基于信息素扩散蚁群算法的无人机动态路径规划

Bin Zhou, Yan Guo, Ning Li, Cuntao Liu
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引用次数: 1

摘要

由于动态不确定性因素存在于复杂的环境中,如飞行条件、可移动障碍物等突发威胁。实现无人机的实时路径规划是一个挑战。本文采用动态环境模型和信息素扩散蚁群优化(PDACO)方法解决无人机在动态环境下的实时路径规划问题。平移障碍法和随机障碍法可以有效地模拟动态环境。PDACO利用蚁群中信息素的扩散特性,在每次迭代后将信息素扩散到相邻的路径上,从而扩大了信息素的引导范围。当环境发生变化时,信息素扩散法可以快速规划新的路径,加快算法的收敛速度。仿真结果表明,所建立的动态环境模型符合实际情况。与四种算法相比,PDACO保证了无人机在环境变化时能够以更短的路径长度和计算时间优化出新的路径。该方法是可行和有效的。
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Dynamic Path Planning of UAV Based on Pheromone Diffusion Ant Colony Algorithm
Due to the dynamic uncertainty factors in a complex environment, such as flight conditions, movable obstacles and other sudden threats. It is a challenge to realize the real-time path planning of Unmanned Aerial Vehicles (UAV). In this paper, the method is proposed with a model of the dynamic environment and a method of pheromone diffusion ant colony optimization (PDACO) to solve the real-time path planning of UAV in a dynamic environment. The translational obstacle method and the random obstacle method can efficiently simulate the dynamic environment. PDACO takes advantage of pheromone diffusion characteristics in an ant colony, and diffuses the pheromones to adjacent paths after each iteration, thus expanding the guidance range of pheromones. When the environment changes, the pheromone diffusion method can quickly plan new paths and accelerate the convergence of the algorithm. Simulation results show that the dynamic environment model accords with the actual situation. Compared with four algorithms, PDACO ensures that the UAV can optimize a new path with shorter path length and computing time when environment changes. The proposed method is feasible and effective.
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