The GRT planning system: Backward heuristic construction in forward state-space planning

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作者
Refanidis, Ioannis [1 ]
Vlahavas, Ioannis [1 ]
机构
[1] Aristotle University, Dept. of Informatics, 54006 Thessaloniki, Greece
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Competition - Computational complexity - Problem solving;
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摘要
This paper presents GRT, a domain-independent heuristic planning system for STRIPS worlds. GRT solves problems in two phases. In the pre-processing phase, it estimates the distance between each fact and the goals of the problem, in a backward direction. Then, in the search phase, these estimates are used in order to further estimate the distance between each intermediate state and the goals, guiding so the search process in a forward direction and on a best-first basis. The paper presents the benefits from the adoption of opposite directions between the preprocessing and the search phases, discusses some difficulties that arise in the pre-processing phase and introduces techniques to cope with them. Moreover, it presents several methods of improving the efficiency of the heuristic, by enriching the representation and by reducing the size of the problem. Finally, a method of overcoming local optimal states, based on domain axioms, is proposed. According to it, difficult problems are decomposed into easier sub-problems that have to be solved sequentially. The performance results from various domains, including those of the recent planning competitions, show that GRT is among the fastest planners. © 2001 AI Access Foundation and Morgan Kaufmann Publishers. All rights reserved.
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页码:115 / 161
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