Computing Contingent Plan Graphs using Online Planning

Shlomi Maliah, Radimir Komarnitski, Guy Shani
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引用次数: 2

Abstract

In contingent planning under partial observability with sensing actions, agents actively use sensing to discover meaningful facts about the world. Recent successful approaches translate the partially observable contingent problem into a non-deterministic fully observable problem, and then use a planner for non-deterministic planning. However, the translation may become very large, encumbering the task of the non-deterministic planner. We suggest a different approach—using an online contingent solver repeatedly to construct a plan tree. We execute the plan returned by the online solver until the next observation action, and then branch on the possible observed values, and replan for every branch independently. In many cases a plan tree can have an exponential width in the number of state variables, but the tree may have a structure that allows us to compactly represent it using a directed graph. We suggest a mechanism for tailoring such a graph that reduces both the computational effort and the storage space. Our method also handles non-deterministic domains, by identifying cycles in the plans. We present a set of experiments, showing our approach to scale better than state-of-the-art offline planners.
使用在线规划计算偶然计划图
在具有感知行为的部分可观察性条件下的偶然规划中,智能体主动利用感知来发现关于世界的有意义的事实。最近一些成功的方法将部分可观察的偶然问题转化为非确定性的完全可观察问题,然后使用规划器进行非确定性规划。然而,平移量可能会变得非常大,从而妨碍非确定性规划器的任务。我们建议采用一种不同的方法——反复使用在线随机求解器来构建计划树。我们执行在线求解器返回的计划,直到下一个观察动作,然后对可能的观察值进行分支,并独立地对每个分支进行重新规划。在许多情况下,计划树的宽度可以是状态变量数量的指数,但树的结构可能允许我们使用有向图紧凑地表示它。我们提出了一种裁剪这种图的机制,可以减少计算工作量和存储空间。我们的方法还通过识别计划中的周期来处理不确定的域。我们展示了一组实验,展示了我们的方法比最先进的离线计划者更好。
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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