Hao Xu, Xiangrong Xu, Yan Li, Xiaosheng Zhu, Liming Jia, Dongqing Shi
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引用次数: 4
Abstract
The trajectory planning of Unmanned Aerial Vehicle (UAV) and Aerial Robots generally refers to a series of optimization problems. This paper presents a method of trajectory planning and design for UAV based on the A* algorithm. Using grids to process the trajectory path planning of UAV under the environment with presence of obstacles, and then search the shortest path from the initial point to the target point based on rasterized environment using A* algorithm. The simulation of trajectory planning is implemented in the Microsoft Visual C++ 6.0 developing environment. Through the simulation of trajectory planning, it can be proved that UAV can find the shortest path from the initial point to the target point based on A* algorithm.
无人机(UAV)和空中机器人的轨迹规划一般是指一系列优化问题。提出了一种基于a *算法的无人机轨迹规划与设计方法。利用网格对存在障碍物环境下无人机的轨迹路径规划进行处理,然后基于栅格化环境,利用A*算法搜索从初始点到目标点的最短路径。在Microsoft Visual c++ 6.0开发环境下实现了弹道规划仿真。通过轨迹规划仿真,证明了基于A*算法的无人机能够找到从初始点到目标点的最短路径。