电机系统辨识方法综述

Bustanul Arifin, A. A. Nugroho, B. Suprapto, S. Prasetyowati, Z. Nawawi
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引用次数: 3

摘要

该行业与电机密切相关。电动机是用来作为驱动生产机器的原动机。需要对电机进行控制,使其能按指定的方式工作。必须知道电机参数才能控制它。所需参数包括电气参数和机械参数。这些参数通常不容易获得,那么找到的一种方法是通过识别系统。本文旨在介绍运动识别系统中使用的各种方法。对有刷直流电动机、无刷直流电动机、伺服电机、步进电机、感应电机和开关磁阻电机进行了分析。这些方法包括最小二乘、递归最小二乘形式的自回归外生输入、自回归外生移动平均。另一种系统识别方法利用人工智能。该方法采用了模糊逻辑、神经网络、遗传算法、粒子群优化以及这些方法的各种组合。综述结果表明,人工智能方法与传统方法相比具有优势,是一种非常有趣和有前途的方法。将两种或两种以上的人工智能方法进行修改或组合,可以得到更好、更接近实际情况的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review of Method for System Identification on Motors
The industry is closely related to motors. Motor is used as the prime mover to run the production machines. Control of the motor is needed so that it can work according to its designation. Motor parameters must be known to control it. The required parameters include electrical and mechanical parameters. These parameters are often not easy to obtain then one way to find out is by identifying the system. This paper aimed to convey the various methods that have been used in motor identification systems. Brushed DC motor, brushless DC motor, servo motor, stepper motor, induction motor, and switch reluctance motor were motors analyzed. These methods included the least square, recursive least square in the form of autoregressive with exogenous input, autoregressive moving average with exogenous. Another system identification method utilizes artificial intelligence. This method used fuzzy logic, neural network, genetic algorithm, particle swarm optimization, and various combinations of these methods. The review results showed that the artificial intelligence method was very interesting and promising because it has advantages compared to conventional methods. Modification or combination of two or more artificial intelligence methods would get better and closer results to the actual situation.
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