无人机辅助5G网络中的自适应边缘缓存

Gaoxiang Wu, Yiming Miao, B. Alzahrani, A. Barnawi, Ahmad Alhindi, Min Chen
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引用次数: 5

摘要

具有通信、计算和存储能力的无人机(uav)具有很高的机动性。基于这一优势,它可以将服务推得离用户更近。我们的研究小组正致力于实现物联网(IoT)支持的大规模人群管理平台,该平台采用5G技术,促进无人机和传感器网络之间的网络连接。在这样一个高度动态的环境中,物联网设备、用户和无人机是决定缓存策略的关键因素。由于无人机电池的限制和无人机集群密度的变化,环境具有高度动态的特征。然而,现有的无人机缓存策略没有同时考虑用户和无人机的变化。为此,本文提出了5G网络中三层无人机缓存架构,实现对用户和无人机动态变化的分层适应。在此基础上,提出了一种双动态自适应缓存(DDAC)算法。DDAC算法分为用户自适应和无人机自适应两部分。在用户自适应方面,设计了用户自适应的无人机轨迹模型,保证了无人机的传输效率。针对无人机自适应问题,在认知中心层设计并部署了一种基于贪心算法的无人机自适应缓存模型。无人机可以根据集群密度动态调整缓存策略。最后,实验结果证明,与现有无人机缓存模型相比,本文提出的无人机自适应缓存模型在缓存命中率方面具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Edge Caching in UAV-assisted 5G Network
Unmanned aerial vehicles (UAVs) with communication, computing, and storage capabilities have high mobility. Based on this advantage, it can push the service closer to the user. Our research group is concerned with implementing the Internet of Things (IoT) enabled massive crowd management platform that employs 5G to facilitate network connectivity among the UAV and sensory networks. In such a highly dynamic environment, IoT devices, users, and UAVs are the key factors to determine the caching strategies. Due to the limitations of drone batteries and changes in UAV cluster density, the environment is characterized as highly dynamic. However, the existing UAV caching strategy does not consider both the changes of the users and UAVs. Therefore, this paper proposes a three-layer UAV cache architecture in 5G network to achieve hierarchical adaptation to the dynamic changes of users and UAVs. Based on this architecture, we propose a dual dynamic adaptive caching(DDAC) algorithm. The DDAC algorithm is divided into two parts: user adaptation and UAV adaptation. For user adaptation, we designed a user-adaptive UAV trajectory model, which ensures the transmission efficiency of the UAV. For UAV adaptation, we designed and deployed a UAV-adaptive cache model based on a greedy algorithm in the cognitive center layer. The UAV can dynamically adjust the caching strategy according to the cluster density. Finally, the results of the experiment prove that our proposed UAV adaptive cache model has better performance in the cache hit ratio compared with the existing UAV cache model.
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