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Planning with Continuous Resources in Stochastic Domains

机译:在随机域中使用连续资源进行规划

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摘要

We consider the problem of optimal planning in stochastic domains with resource constraints, where resources are continuous and the choice of action at each step may depend on the current resource level. Our principal contribution is the HAO* algorithm, a generalization of the AO* algorithm that performs search in a hybrid state space that is modeled using both discrete and continuous state variables. The search algorithm leverages knowledge of the starting state to focus computational effort on the relevant parts of the state space. We claim that this approach is especially effective when resource limitations contribute to reachability constraints. Experimental results show its effectiveness in the domain that motivates our research - automated planning for planetary exploration rovers.
机译:我们考虑具有资源约束的随机域中的最佳规划问题,在该域中资源是连续的,并且在每个步骤中选择的操作可能取决于当前的资源级别。我们的主要贡献是HAO *算法,它是AO *算法的概括,它在使用离散状态变量和连续状态变量建模的混合状态空间中执行搜索。搜索算法利用起始状态的知识将计算工作集中在状态空间的相关部分上。我们声称,当资源限制导致可达性限制时,这种方法特别有效。实验结果表明它在激励我们研究的领域中的有效性-行星探测漫游器的自动计划。

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