理性的攻击行为减少了移动机器人团队中的干扰

Sarah Brown, Mauricio Zuluaga, Yinan Zhang, R. Vaughan
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引用次数: 17

摘要

空间干扰会降低移动机器人团队的效率。我们研究了一组没有集中控制的机器人执行运输任务,其中机器人经常相互干扰。机器人必须在同一个空间工作,所以地域方法不合适。以前我们已经证明,受各种动物攻击性表现的启发,刻板竞争可以减少干扰并提高整体系统性能。然而,之前设计的选择机器人“攻击性水平”的方法都没有随机选择攻击性的效果好。本文描述了一种基于机器人在任务中的投入来选择攻击等级的新方法。在办公室环境下的6个机器人团队仿真实验表明,在一定条件下,与随机竞争和非竞争控制实验相比,该方法可以显著提高系统性能。最后,我们讨论了这种方案在特定环境下的优点和局限性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rational aggressive behaviour reduces interference in a mobile robot team
Spatial interference can reduce the effectiveness of teams of mobile robots. We examine a team of robots with no centralized control performing a transportation task, in which robots frequently interfere with each other. The robots must work in the same space, so territorial methods are not appropriate. Previously we have shown that a stereotyped competition, inspired by aggressive displays in various animal species, can reduce interference and improve overall system performance. However, none of the methods previously devised for selecting a robot's 'aggression level' performed better than selecting aggression at random. This paper describes a new, principled approach to selecting an aggression level, based on robot's investment in a task. Simulation experiments with teams of six robots in an office-type environment show that, under certain conditions, this method can significantly improve system performance compared to a random competition and a noncompetitive control experiment. Finally, we discuss the benefits and limitations of such a scheme with respect to the specific environment
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