广泛应用于该行业。减少IPMSM扭矩脉动的问题是电机设计领域的热点之一。为了确定几何参数的最佳组合来减少IPMSM的扭矩脉动,在本研究中的正交实验中对数据进行了范围分析,将转子几何参数分为两类(重要且普通)关于其对IPMSM扭矩波纹的影响程度。此后,基于范围分析的结果进行普通参数的优化,而通过组合多岛遗传算法(MIGA)和径向基函数的方法进行重要参数的优化(RBF ) 神经网络。 IPMSM的扭矩脉动有效地减小而不会物质影响输出功率。最后,使用有限元模拟来验证该优化过程的结果。本研究中使用的优化方法将电机几何参数分为两类,并将不同的优化方法应用于每个参数类型,因此它能够有效地优化IPMSM的多个几何参数。

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