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Interval Based Relaxation Heuristics for Numeric Planning with Action Costs

机译:基于间隔的松弛启发式数字规划的行动成本

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Many real-world problems can be expressed in terms of states and actions that modify the world to reach a certain goal. Such problems can be solved by automated planning. Numeric planning supports numeric quantities such as resources or physical properties in addition to the propositional variables from classical planning. We approach numeric planning with heuristic search and introduce adaptations of the relaxation heuristics h_(max), h_(add) and h_(FF) to interval based relaxation frameworks. In contrast to previous approaches, the heuristics presented in this paper are not limited to fragments of numeric planning with instantaneous actions (such as linear or acyclic numeric planning tasks) and support action costs.
机译:许多现实世界中的问题都可以用状态和行为来表达,这些状态和行为会改变世界以达到某个目标。这些问题可以通过自动计划解决。除了经典计划中的命题变量外,数字计划还支持诸如资源或物理属性之类的数字量。我们采用启发式搜索进行数值规划,并引入松弛启发式h_(max),h_(add)和h_(FF)到基于间隔的松弛框架。与以前的方法相比,本文提出的启发式方法不仅限于具有瞬时动作(例如线性或非循环数字计划任务)和支持动作成本的数字计划的片段。

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