Lazy incremental search for efficient replanning with bounded suboptimality guarantees

Jaein Lim, Mahdi Ghanei, R. Connor Lawson, Siddhartha Srinivasa, Panagiotis Tsiotras
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Abstract

We present a lazy incremental search algorithm, Lifelong-GLS (L-GLS), along with its bounded suboptimal version, Bounded L-GLS (B-LGLS) that combine the search efficiency of incremental search algorithms with the evaluation efficiency of lazy search algorithms for fast replanning in problem domains where edge evaluations are more expensive than vertex expansions. The proposed algorithms generalize Lifelong Planning A* (LPA*) and its bounded suboptimal version, Truncated LPA* (TLPA*), within the Generalized Lazy Search (GLS) framework, so as to restrict expensive edge evaluations only to the current shortest subpath when the cost-to-come inconsistencies are propagated during repair. We also present dynamic versions of the L-GLS and B-LGLS algorithms, called Generalized D* (GD*) and Bounded Generalized D* (B-GD*), respectively, for efficient replanning with non-stationary queries, designed specifically for navigation of mobile robots. We prove that the proposed algorithms are complete and correct in finding a solution that is guaranteed not to exceed the optimal solution cost by a user-chosen factor. Our numerical and experimental results support the claim that the proposed integration of the incremental and lazy search frameworks can help find solutions faster compared to the regular incremental or regular lazy search algorithms when the underlying graph representation changes often.
保证有界次优化的高效重新规划的懒惰增量搜索
我们提出了一种懒惰增量搜索算法 Lifelong-GLS (L-GLS),及其有界次优版本 Bounded L-GLS (B-LGLS),它们结合了增量搜索算法的搜索效率和懒惰搜索算法的评估效率,可在边评估比顶点展开更昂贵的问题域中快速重新规划。所提出的算法在广义懒搜索(GLS)框架内概括了终身规划 A* (LPA*) 及其有界次优版本截断 LPA* (TLPA*),从而在修复过程中传播成本到成本不一致时,将昂贵的边评估限制在当前最短子路径上。我们还提出了 L-GLS 和 B-LGLS 算法的动态版本,分别称为广义 D* (GD*) 和有界广义 D* (B-GD*),用于非静态查询的高效重规划,专门为移动机器人导航而设计。我们证明了所提出的算法是完整和正确的,能找到保证不超过用户选择系数的最优解成本的解决方案。我们的数值和实验结果证明,当底层图表示经常变化时,与普通增量或普通懒搜索算法相比,所提出的增量和懒搜索框架的整合有助于更快地找到解决方案。
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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