Robot Path Planning Using Improved Ant Colony Algorithm in the Environment of Internet of Things

J. Robotics Pub Date : 2022-04-04 DOI:10.1155/2022/1739884
Hong-Kai Huang, Guo Tan, Linli Jiang
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引用次数: 3

Abstract

It is a research topic of practical significance to study the path planning technology of mobile robot navigation technology. Aiming at the problems of slow convergence speed, redundant planning path, and easy to fall into local optimal value of ant colony algorithm in a complex environment, a robot path planning based on improved ant colony algorithm is proposed. First, the grid method is used to model the path environment, which marks each grid to make the ant colony move from the initial grid to the target grid for path search. Second, the ant colony is divided according to different planning tasks. Let some ants explore the way first, and carry out basic optimization planning for the map environment. The antecedent ants mark the basic advantage on a target value of the path with pheromone concentration so as to guide the subsequent route-finding operation of the main ant colony. Finally, in order to avoid the individual ants falling into a deadlock state in the early search, the obstacle avoidance factor is increased, the transition probability is improved, and the amount of information on each path is dynamically adjusted according to the local path information, so as to avoid the excessive concentration of pheromones. Experimental results show that the algorithm has high global search ability, significantly speeds up the convergence speed, and can effectively improve the efficiency of mobile robot in path planning.
物联网环境下基于改进蚁群算法的机器人路径规划
研究移动机器人导航技术中的路径规划技术是一个具有现实意义的研究课题。针对蚁群算法在复杂环境下收敛速度慢、规划路径冗余、易陷入局部最优值等问题,提出了一种基于改进蚁群算法的机器人路径规划方法。首先,采用网格法对路径环境进行建模,对每个网格进行标记,使蚁群从初始网格向目标网格移动进行路径搜索;其次,根据不同的规划任务划分蚁群。让一些蚂蚁先探路,对地图环境进行基本的优化规划。先行蚁在信息素浓度的路径目标值上标记基本优势,以指导主蚁群后续的寻路操作。最后,为了避免个体蚂蚁在早期搜索时陷入死锁状态,增加了避障因子,提高了转移概率,并根据局部路径信息动态调整每条路径上的信息量,避免信息素浓度过高。实验结果表明,该算法具有较高的全局搜索能力,显著加快了收敛速度,能够有效提高移动机器人路径规划的效率。
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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