Sparse Decision Diagrams for SAT-based Compilation of Multi-Agent Path Finding (Extended Abstract)

Pavel Surynek
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引用次数: 0

Abstract

Multi-agent path finding (MAPF) represents a task of finding non-colliding paths for agents via which they can navigate from their initial positions to specified goal positions. Contemporary optimal solving algorithms include dedicated search-based methods, that solve the problem directly, and compilation-based algorithms that reduce MAPF to a different formalism for which an efficient solver exists. In this paper, we enhance the existing Boolean satisfiability-based (SAT) algorithm for MAPF via using sparse decision diagrams representing the set of candidate paths for each agent, from which the target Boolean encoding is derived, considering more promising paths before the less promising ones are taken into account. Suggested sparse diagrams lead to a smaller target Boolean formulae that can be constructed and solved faster while optimality guarantees of the approach are kept. Specifically, considering the candidate paths sparsely instead of considering them all makes the SAT-based approach more competitive for MAPF on large maps.
基于sat的多智能体寻径稀疏决策图(扩展摘要)
多智能体路径查找(Multi-agent path finding, MAPF)是一项为智能体寻找非冲突路径的任务,通过这些路径,它们可以从初始位置导航到指定的目标位置。当代最优求解算法包括专门的基于搜索的方法,直接解决问题,以及基于编译的算法,这些算法将MAPF简化为一种不同的形式,从而存在一个有效的求解器。在本文中,我们改进了现有的基于布尔满意度的MAPF算法,通过使用稀疏决策图来表示每个智能体的候选路径集,并从中导出目标布尔编码,在考虑不太有希望的路径之前考虑更有希望的路径。建议的稀疏图导致更小的目标布尔公式,可以更快地构建和求解,同时保持方法的最优性保证。具体来说,稀疏地考虑候选路径,而不是全部考虑,使得基于sat的方法在大型地图上对MAPF更具竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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