基于k - means++聚类和遗传算法的无人机投送规划

Sinuo Pan
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引用次数: 2

摘要

本文研究了无人机机队在配送场景下的最优调度问题。目标是构建一个计划,包括每架无人机的任务分配,路由时间表和无人机的数量。考虑的其他因素是单位能耗随无人机载荷的变化。为了实现这一目标,采用k -means++聚类方法为每架无人机指定任务区域,并采用遗传算法确定飞行路径。此外,无人机的数量分别由最小无人机数量和最小能耗两个考虑因素决定。
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UAV Delivery Planning Based on K-Means++ Clustering and Genetic Algorithm
This paper considers the optimized schedule for UAV fleets in the scenario of delivery. The target is constructing a plan including the mission allocation for each drone, the routing schedule and the number of drones. Additional factors been considered are the change of the unit energy consumption with the payload of the drone. To realize the goal, K-means++ clustering are applied to designate the mission area for each drone and genetic algorithm are adopted to make the flight path. Moreover, the number of drones are determined by two considerations respectively which are the minimum number of drones and the minimum energy consumption.
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