UAV-Clustering: Cluster head selection and update for UAV swarms searching with unknown target location

Haiyan Li, Bo Zhang, Sha Qin, Jinlin Peng
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引用次数: 2

Abstract

UAV swarms based on cooperative communication networks are widely used in many fields, which have the advantages of high mobility, high flexibility and low cost. However, UAVs face limited spectrum resources in a specific area and may interfere with primary users. Effective communication management between UAVs is a challenging problem. There-fore, this paper proposes a UAV clustering method based on the improved cluster head selection weight, which provides an effective management for the communication between UAVs and improves the efficiency of data collection. The proposed algorithm employs a new cluster head selection strategy based on the searched targets and available channel resources. Moreover, we analyze the weight factors of UAVs in flight and communication energy consumption. Considering the decreasing the member of the UAV clusters, we also design a maintenance strategy to improve the degree of data sharing in the cluster. The experimental results show that, compared with the traditional UAV clustering methods, the proposed method can effectively improve the network management for communication resources, reduce the collision and interference rate with the primary user by 25%, shorten the time required to fully acquire multi-target point data for the first time by 9%, and increase the amount of target point data collected by 26%.
无人机聚类:未知目标位置下无人机群搜索的簇头选择与更新
基于协作通信网络的无人机群具有高机动性、高灵活性和低成本等优点,广泛应用于许多领域。然而,无人机在特定区域面临有限的频谱资源,并可能干扰主要用户。无人机之间的有效通信管理是一个具有挑战性的问题。因此,本文提出了一种基于改进簇头选择权值的无人机聚类方法,为无人机之间的通信提供了有效的管理,提高了数据采集效率。该算法采用了一种基于搜索目标和可用信道资源的簇头选择策略。此外,还分析了无人机在飞行和通信能耗方面的权重因素。考虑到无人机集群成员的减少,设计了维护策略以提高集群内数据的共享程度。实验结果表明,与传统的无人机聚类方法相比,所提方法可有效提高对通信资源的网络管理,与主用户的碰撞和干扰率降低25%,首次充分获取多目标点数据所需时间缩短9%,目标点数据采集量增加26%。
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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