Estimation of Iron Loss in Permanent Magnet Synchronous Motors Based on Particle Swarm Optimization and a Recurrent Neural Network

Magnetism Pub Date : 2023-12-11 DOI:10.3390/magnetism3040025
Kai Xu, Youguang Guo, Gang Lei, Jianguo Zhu
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Abstract

The popularity of permanent magnet synchronous motors (PMSMs) has increased in recent years due to their high efficiency, compact size, and low maintenance needs. Calculating iron loss in PMSMs is crucial for designing and optimizing PMSMs to achieve high efficiency and a long lifespan, as this can significantly affect motor performance. However, multiple factors influence the accuracy of iron loss calculations in PMSMs, including the intricate magnetic behavior of the motor under different operating conditions, as well as the influence of the motor’s dynamic behavior during the operation process. This paper proposes a method based on particle swarm optimization (PSO) and a recurrent neural network (RNN) to estimate the iron loss in PMSMs, independent of the empirical iron loss formula. This method establishes an iron loss calculation model considering high-order harmonics, rotating magnetization, and temperature factors. Accounting for the multifactor influence, the model studies the law of loss change under different magnetic flux densities, frequencies, and temperature conditions. To avoid the deviation problem caused by conventional polynomial fitting, a multilayer RNN and PSO are used to train and optimize the neural network. Iron loss in complex cases beyond the measurement range can be accurately estimated. The proposed method helps achieve a PMSM iron loss calculation model with broad applicability and high accuracy.
基于粒子群优化和循环神经网络的永磁同步电机铁损耗估算
近年来,永磁同步电机(PMSM)因其效率高、体积小和维护需求低而越来越受欢迎。计算 PMSM 中的铁损对于设计和优化 PMSM 以实现高效率和长使用寿命至关重要,因为这会严重影响电机性能。然而,影响 PMSM 中铁损计算精度的因素有很多,包括电机在不同运行条件下错综复杂的磁性行为,以及电机在运行过程中的动态行为的影响。本文提出了一种基于粒子群优化(PSO)和递归神经网络(RNN)的方法来估算 PMSM 的铁损,而不依赖于经验铁损公式。该方法建立了一个考虑到高阶谐波、旋转磁化和温度因素的铁损计算模型。考虑到多因素的影响,该模型研究了不同磁通密度、频率和温度条件下的损耗变化规律。为避免传统多项式拟合带来的偏差问题,采用了多层 RNN 和 PSO 来训练和优化神经网络。在复杂情况下,超出测量范围的铁损可以得到准确估计。所提出的方法有助于实现适用性广、精度高的 PMSM 铁损计算模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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