Dynamic Path Planning Based on Improved D* Algorithms of Gaode Map

Hu Huang, Peng Huang, Sha Zhong, Tianyao Long, Songmin Wang, Enchao Qiang, Ya Zhong, Lei He
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引用次数: 11

Abstract

To solve the problem of long-distance path planning for outdoor robots, an improved $D^{\ast}$ algorithm combing with Gaode map based on vector model is proposed. Specifically, the global static path to the target point is planned through the Gaode Map Open Platform, and is divided into path sub-nodes. The dynamic $D^{\ast}$ algorithm of heuristic function h(n) is improved under the vector model, and the long-distance path planning is realized by node iterations. The simulation is carried out on Gazebo and Rviz platforms. Results show that compared with the traditional $D^{\ast}$ algorithm, the running time of the robot is reduced by 32.8%, the number of corners is reduced by 64.6%, the number of dead zones is reduced by 64.3%, and the success rate of the planned path to the target point is greatly improved, which has high feasibility.
基于改进D*算法的高德地图动态路径规划
为解决户外机器人长距离路径规划问题,结合基于矢量模型的高德地图,提出了一种改进的$D^{\ast}$算法。具体而言,通过高德地图开放平台规划到目标点的全局静态路径,并将其划分为路径子节点。在矢量模型下改进启发式函数h(n)的动态$D^{\ast}$算法,通过节点迭代实现长距离路径规划。仿真在Gazebo和Rviz平台上进行。结果表明,与传统的$D^{\ast}$算法相比,机器人的运行时间缩短了32.8%,拐角数减少了64.6%,死区数减少了64.3%,规划路径到达目标点的成功率大大提高,具有较高的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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