解离时态问题的基于拓扑的变量排序策略

Yuechang Liu, Yunfei Jiang, Hong Qian
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引用次数: 2

摘要

自动化计划和调度中出现的许多时间问题都可以用析取时间问题(dtp)来表示。文献中的大多数DTP求解器将DTP视为约束满足问题(CSP)或可满足性问题(SAT),并使用标准的CSP (SAT)技术来求解它们。基本上,DTP是通过时间变量之间的逻辑相关的拓扑关系来表示的,然而,不幸的是,在利用拓扑信息来指导搜索DTP解析方面做的工作很少。根据CSP文献中动态变量排序(DVO)启发式的“失败优先”(FF)原则,提出了一种基于DTP拓扑结构(定义为析取时态网络)的动态变量排序(DVO)。实验结果表明,该方法优于最小剩余值启发式算法,而最小剩余值启发式算法在现有的DTP求解器中被广泛使用,特别是在困难和大规模的问题上。而且,基于CSP的程序具有最好的启发式,在大多数测试问题上都赢得了TSAT++。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topology-based Variable Ordering Strategy for Solving Disjunctive Temporal Problems
Many temporal problems arising in automated planning and scheduling can be expressed as disjunctive temporal problems (DTPs). Most of DTP solvers in the literature treat DTPs as constraint satisfaction problems (CSPs) or satisfiability problems (SATs), and solve them using standard CSP (SAT) techniques. Basically DTPs are represented through logically related topological relations between temporal variables, however, unfortunately little work has been done on exploiting the topological information to direct the search for DTP resolving. According to the "fail-first "(FF) principle for dynamic variable ordering (DVO) heuristics in CSP literature, this paper proposes a DVO which is based on the topological structure of DTP (which is defined to be Disjunctive Temporal Network). Experimental results reveal that the proposed DVO outperforms Minimal Remaining Values heuristics-a DVO that is widely used in existing DTP solvers, especially for the hard and large-scale problems. And, a CSP based procedure with the best of the heuristics wins TSAT++ on most of the test problems.
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