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Improving hierarchical task network planning performance by the use of domain-independent heuristic search

机译:通过使用与域无关的启发式搜索来提高分层任务网络计划的性能

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摘要

Heuristics serve as a powerful tool in classical planning. However, due to some incompatibilities between classical planning and hierarchical planning, heuristics from classical planning cannot be easily adapted to work in the hierarchical task network (HTN) setting. In order to improve HTN planning performance by the use of heuristics from classical planning, a new HTN planning named SHOP-h planning algorithm is established. Based on simple hierarchical ordered planner (SHOP), SHOP-h implemented with Python is called Pyhop-h. It can heuristically select the best decomposition method by using domain independent state-based heuristics. The experimental benchmark problem shows that the Pyhop-h outperforms the existed Pyhop in plan length and time. It can be concluded that Pyhop-h can leverage domain independent heuristics and other techniques both to reduce the domain engineering burden and to solve more and larger problems rapidly especially for problems with a deep hierarchy of tasks. (C) 2017 Elsevier B.V. All rights reserved.
机译:启发式是经典规划中的强大工具。但是,由于经典计划和分层计划之间存在一些不兼容性,因此无法轻松地将经典计划中的启发式方法应用于分层任务网络(HTN)设置中。为了通过使用经典规划中的启发式方法来提高HTN规划性能,建立了一种名为SHOP-h规划算法的新HTN规划。基于简单的分层有序计划程序(SHOP),用Python实现的SHOP-h称为Pyhop-h。它可以通过使用与域无关的基于状态的启发式方法来启发式地选择最佳分解方法。实验基准问题表明,Pyhop-h在计划长度和时间上都优于现有的Pyhop。可以得出结论,Pyhop-h可以利用与域无关的启发式方法和其他技术来减轻域工程负担并快速解决更多和更大的问题,尤其是对于任务层次很深的问题。 (C)2017 Elsevier B.V.保留所有权利。

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