Chaotic inertia weight and constriction factor-based PSO algorithm for BLDC motor drive control

Manoj Kumar Merugumalla, Prema kumar Navuri
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引用次数: 2

Abstract

The population algorithms have a number of advantages over classical methods for solving complex optimisation problems such as tuning of controller parameters of motor drives These algorithms for solving various problems of global optimisation is often called as methods inspired by nature, methods in this class are based on the modelling of intelligent behaviour of organised members of the population. Particle swarm optimisation (PSO) algorithm is population-based algorithm which has ability to fine tune the controller parameters. In this paper, chaotic inertia weight and constriction factor-based PSO algorithms are proposed for tuning of proportional-integral-derivative (PID) controller parameters to control brushless direct current (BLDC) motor drive. The BLDC is modelled in MATLAB/Simulink and trapezoidal back emf waveforms are modelled as a function of rotor position using MATLAB code. The simulation results of PSO algorithms are compared and results shown the effectiveness of C-inertia weight and C-factor in tuning PID controller parameters.
基于混沌惯性权值和收缩因子的无刷直流电动机PSO控制
总体算法在解决复杂优化问题(如电机驱动器控制器参数的调谐)方面具有许多优于经典方法的优点。这些解决各种全局优化问题的算法通常被称为受自然启发的方法,本课程中的方法基于对有组织的群体成员的智能行为的建模。粒子群优化算法(PSO)是一种基于种群的算法,具有对控制器参数进行微调的能力。本文提出了基于混沌惯性权值和收缩因子的粒子群算法,用于调整比例-积分-导数(PID)控制器参数,以控制无刷直流(BLDC)电机驱动。在MATLAB/Simulink中对无刷直流电机进行了建模,并利用MATLAB代码对转子位置的梯形反电动势波形进行了建模。对比了PSO算法的仿真结果,结果表明了c -惯量权值和c -因子对PID控制器参数整定的有效性。
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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