Auction-Based Task Allocation and Motion Planning for Multi-Robot Systems with Human Supervision

Giada Galati, Stefano Primatesta, Alessandro Rizzo
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Abstract

Abstract This paper presents a task allocation strategy for a multi-robot system with a human supervisor. The multi-robot system consists of a team of heterogeneous robots with different capabilities that operate in a dynamic scenario that can change in the robots’ capabilities or in the operational requirements. The human supervisor can intervene in the operation scenario by approving the final plan before its execution or forcing a robot to execute a specific task. The proposed task allocation strategy leverages an auction-based method in combination with a sampling-based multi-goal motion planning. The latter is used to evaluate the costs of execution of tasks based on realistic features of paths. The proposed architecture enables the allocation of tasks accounting for priorities and precedence constraints, as well as the quick re-allocation of tasks after a dynamic perturbation occurs –a crucial feature when the human supervisor preempts the outcome of the algorithm and makes manual adjustments. An extensive simulation campaign in a rescue scenario validates our approach in dynamic scenarios comprising a sensor failure of a robot, a total failure of a robot, and a human-driven re-allocation. We highlight the benefits of the proposed multi-goal strategy by comparing it with single-goal motion planning strategies at the state of the art. Finally, we provide evidence for the system efficiency by demonstrating the powerful synergistic combination of the auction-based allocation and the multi-goal motion planning approach.
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人类监督下基于拍卖的多机器人系统任务分配与运动规划
摘要本文提出了一种具有人类监督者的多机器人系统任务分配策略。多机器人系统由一组具有不同能力的异构机器人组成,这些机器人在动态场景中运行,这些场景可以改变机器人的能力或操作需求。人类主管可以通过在执行最终计划之前批准最终计划或强迫机器人执行特定任务来干预操作场景。提出的任务分配策略将基于拍卖的方法与基于采样的多目标运动规划相结合。后者用于基于路径的现实特征来评估任务的执行成本。所提出的架构使任务分配能够考虑优先级和优先级约束,以及在动态扰动发生后快速重新分配任务-当人类监督者抢占算法的结果并进行手动调整时,这是一个关键特征。在救援场景中进行了广泛的模拟活动,验证了我们在动态场景中的方法,包括机器人传感器故障、机器人完全故障和人类驱动的重新分配。我们强调提出的多目标策略的好处,并将其与目前的单目标运动规划策略进行比较。最后,我们通过展示基于拍卖的分配和多目标运动规划方法的强大协同组合,为系统效率提供证据。
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