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Energy-efficient unmanned aerial vehicle scanning approach with node clustering in opportunistic networks

机译:能源有效的无人空中飞行器扫描方法,在机会网络中的节点聚类

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摘要

The opportunistic networks are challenging due to their inherent characteristics of intermittent and unreliable communication between nodes. In order to alleviate the communication issues, the unmanned aerial vehicles (UAVs) can be used for delivering packets within the opportunistic networks.This paper investigates how to leverage the UAVs in Unmanned Aerial Vehicle aided Opportunistic Networks (UAON). The UAVs are considered responsible for relaying the messages generated by the nodes on the ground. The simulation study is conducted on the real-world datasets of the nodes moving around Orlando and Korea Advanced Institute of Science & Technology (KAIST). Our proposed approach, State-based Campus Routing (SCR) with Density-based spatial clustering of applications with noise (DBSCAN), meander, random, and random spiral scanning approaches, as well as SCR and Epidemic protocols without UAV usage, have been evaluated on both datasets. The simulation metrics included the success rate, the message delay, the number of packets sent, and the distance traveled by the UAVs. SCR with DBSCAN and meander scan approaches were also tested with two UAVs using the Orlando dataset. Furthermore, spiral density and message creation frequency parameters were evaluated for SCR with DBSCAN protocol on North Carolina State University (NCSU) dataset. The simulation results showed improvements in terms of message delay and success rate when the UAVs were used in an opportunistic network setting. The proposed approach showed around 12% less total number of packets sent by the UAVs and the nodes. Similarly, the message delay distributions of the SCR with the DBSCAN achieve 90% of the message delay results, whereas the message delay distributions of random scanning form only 70% in less than an hour.
机译:由于节点之间的间歇性和不可靠通信的固有特征,机会主义网络是挑战性的。为了减轻沟通问题,无人驾驶航空公司(无人机)可用于在机会主义网络内提供数据包。本文调查如何利用无人机空中车辆辅助机会网络(UAON)中的无人机。无人机被认为是负责在地上的节点生成的消息中继。仿真研究是在奥兰多和韩国科学技术研究所(Kaist)周围的节点的现实世界数据集上进行。我们所提出的方法,具有噪声(DBSCAN),曲折,随机和随机螺旋扫描方法的基于密度的空间聚类,以及没有UAV使用的SCR和流行协议的基于密度的空间聚类在两个数据集上。仿真指标包括成功率,消息延迟,发送的数据包数,以及UAV的距离。 SCR使​​用DBSCAN和蜿蜒的扫描方法也使用奥兰多数据集进行了两个无人机测试。此外,对北卡罗来纳州立大学(NCSU)数据集的DBSCAN协议评估了螺旋密度和消息创建频率参数。仿真结果显示了在机会网络设置中使用过滤器时的消息延迟和成功率方面的改进。所提出的方法显示了无人机和节点发送的少12%的数据包总数。类似地,与DBSCAN的SCR的消息延迟分布达到消息延迟结果的90%,而随机扫描的消息延迟分布在不到一小时内仅为70%。

著录项

  • 来源
    《Computer Communications 》 |2020年第9期| 76-85| 共10页
  • 作者单位

    Univ Cent Florida Dept Comp Sci Orlando FL 32816 USA;

    Univ Cent Florida Dept Comp Sci Orlando FL 32816 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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