Swarm Optimization of Fuzzy Systems for Mobile Robots with Remote Control

O. Kozlov, Y. Kondratenko, O. Skakodub, O. Gerasin, A. Topalov
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引用次数: 2

Abstract

This paper is dedicated to the development and research of the advanced approach for optimization of fuzzy control systems (FCS) for mobile robots (MR) with remote control based on bioinspired swarm techniques. The proposed approach makes it possible to create effective intelligent control systems for MRs based on the principles of hierarchical multi-level control, remote IoT-based control, fuzzy logic control, and intelligent optimization of fuzzy control devices. The applied hybrid particle swarm optimization (PSO) techniques with elite strategy allow effectively optimizing various parameters of FCSs, finding the optimal solution to the problem, and, at the same time, have a higher convergence rate compared with the basic PSO algorithms. To evaluate the effectiveness of the obtained advanced approach based on hybrid swarm techniques, the optimization process of the FCS for the speed control of the multi-purpose caterpillar MR, which can move on inclined and vertical ferromagnetic surfaces, is carried out. The presented research results fully confirm the high efficiency of the proposed approach, as well as the expediency of its application for the optimization of fuzzy control systems for various remotely controlled mobile robots.
移动机器人远程控制模糊系统的群优化
本文致力于开发和研究基于仿生群技术的移动机器人模糊控制系统(FCS)远程控制的先进优化方法。提出的方法使基于分层多级控制、基于物联网的远程控制、模糊逻辑控制和模糊控制设备的智能优化原理的MRs智能控制系统的创建成为可能。采用精英策略的混合粒子群优化(PSO)技术可以有效地优化fcs的各种参数,找到问题的最优解,同时与基本粒子群算法相比,具有更高的收敛速度。为了评估基于混合群技术的先进方法的有效性,对可在倾斜和垂直铁磁表面上移动的多用途履带式磁流变体进行了FCS速度控制的优化过程。研究结果充分证实了所提方法的高效性,以及将其应用于各种遥控移动机器人模糊控制系统优化的方便性。
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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