Multiple Robots Avoid Humans To Get the Jobs Done: An Approach to Human-aware Task Allocation

Filip Surma, T. Kucner, Masoumeh Mansouri
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引用次数: 4

Abstract

Multi-robot Task Allocation (MRTA) is the problem of assigning tasks to robots subject to a performance objective. Among existing approaches to MRTA, auction-based methods are widely used. In an auction-based method, each robot typically computes its Euclidean distance to all the given tasks, and those values are bids based on which a global auctioneer allocates the tasks to them. Although simple to compute, these approaches result in an inefficient navigation of robots to reach the tasks in an environment populated with humans. We overcome this limitation by augmenting bids in an auction-based MRTA method with knowledge of human motions. As a result, this augmented task allocation method may, for instance, assign a task to a robot which is further away so long as the robot avoids possibly congested places. We validate the approach through simulated fleets of robots in a shopping centre and a small-scale warehouse environment. Our results show significant improvement over the allocation that ignores knowledge of human dynamics.
多机器人避开人类完成工作:一种人类意识任务分配方法
多机器人任务分配(Multi-robot Task Allocation, MRTA)是将任务分配给具有一定性能目标的机器人的问题。在现有的MRTA方法中,基于拍卖的方法被广泛使用。在基于拍卖的方法中,每个机器人通常计算其到所有给定任务的欧几里得距离,这些值是全球拍卖师为其分配任务所依据的出价。虽然计算简单,但这些方法导致机器人在人类密集的环境中完成任务的导航效率低下。我们通过在基于拍卖的MRTA方法中增加出价来克服这一限制。因此,这种增强任务分配方法可以,例如,只要机器人避开可能拥挤的地方,就可以将任务分配给距离较远的机器人。我们通过在购物中心和小型仓库环境中模拟机器人车队来验证这种方法。我们的研究结果表明,与忽略人类动态知识的分配相比,分配有显著改善。
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