论文标题
具有不断发展且未知机器人功能的异质多机器人团队的自适应任务分配
Adaptive Task Allocation for Heterogeneous Multi-Robot Teams with Evolving and Unknown Robot Capabilities
论文作者
论文摘要
对于具有异质功能的多机器人团队,典型的任务分配方法基于机器人对执行某些任务的适用性以及任务本身的要求,将任务分配给机器人。但是,在机器人团队的实际部署中,机器人在部署前的适合性可能是未知的,或者由于环境条件的变化而可能会有所不同。本文提出了一个自适应任务分配和任务执行框架,该框架允许单个机器人在任务之间优先级,同时明确考虑其在执行任务时的效力 - - 其参数可能在部署前未知,并且可能会随着时间而变化。这样的一个\ emph {perifeization}参数---编码给定机器人对任务的有效性 - - 在fly上进行更新,允许我们的算法重新分配机器人之间的任务,目的是执行它们。开发的框架不需要变化的环境或未知机器人功能的明确模型 - 仅考虑机器人在完成任务时所取得的进度。模拟和实验证明了在环境条件下以及机器人能力在部署前未知时所提出的方法的功效。
For multi-robot teams with heterogeneous capabilities, typical task allocation methods assign tasks to robots based on the suitability of the robots to perform certain tasks as well as the requirements of the task itself. However, in real-world deployments of robot teams, the suitability of a robot might be unknown prior to deployment, or might vary due to changing environmental conditions. This paper presents an adaptive task allocation and task execution framework which allows individual robots to prioritize among tasks while explicitly taking into account their efficacy at performing the tasks---the parameters of which might be unknown before deployment and/or might vary over time. Such a \emph{specialization} parameter---encoding the effectiveness of a given robot towards a task---is updated on-the-fly, allowing our algorithm to reassign tasks among robots with the aim of executing them. The developed framework requires no explicit model of the changing environment or of the unknown robot capabilities---it only takes into account the progress made by the robots at completing the tasks. Simulations and experiments demonstrate the efficacy of the proposed approach during variations in environmental conditions and when robot capabilities are unknown before deployment.