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A Hybrid LP-RPG Heuristic for Modelling Numeric Resource Flows in Planning

机译:用于计划中数字资源流建模的混合LP-RPG启发式方法

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摘要

Although the use of metric fluents is fundamental to many practical planning problems, the study of heuristics to support fully automated planners working with these fluents remains relatively unexplored. The most widely used heuristic is the relaxation of metric fluents into interval-valued variables --- an idea first proposed a decade ago. Other heuristics depend on domain encodings that supply additional information about fluents, such as capacity constraints or other resource-related annotations.A particular challenge to these approaches is in handling interactions between metric fluents that represent exchange, such as the transformation of quantities of raw materials into quantities of processed goods, or trading of money for materials. The usual relaxation of metric fluents is often very poor in these situations, since it does not recognise that resources, once spent, are no longer available to be spent again.We present a heuristic for numeric planning problems building on the propositional relaxed planning graph, but using a mathematical program for numeric reasoning. We define a class of producer--consumer planning problems and demonstrate how the numeric constraints in these can be modelled in a mixed integer program (MIP). This MIP is then combined with a metric Relaxed Planning Graph (RPG) heuristic to produce an integrated hybrid heuristic. The MIP tracks resource use more accurately than the usual relaxation, but relaxes the ordering of actions, while the RPG captures the causal propositional aspects of the problem. We discuss how these two components interact to produce a single unified heuristic and go on to explore how further numeric features of planning problems can be integrated into the MIP. We show that encoding a limited subset of the propositional problem to augment the MIP can yield more accurate guidance, partly by exploiting structure such as propositional landmarks and propositional resources. Our results show that the use of this heuristic enhances scalability on problems where numeric resource interaction is key in finding a solution.
机译:尽管使用度量标准的流利软件是许多实际计划问题的基础,但相对来说,还没有进行研究启发法以支持使用这些流利软件的全自动计划人员的研究。最广泛使用的启发式方法是将度量标准流水线放宽到间隔值变量中-这是十年前首次提出的想法。其他启发式方法依赖于提供有关流利的附加信息的域编码,例如容量限制或其他与资源相关的注释。这些方法的特殊挑战是处理代表交换的度量流利之间的交互,例如原材料数量的转换成一定数量的加工产品,或进行货币交易。在这种情况下,度量标准流利的通常放松效果通常很差,因为它无法识别一旦花费的资源就无法再花费了。我们提出了基于命题放松规划图的数字规划问题的启发式方法,但使用数学程序进行数字推理。我们定义了一类生产者-消费者计划问题,并演示了如何在混合整数程序(MIP)中对其中的数字约束进行建模。然后,将此MIP与度量式轻松计划图(RPG)启发式算法结合以生成集成的混合启发式算法。 MIP比通常的放松更准确地跟踪资源使用,但是放松了动作的顺序,而RPG捕捉了问题的因果关系。我们讨论了这两个组件如何相互作用以产生单个统一的启发式方法,并继续探讨如何将规划问题的更多数字特征集成到MIP中。我们表明,编码命题问题的有限子集以增强MIP可以产生更准确的指导,部分是通过利用诸如命题地标和命题资源之类的结构来实现的。我们的结果表明,这种启发式方法的使用增强了在数字资源交互是找到解决方案的关键的问题上的可伸缩性。

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