Numeric Planning via Abstraction and Policy Guided Search.

IJCAI(2017)

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摘要
The real-world application of planning techniques often requires models with numeric fluents. However, these fluents are not directly supported by most planners and heuristics. We describe a family of planning algorithms that takes a numeric planning problem and produces an abstracted representation that can be solved using any classical planner. The resulting abstract plan is generalized into a policy and then used to guide the search in the original numeric domain. We prove that our approach is sound, and evaluate it on a set of standard benchmarks. Experiments demonstrate competitive performance when compared to other well-known algorithms for numeric planning, and a significant performance improvement in certain domains.
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