减小随机映射大小的快速探索随机树算法

Aphilak Lonklang, János Botzheim
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引用次数: 0

摘要

移动机器人已广泛应用于原材料输送、产品仓储运输等自动化工厂应用。路径规划算法已被提出,以产生一个可行的全局方法。路径结果必须没有障碍区域并且最短。在此之前,我们提出了一种改进的快速探索随机树(Improved RRT*)算法。该算法由可行映射的预处理步骤、路径生成的RRT*初级处理步骤和细菌突变算子和节点删除算子的后处理步骤组成。本文旨在通过减少整体计算时间来进一步提高改进的RRT*算法的性能。该方法通过删除使用过的节点来降低每次迭代后随机映射的复杂度。这样可以减少计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Rapidly-Exploring Random Tree Algorithm with Reduced Random Map Size
Mobile robots have been widely used in automated factory applications such as raw material delivery and product storage transportation. Path planning algorithms have been proposed to generate a feasible global approach. The path result must be free from obstacle regions and shortest. Previously we proposed an Improved Rapidly-Exploring Random Tree (Improved RRT*) algorithm. The algorithm consists of the pre-processing step for feasible mapping, primary processing with RRT* for path generating, and post-processing with Bacterial Mutation and Node Deletion operators. This paper aims to improve further the capability of the Improved RRT* algorithm by reducing the overall computation time. The proposed method reduces the complexity of the random map after each iteration by deleting the used nodes. In this way, the computational time could be reduced.
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