结合概率抽样技术和简单启发式方法求解动态路径规划问题

Nicolas A. Barriga, M. Solar, Mauricio Araya-López
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引用次数: 1

摘要

概率抽样方法已成为解决单次路径规划问题的常用方法。特别是快速探索随机树(RRTs)在解决高维问题方面非常有效。尽管已经提出了几种RRT变体来解决动态重新规划问题,但这些方法仅在变化不频繁的环境中表现良好。本文结合多阶段概率算法中的简单技术,解决了动态路径规划问题。该算法使用RRTs作为初始解,通知局部搜索来修复不可行路径,并使用简单的贪婪优化器。该算法能够识别本地搜索是否卡住,并随后重新启动RRT。我们表明,与动态RRT变体相比,这种简单技术的组合提供了对高度动态环境的更好响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining a Probabilistic Sampling Technique and Simple Heuristics to Solve the Dynamic Path Planning Problem
Probabilistic sampling methods have become very popular to solve single-shot path planning problems. Rapidly-exploring Random Trees (RRTs) in particular have been shown to be very efficient in solving high dimensional problems. Even though several RRT variants have been proposed to tackle the dynamic replanning problem, these methods only perform well in environments with infrequent changes. This paper addresses the dynamic path planning problem by combining simple techniques in a multi-stage probabilistic algorithm. This algorithm uses RRTs as an initial solution, informed local search to fix unfeasible paths and a simple greedy optimizer. The algorithm is capable of recognizing when the local search is stuck, and subsequently restart the RRT. We show that this combination of simple techniques provides better responses to a highly dynamic environment than the dynamic RRT variants.
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