Decentralized approach for multi-robot task allocation problem with uncertain task execution

H. Hanna
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引用次数: 18

Abstract

Existing task allocation methods for multi-robot generally consider the allocation of a task to a robot as a certain source of reward (real reward). In fact, they ignore the impact of the robots' uncertain behaviors on the solution quality and the obtained reward. In environments where task execution is uncertain, a robot can not know, during the allocation phase, whether it will be able to execute all the tasks that are allocated to it. That's why, in many recent and real applications, as planetary rovers, known task allocation mechanisms seem to be insufficient to provide good solutions in the light of uncertainty. In this paper, we address the problem of multi-robot task allocation for situations where task execution is uncertain. We propose an approach that allows robots to take into account the uncertain execution when they are negotiating the allocation of tasks. We decompose the problem into two stages. In the first stage, each robot locally selects tasks it would like to execute, basing its choice on some criterion. Since the resources consumption is uncertain, a criterion to select tasks can not only be the maximization of the robot's reward. We define a new criterion based on the notion of expected reward that provides a good tread-off between the reward of selected tasks and the chances to completely execute these tasks. The task selection mechanism will be formalized by a Markov decision process that allows maximizing the expected reward. In the second stage, an auctioning mechanism is used to allow robots acting in a decentralized way to coordinate their local choices and to allocate tasks.
任务执行不确定的多机器人任务分配问题的分散方法
现有的多机器人任务分配方法一般都把分配给一个机器人的任务作为一定的奖励来源(真实奖励)。事实上,他们忽略了机器人的不确定性行为对解质量和获得的奖励的影响。在任务执行不确定的环境中,在分配阶段,机器人无法知道它是否能够执行分配给它的所有任务。这就是为什么在许多最近和实际的应用中,如行星探测器,已知的任务分配机制似乎不足以在不确定性的情况下提供良好的解决方案。本文研究了任务执行不确定情况下的多机器人任务分配问题。我们提出了一种方法,使机器人在协商任务分配时考虑到执行的不确定性。我们把这个问题分解成两个阶段。在第一阶段,每个机器人根据一些标准局部选择自己想要执行的任务。由于资源消耗是不确定的,选择任务的标准不能仅仅是机器人的奖励最大化。我们根据预期奖励的概念定义了一个新的标准,它在选择任务的奖励和完全执行这些任务的机会之间提供了一个很好的平衡。任务选择机制将通过允许最大化预期奖励的马尔可夫决策过程形式化。在第二阶段,使用拍卖机制允许机器人以分散的方式协调其本地选择并分配任务。
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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