基于元启发式优化的永磁同步电机参数辨识

A. Balamurali, A. Mollaeian, S. M. Sangdehi, N. Kar
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引用次数: 8

摘要

认识到电机精确动态建模的重要性和参数确定的重要性,本文提出了一种利用离线改进粒子群优化(IPSO)识别线路启动内置永磁同步电机(LSIPMSM)可变电感和阻尼器参数的新方法。提出了一种改进的动态电机模型,该模型考虑了电感对磁化电流的依赖关系。通过对逆变器连接的LSIPMSM在不同工况下的实验测试方法与IPSO算法相结合,确定了各种工况下的定子、磁化电感、阻尼器参数等参数。本文的建模和识别方法虽然是针对LSIPMSM进行的,但也适用于IPMSM和表面磁体PSM的简化变化。并与常规模型和改进模型的实验结果进行了对比验证。
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Parameter identification of permanent magnet synchronous machine based on metaheuristic optimization
Understanding the significance of precise dynamic modeling of electrical machines and the importance of parameter determination for the same, this manuscript proposes a new method of identifying variable inductances and damper parameters of a line-start interior permanent magnet synchronous machine (LSIPMSM) through an off-line improved particle swarm optimization (IPSO). An improved dynamic machine model incorporating the dependence of inductances on magnetizing currents has been developed. Through the combination of experimental test methods conducted on the inverter connected LSIPMSM under varied operating conditions and IPSO algorithm, parameters such as stator and magnetizing inductances and damper parameters have been identified for all conditions. Though conducted on LSIPMSM, the modeling and identification procedures presented in this paper are also applicable to IPMSM and surface magnet PSM with simplified variations. Comparison results of experiments with conventional and improved models are also presented for validation.
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