Lifelong Planning A∗
作者:
摘要
Heuristic search methods promise to find shortest paths for path-planning problems faster than uninformed search methods. Incremental search methods, on the other hand, promise to find shortest paths for series of similar path-planning problems faster than is possible by solving each path-planning problem from scratch. In this article, we develop Lifelong Planning A∗ (LPA∗), an incremental version of A∗ that combines ideas from the artificial intelligence and the algorithms literature. It repeatedly finds shortest paths from a given start vertex to a given goal vertex while the edge costs of a graph change or vertices are added or deleted. Its first search is the same as that of a version of A∗ that breaks ties in favor of vertices with smaller g-values but many of the subsequent searches are potentially faster because it reuses those parts of the previous search tree that are identical to the new one. We present analytical results that demonstrate its similarity to A∗ and experimental results that demonstrate its potential advantage in two different domains if the path-planning problems change only slightly and the changes are close to the goal.
论文关键词:A∗,Continual planning,Heuristic search,Heuristic search-based planning,Incremental search,Lifelong planning,Plan reuse,Replanning,Symbolic STRIPS-style planning
论文评审过程:Received 15 April 2002, Revised 9 October 2003, Available online 12 February 2004.
论文官网地址:https://doi.org/10.1016/j.artint.2003.12.001