无人物流车辆全局路径规划的改进A-star算法研究

Liu Jianqin, Guo Xiao
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引用次数: 0

摘要

针对无人物流车辆全局路径规划过程中精度难以提高、运行时间长、行驶稳定性差等问题,本文对地图构建、获取节点模式、扩展节点模式进行了改进。首先,利用道路节点代替障碍物节点构建地图,减少了搜索次数和搜索时间;其次,在野外收集UTM节点构建散点图而不是网格图,解决了传统A-star算法中网格精度与路径精度正相关导致的高精度下搜索时间长问题。最后,利用k近邻扩展子节点取代九网格法,提高了Astar算法的路径精度,减少了搜索时间,提高了无人物流车辆的行驶稳定性。本文以天津某智能汽车研发公司的无人物流车实验平台为基础,利用本文提出的算法在27800平方米的指定区域内进行全局路径规划。实验结果表明,公分级(路径节点的10位有效数字)搜索次数减少到765次。与网格地图下的A-Star算法相比,该算法的搜索效率降低了99.88%,搜索时间从41884秒缩短到小于2s。同时,通过改变k的值,进行多次对照实验,比较各组节点的数量和距离。最后,当k = 5,节点数为117,节点间距离为0.5 ~ 2m时,无人物流车可以连续稳定运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on improved A-star algorithm for global path planning of unmanned logistics vehicles
Global path planning process of unmanned logistics vehicles, such as difficulty in improving accuracy, long operation time, and poor driving stability, this paper improves map construction, acquisition node mode, and expansion node mode. Firstly, road nodes instead of obstacle nodes are used in map construction so that the search times and search time are reduced. Secondly, UTM nodes are collected in the field to construct scatter maps instead of grid maps, which solves the problem of long searching time under high precision caused by the positive correlation between grid accuracy and path accuracy in the traditional A-star algorithm. Finally, the k- nearest neighbor is used to expand the sub-nodes instead of the nine-grid method to improve the path accuracy of the Astar algorithm, reduce the search time, and improve the driving stability of unmanned logistics vehicles. Based on the unmanned logistics vehicle experimental platform of an intelligent vehicle research and development company in Tianjin, this paper uses the proposed algorithm to carry out global path planning in a specified area of 27,800 square meters. The experimental results show that the centimeter- level (10 significant digits of the path node) searches were reduced to 765. Compared with the A-Star algorithm under the grid map, it is reduced by 99.88% and the search time was reduced from 41884s to less than 2s. At the same time, by changing the value of k, several controlled experiments were conducted to compare the number and distance of nodes in each group. Finally, when k is 5, the number of nodes is 117, and the distance between nodes is 0.5 to 2m, the unmanned logistics vehicle can run continuously and stably.
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