Planification par fusions incrémentales de graphes
October 19, 2018 · Declared Dead · 🏛 Journées Francophones de Planification, Décision, Apprentissage pour la conduite de systèmes (JFPDA). 2008, Metz, France
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Authors
Damien Pellier, lias. Belaidi
arXiv ID
1810.08460
Category
cs.AI: Artificial Intelligence
Citations
0
Venue
Journées Francophones de Planification, Décision, Apprentissage pour la conduite de systèmes (JFPDA). 2008, Metz, France
Last Checked
4 months ago
Abstract
In this paper, we introduce a generic and fresh model for distributed planning called "Distributed Planning Through Graph Merging" ({\sf DPGM}). This model unifies the different steps of the distributed planning process into a single step. Our approach is based on a planning graph structure for the agent reasoning and a CSP mechanism for the individual plan extraction and the coordination. We assume that no agent can reach the global goal alone. Therefore the agents must cooperate, {\it i.e.,} take in into account potential positive interactions between their activities to reach their common shared goal. The originality of our model consists in considering as soon as possible, {\it i.e.,} in the individual planning process, the positive and the negative interactions between agents activities in order to reduce the search cost of a global coordinated solution plan.
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