Dynamic Path Optimization for Robot Route Planning

Ying Huang, Yingxu Wang, Omar A. Zatarain
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Abstract

Robot is an autonomous system that integrates advances AI technologies. This paper deals with the adaptive path planning and optimization problems for robots in dynamic environments. We propose a novel route planning method based on the maze representation of workplace layouts. We generate a universal path tree by a path optimization algorithm. Then, any given entrances and exits of target nodes can be reduced to a deterministic path searching problem. Our method can quickly determine the optimal path between any pair of entrance/exit nodes. The maze-based method provides an efficient and robust route planning solution for robots in real-time and dynamic workplaces. Experiments have demonstrated the effectiveness of the method beyond traditional heuristic technologies.
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机器人路径规划的动态路径优化
机器人是融合先进人工智能技术的自主系统。研究了动态环境下机器人的自适应路径规划与优化问题。提出了一种基于工作场所布局迷宫表示的路径规划方法。利用路径优化算法生成通用路径树。然后,任意给定的目标节点入口和出口都可以简化为确定性路径搜索问题。该方法可以快速确定任意一对入口/出口节点之间的最优路径。基于迷宫的方法为机器人在实时动态工作场所的路径规划提供了一种高效、鲁棒的解决方案。实验表明,该方法优于传统的启发式技术。
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