利用蛇形模型减少机器人路径规划中的遍历空间

Kaushlendra Sharma, R. Doriya
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引用次数: 4

摘要

机器人路径规划是机器人从起点到终点的最优无障碍路径规划的一个重要方面。在遍历过程中获得最优的无障碍路径是机器人技术的核心研究问题。为了解决这个研究问题,过去提出并实施了几种技术,并且仍然在进行大量的工作。一些著名的路径规划算法有${A}^{*}$、Probabilistic Roadmap Planner (PRM)、rapid Exploring Random Tree (RRT)和RRT Smooth。从根本上说,任何路径规划算法都需要对整个构型空间进行探索,以寻找最优且无障碍的路径,这增加了遍历的时间和精力。然而,可以有效地对整个构型空间进行探索,从而提高路径规划算法的性能。本文讨论了使用Snake模型作为路径规划算法的第一步,通过减少在构型空间中的遍历来有效地为机器人找到最优和无障碍路径。已经进行了几个实验来证明所提出的设置的有效性。在实验中,将Snake模型与一些标准算法如${A}^{*}$、PRM、RRT和RRT Smooth一起应用,其中路径长度、No. 1、No. 3等参数动作和时间是用来记录表演的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Traverse Space in Path Planning using Snake Model for Robots
Path planning for robots is one of the important aspects of robots where they need to get an optimal and obstacle-free path from source to destination. Getting an optimal and obstacle-free path, while traversing is the core research issue in robotics. To address this research issue, several techniques were proposed and implemented in the past, and still, a good amount of work is being carried on. Some well-known algorithms for path planning are ${A}^{*}$, Probabilistic Roadmap Planner (PRM), Rapidly Exploring Random Tree (RRT) and RRT Smooth. Fundamentally, to find an optimal and obstacle-free path, any path planning algorithms needs to explore the whole configuration space, which increases traversing time and efforts. However, the exploration of the whole configuration space can be done efficiently, which result in improving the performance of the path planning algorithms. This paper addresses the use of Snake Model as a preliminary step to path planning algorithms to find optimal and obstacle-free paths for robots efficiently by reducing the traversing in configuration space. Several experiments have been carried out to show the effectiveness of the proposed setup. In the experiments, the Snake model has been applied along with some standard algorithms such as ${A}^{*}$, PRM, RRT and RRT Smooth, where the parameters such as path length, No. of Moves and Time taken are used to record the performance.
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