基于遗传算法的四旋翼无人机轨迹优化

A. Yauri, Abdulkadir M. Ahmad, M. I. Kamba
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引用次数: 0

摘要

近年来,无人驾驶飞行器(uav)技术受到了许多研究者的关注。这是由于其在民用应用方面的众多潜力。如何实现无人机的“感避”全能化,提高飞行器的安全、高效的飞行轨迹,是当前无人机研究的重点领域之一。因此,本文将采用优化技术对无人机飞行轨迹路径进行优化。选择的优化算法是遗传算法(GA),通过确定最短飞行路径和无障碍飞行路径来优化无人机的飞行轨迹,以节省飞行能量和时间。利用MATLAB和Simulink对该算法进行了仿真和评价。从实验结果来看,优化后的轨迹路径在距离和到达目标点所需的时间上都明显优于第一个随机生成的种群的路径。
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Trajectory Optimization of Quadrotor-UAV Drone Using Genetic Algorithm
Unmanned Aerial Vehicles (UAVs) Technology recently attracts attention of many researchers; this is due toits numerous potentialities in civil application. One of the key areas of interest by researches is how to achievea total talent of “Sense and Avoid” in the UAV which will enhance safe and efficient trajectory of the vehicle.This is why this paper is going to use an optimization technique to optimize trajectory path of the UAV flight.The chosen optimization algorithm is Genetic algorithm (GA) which is going to be use to optimize the trajectoryof UAV by determine the shortest path of flight as well as obstacle-free path in order to save energy and timeduring flight. MATLAB and Simulink are used to simulate as well as evaluate the algorithm. In the result fromthe experiment, it appeared that an optimized trajectory path is tremendously better than path from the firstrandomly generated population in term of distance covered as well as time taken before triumph the target pointfrom the initial point.
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