基于粒子群算法的机器人群聚速度在线优化

R. Vatankhah, S. Etemadi, M. Honarvar, A. Alasty, M. Boroushaki, G. Vossoughi
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引用次数: 13

摘要

为了使机器人群体协调速度最大化,采用粒子群算法确定机器人群体中智能体的速度。这里假设的群体是同质的,至少包括两个成员。群体成员的运动和行为大多是两种不同现象的结果:相互作用的相互作用力和agent的影响。相互作用的力包括吸引和排斥。更现实的是,群体成员的视野不是无限的。因此,协调体对机器人群的影响是局部的。这里的目标是引导机器人群以最大可能的速度。根据系统的运动方程,该最大值不能解析得到。粒子群优化是一种新颖的优化方法,它的灵感来自于对鸟类群集和鱼群的观察。与其他鲁棒优化方法相比,粒子群优化方法效率更高,需要的函数评估次数更少,结果质量更好或相同。结果表明,该进化算法具有较好的求解复杂动态优化问题的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online velocity optimization of robotic swarm flocking using particle swarm optimization (PSO) method
In this paper, the agent velocity in robotic swarm was determined by using particle swarm optimization (PSO) to maximize the robotic swarm coordination velocity. A swarm as supposed here is homogenous and includes at least two members. Motion and behavior of swarm members are mostly result of two different phenomena: interactive mutual forces and influence of the agent. Interactive mutual forces comprise both attraction and repulsion. To be more realistic the field of the swarm members' view is not infinity. So influence of the coordinator agent on the robotic swarm would be local. The objective here is to guide the robotic swarm with maximum possible velocity. According to equation motion of the system, this maximum value cannot be analytically obtained. PSO is a novel method in optimization which inspired from observations of birds flocking and fish schooling. As compared to other robust optimization methods, PSO is more efficient, and requires fewer number of function evaluations, while leading to better or the same quality of results. The results show the high ability of this evolutionary algorithm in solving complicated dynamic optimization problems.
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