An effective identification of the induction machine parameters using a classic genetic algorithm, NSGA II and θ-NSGA III

Julien Maître, S. Gaboury, B. Bouchard, A. Bouzouane
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引用次数: 3

Abstract

To remain competitive, the manufacturing industry is using computer processing power to innovate, develop and optimize new cost-efficient production strategies. This is the reason why optimization of automation systems is deployed to improve productivity, quality and robustness of the production. The different existing goals of optimization as the control machine, management of the power consumption, design of electrical installation and prediction of motor faults lead to the necessity of estimating the induction machine parameters (the stator and rotor resistances, the stator and rotor inductances and the magnetizing inductance). To these ends, researchers and companies are investigating efficient methods to identify these parameters. In this paper, we propose an effective method for the induction machine parameters identification based on the new θ-NSGA III genetic algorithm. A comparison between a classic single objective genetic algorithm (GA) and two well-known multi-objectives GAs (NSGA II and θ-NSGA III) is performed. Our results show that the multi-objective GA θ-NSGA III provides a better estimation of parameters than the classic single objective GA and the multi-objective GA NSGA II.
采用经典遗传算法NSGAⅱ和θ-NSGAⅲ对感应电机参数进行了有效辨识
为了保持竞争力,制造业正在使用计算机处理能力来创新、开发和优化新的成本效益生产策略。这就是为什么自动化系统的优化部署,以提高生产的生产力,质量和稳健性的原因。由于控制电机的优化、功耗管理、电气安装设计和电机故障预测等不同的现有目标,导致需要对感应电机参数(定子和转子电阻、定子和转子电感以及磁化电感)进行估算。为此,研究人员和公司正在研究识别这些参数的有效方法。本文提出了一种基于新型θ-NSGA III遗传算法的感应电机参数辨识方法。将经典的单目标遗传算法(GA)与两种著名的多目标遗传算法(NSGA II和θ-NSGA III)进行了比较。结果表明,多目标遗传算法θ-NSGA III比经典的单目标遗传算法和多目标遗传算法NSGA II提供了更好的参数估计。
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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