A game-theoretical approach to heterogeneous multi-robot task assignment problem with minimum workload requirements

Inmo Jang, Hyo-Sang Shin, A. Tsourdos
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引用次数: 4

Abstract

This paper addresses a multi-robot task assignment problem with heterogeneous agents and tasks. Each task has a different type of minimum workload requirement to be accomplished by multiple agents, and the agents have different work capacities and costs depending on the tasks. The objective is to find an assignment that minimises the total cost of assigned agents while satisfying the requirements of the tasks. We formulate this problem as the minimisation version of the generalised assignment problem with minimum requirements (MinGAP-MR). We propose a distributed game-theoretical approach in which each selfish player (i.e., robot) wants to join a task-specific coalition that minimises its own cost as possible. We adopt tabu-learning heuristics where a player penalises its previously chosen coalition, and thereby a Nash-stable partition is always guaranteed to be determined. Experimental results present the properties of our proposed approach in terms of suboptimality and algorithmic complexity.
具有最小工作量要求的异构多机器人任务分配问题的博弈论方法
本文研究了具有异构智能体和任务的多机器人任务分配问题。每个任务都有不同类型的最小工作负载需求,需要由多个代理来完成,并且代理根据任务具有不同的工作能力和成本。目标是找到一种分配,使分配的代理的总成本最小化,同时满足任务的要求。我们将这个问题表述为具有最小要求的广义分配问题(MinGAP-MR)的最小化版本。我们提出了一种分布式博弈论方法,其中每个自私的参与者(即机器人)都希望加入一个特定任务的联盟,以尽可能减少自己的成本。我们采用禁忌学习启发式,其中参与者惩罚其先前选择的联盟,因此始终保证确定纳什稳定分区。实验结果证明了该方法在次优性和算法复杂度方面的特性。
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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