面向人性化的多机器人团队高效控制

A. Stoica, Theodoros Theodoridis, Huosheng Hu, K. Mcdonald-Maier, David F. Barrero
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引用次数: 20

摘要

本文探讨了在自然人机多机器人接口(HMRI)用于命令和控制的背景下,提高多机器人团队执行任务效率的方法。激励方案是由必须在最短时间内穿越未知地形的无人地面车辆(ugv)运输车队进行紧急疏散。在实验中,操作员在最短的时间内命令一组漫游者通过迷宫。执行这些任务的效率取决于两个方面:机器人的自主水平,以及操作员指挥和控制团队的能力。本文将经典的自治层次(LOA)框架扩展到群体自治特征的层次(G-LOA),并用它来确定新的控制策略。定义了面向ugv的命令语言(UGVL),并将基于手势的HMRI映射到UGVL。UGVL用于控制一个由3个机器人组成的团队,探索不同G-LOA的效率;具体来说,通过(a)单独控制每个机器人通过迷宫,(b)控制领导者并克隆其对追随者的控制,以及(c)控制整个群体。毫不奇怪,增加G-LOA时的命令会导致更快的遍历,但是在此上下文中有许多方面值得讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards human-friendly efficient control of multi-robot teams
This paper explores means to increase efficiency in performing tasks with multi-robot teams, in the context of natural Human-Multi-Robot Interfaces (HMRI) for command and control. The motivating scenario is an emergency evacuation by a transport convoy of unmanned ground vehicles (UGVs) that have to traverse, in shortest time, an unknown terrain. In the experiments the operator commands, in minimal time, a group of rovers through a maze. The efficiency of performing such tasks depends on both, the levels of robots' autonomy, and the ability of the operator to command and control the team. The paper extends the classic framework of levels of autonomy (LOA), to levels/hierarchy of autonomy characteristic of Groups (G-LOA), and uses it to determine new strategies for control. An UGVoriented command language (UGVL) is defined, and a mapping is performed from the human-friendly gesture-based HMRI into the UGVL. The UGVL is used to control a team of 3 robots, exploring the efficiency of different G-LOA; specifically, by (a) controlling each robot individually through the maze, (b) controlling a leader and cloning its controls to followers, and (c) controlling the entire group. Not surprisingly, commands at increased G-LOA lead to a faster traverse, yet a number of aspects are worth discussing in this context.
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