不确定图中高效多智能体导航的协同团队行动值逼近

M. Stadler, Jacopo Banfi, Nicholas A. Roy
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引用次数: 0

摘要

对于在未知环境中导航的协作代理团队,诸如感知路线的可穿越性之类的协作行为可能会对总体团队性能产生很大影响。然而,在联合团队行动的整个空间上进行规划通常在计算上是难以处理的。此外,对于给定的团队任务,通常只有少量的协作操作是有用的,但是如何评估给定操作的有用性并不明显。在这项工作中,我们使用宏动作在随机图上建模协作团队策略,其中给定代理的每个宏动作可以由一系列动作、感知动作和等待从其他代理接收信息的动作组成。为了减少在规划过程中考虑的宏观行为的数量,我们生成候选未来团队状态的乐观近似,然后将规划域限制为一个小策略类,该策略类仅由可能导致高回报未来团队状态的宏观行为组成。我们在小策略类上优化团队计划,并证明该方法使团队能够找到在减少任务相关环境不确定性和有效导航到玩具图和岛屿道路网络域的目标之间积极平衡的策略,找到比不采取行动减少环境不确定性的策略更好的计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approximating the Value of Collaborative Team Actions for Efficient Multiagent Navigation in Uncertain Graphs
For a team of collaborative agents navigating through an unknown environment, collaborative actions such as sensing the traversability of a route can have a large impact on aggregate team performance. However, planning over the full space of joint team actions is generally computationally intractable. Furthermore, typically only a small number of collaborative actions is useful for a given team task, but it is not obvious how to assess the usefulness of a given action. In this work, we model collaborative team policies on stochastic graphs using macro-actions, where each macro-action for a given agent can consist of a sequence of movements, sensing actions, and actions of waiting to receive information from other agents. To reduce the number of macro-actions considered during planning, we generate optimistic approximations of candidate future team states, then restrict the planning domain to a small policy class which consists of only macro-actions which are likely to lead to high-reward future team states. We optimize team plans over the small policy class, and demonstrate that the approach enables a team to find policies which actively balance between reducing task-relevant environmental uncertainty and efficiently navigating to goals in toy graph and island road network domains, finding better plans than policies that do not act to reduce environmental uncertainty.
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