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首页> 外文期刊>Industrial Electronics, IEEE Transactions on >Particle Swarm Optimization Algorithm With Intelligent Particle Number Control for Optimal Design of Electric Machines
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Particle Swarm Optimization Algorithm With Intelligent Particle Number Control for Optimal Design of Electric Machines

机译:具有智能粒子数控制的粒子群优化算法在电机优化设计中的应用。

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In this study, we propose a modified particle swarm optimization (PSO) algorithm, which is an improved version of the conventional PSO algorithm. To improve the performance of the conventional PSO, a novel method is applied to intelligently control the number of particles. The novel method compares the cost value of the global best (gbest) in the current iteration to that of the gbest in the previous iteration. If there is a difference between the two cost values, the proposed algorithm operates in the exploration stage, maintaining the number of particles. However, when the difference in the cost values is smaller than the tolerance values assigned by the user, the proposed algorithm operates in the exploitation stage, reducing the number of particles. In addition, the algorithm eliminates the particle that is nearest to the best particle to ensure its randomness in terms of the Euclidean distance. The proposed algorithm is validated using five numerical test functions, whose number of function calls is reduced to some extent in comparison to conventional PSO. After the algorithm is validated, it is applied to the optimal design of an interior permanent magnet synchronous motor (IPMSM), aiming at minimizing the total harmonic distortion (THD) of the back electromotive force (back EMF). Considering the performance constraint, an optimal design is attained, which reduces back EMF THD and satisfies the back EMF amplitude. Finally, we build and test an experimental model. To validate the performance of the optimal design and optimization algorithm, a no-load test is conducted. Based on the experimental result, the effectiveness of the proposed algorithm on optimal design of an electric machine is validated.
机译:在这项研究中,我们提出了一种改进的粒子群优化(PSO)算法,它是常规PSO算法的改进版本。为了提高常规PSO的性能,采用了一种新颖的方法来智能地控制颗粒数。新颖的方法将当前迭代中全局最佳(gbest)的成本值与前一次迭代中gbest的成本值进行比较。如果两个成本值之间存在差异,则所提出的算法将在探索阶段运行,并保持粒子数量。但是,当成本值之差小于用户指定的容差值时,所提出的算法将在开发阶段运行,从而减少了粒子数量。另外,该算法消除了最接近最佳粒子的粒子,以确保其在欧式距离上的随机性。所提出的算法使用五个数值测试函数进行了验证,与常规PSO相比,它们的函数调用数量有所减少。该算法经过验证后,将其应用于内部永磁同步电动机(IPMSM)的优化设计,旨在最小化反电动势(back EMF)的总谐波失真(THD)。考虑到性能约束,可以得到最佳设计,该设计可以减小反电动势的总谐波失真并满足反电动势的幅度。最后,我们建立并测试一个实验模型。为了验证最佳设计和优化算法的性能,进行了空载测试。基于实验结果,验证了该算法在电机优化设计中的有效性。

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