Author:
ZHOU NENG-FA,BARTÁK ROMAN,DOVIER AGOSTINO
Abstract
AbstractThis paper describes Picat's planner, its implementation, and planning models for several domains used in International Planning Competition (IPC) 2014. Picat's planner is implemented by use of tabling. During search, every state encountered is tabled, and tabled states are used to effectively perform resource-bounded search. In Picat, structured data can be used to avoid enumerating all possible permutations of objects, and term sharing is used to avoid duplication of common state data. This paper presents several modeling techniques through the example models, ranging from designing state representations to facilitate data sharing and symmetry breaking, encoding actions with operations for efficient precondition checking and state updating, to incorporating domain knowledge and heuristics. Broadly, this paper demonstrates the effectiveness of tabled logic programming for planning, and argues the importance of modeling despite recent significant progress in domain-independent PDDL planners.
Publisher
Cambridge University Press (CUP)
Subject
Artificial Intelligence,Computational Theory and Mathematics,Hardware and Architecture,Theoretical Computer Science,Software
Reference34 articles.
1. Alford R. , Kuter U. and Nau D. S. 2009. Translating HTNs to PDDL: A small amount of domain knowledge can go a long way. In IJCAI. 1629–1634.
2. Depth-first iterative-deepening
3. Answer set programming at a glance
4. McDermott D. 1998. The planning domain definition language manual. CVC Report 98-003, Yale Computer Science Report 1165.
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