无人机移动边缘计算网络中的联合内容缓存、服务安置和任务卸载

Youhan Zhao;Chenxi Liu;Xiaoling Hu;Jianhua He;Mugen Peng;Derrick Wing Kwan Ng;Tony Q. S. Quek
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引用次数: 0

摘要

在本文中,我们考虑了一个支持无人机(UAV)的移动边缘计算(MEC)网络,其中部署了多架具有缓存和计算功能的无人机,以满足来自用户设备(ue)的异构内容和服务请求。为了全面表征我们所考虑的网络满足用户请求的能力,我们将内容缓存命中率和服务延迟收缩率的加权和定义为我们网络的平均体验质量(QoE),并将其作为性能指标。通过分析,我们展示了网络的平均QoE如何依赖于无人机上的内容缓存和服务放置决策,以及ue上的计算任务卸载决策,从而使我们能够在无人机缓存和计算能力的实际约束下制定平均QoE最大化问题。为了解决这一np困难问题,我们将其分解为两个子问题,即内容缓存和服务放置优化子问题和任务卸载优化子问题。为了有效地迭代求解这些子问题,提出了基于Gibbs抽样和匹配博弈的算法。通过数值结果验证了所提算法的有效性。与各种基准测试相比,我们证明了我们提出的算法可以显著提高我们所考虑的网络的平均QoE,特别是在无人机的缓存和计算资源有限的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Content Caching, Service Placement, and Task Offloading in UAV-Enabled Mobile Edge Computing Networks
In this paper, we consider an unmanned aerial vehicle (UAV)-enabled mobile edge computing (MEC) network, where multiple UAVs with caching and computation functionalities are deployed to satisfy the heterogeneous content and service requests from the user equipments (UEs). In order to comprehensively characterize the capability of our considered network in satisfying the UEs’ requests, we define the weighted sum of the content cache hit ratio and the service delay shrinkage ratio as the average quality-of-experience (QoE) of our network and adopt it as the performance metric. Through analysis, we show how the average QoE of our network is dependent on the content cache and service placement decisions at the UAVs, as well as the computation task offloading decisions at the UEs, thus enabling us to formulate an average QoE maximization problem, subject to practical constraints on the UAVs’ caching and computation capabilities. To solve this NP-hard problem, we decompose it into two sub-problems, namely, the content cache and service placement optimization sub-problem and the task offloading optimization sub-problem. Gibbs sampling-based and matching game-based algorithms are proposed to efficiently solve these sub-problems iteratively. Via numerical results, we validate the effectiveness of our proposed algorithms. Compared to various benchmarks, we demonstrate that our proposed algorithms can significantly improve the average QoE of our considered network, especially when the caching and computation resources of the UAVs are limited.
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