Title of article
Conformant planning via heuristic forward search: A new approach Original Research Article
Author/Authors
J?rg Hoffmann، نويسنده , , Craig Boutilier Ronen I. Brafman Carmel Domshlak Holger H. Hoos، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
35
From page
507
To page
541
Abstract
Conformant planning is the task of generating plans given uncertainty about the initial state and action effects, and without any sensing capabilities during plan execution. The plan should be successful regardless of which particular initial world we start from. It is well known that conformant planning can be transformed into a search problem in belief space, the space whose elements are sets of possible worlds. We introduce a new representation of that search space, replacing the need to store sets of possible worlds with a need to reason about the effects of action sequences. The reasoning is done by implication tests on propositional formulas in conjunctive normal form (CNF) that capture the action sequence semantics. Based on this approach, we extend the classical heuristic forward-search planning system FF to the conformant setting. The key to this extension is an appropriate extension of the relaxation that underlies FFʹs heuristic function, and of FFʹs machinery for solving relaxed planning problems: the extended machinery includes a stronger form of the CNF implication tests that we use to reason about the effects of action sequences. Our experimental evaluation shows the resulting planning system to be superior to the state-of-the-art conformant planners MBP, KACMBP, and GPT in a variety of benchmark domains.
Keywords
Planning under uncertainty , Relaxed plan heuristic , Heuristic search planning
Journal title
Artificial Intelligence
Serial Year
2006
Journal title
Artificial Intelligence
Record number
1207477
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