Multipath Adaptive A*: Factors That Influence Performance in Goal-Directed Navigation in Unknown Terrain
Abstract
Incremental heuristic search algorithms are a class of heuristic search algorithms applicable to the problem of goal-directed navigation. D* and D*Lite are among the most well-known algorithms for this problem. Recently, two new algorithms have been shown to outperform D*Lite in relevant benchmarks: Multi-Path Adaptive A* (MPAA*) and D*ExtraLite. Existing empirical evaluations, unfortunately, do not allow to obtain meaningful conclusions regarding the strengths and weaknesses of these algorithms. Indeed, in the paper introducing D*ExtraLite, it is shown that D*Lite outperforms MPAA* in benchmarks in which the authors of MPAA* claim superiority over D*Lite. The existence of published contradictory data unfortunately does not allow practitioners to make decisions over which algorithm to use given a specific application. In this paper, we analyze two factors that significantly influence the performance of MPAA*, explaining why it is possible to obtain very different results depending on such factors. We identify a configuration of MPAA* which, in the majority of the benchmark problems we use, exhibits superior performance when compared to both D*Lite and D*ExtraLite. We conclude that MPAA* should be the algorithm of choice in goal-directed navigation scenarios in which the heuristic is accurate, whereas D*ExtraLite should be preferred when the heuristic is inaccurate.
Más información
Título según WOS: | Multipath Adaptive A*: Factors That Influence Performance in Goal-Directed Navigation in Unknown Terrain |
Título de la Revista: | IEEE ACCESS |
Volumen: | 8 |
Editorial: | IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC |
Fecha de publicación: | 2020 |
Página de inicio: | 116724 |
Página final: | 116732 |
DOI: |
10.1109/ACCESS.2020.3003344 |
Notas: | ISI |