使用F2F通信的5G网络中的数据缓存和选择

I. A. Ridhawi, Nour Mostafa, Y. Kotb, M. Aloqaily, I. Abualhaol
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引用次数: 26

摘要

作为一项新兴技术,物联网有望利用分布在不同远程云上的计算和数据资源。雾计算通过将网络和云资源更靠近网络边缘来扩展云计算。随着云/雾系统中资源数量的增加,资源选择和分配效率的问题也随之增加。在本文中,我们介绍了一种雾对雾(F2F)数据缓存和选择方法,该方法允许物联网设备以更快,更有效的方式检索数据。所提出的解决方案基于使用多代理协作框架的数据缓存和选择策略。缓存是通过将云数据分解为一组文件,然后放入雾存储站点来实现的。选择过程基于运行时文件位置预测技术,该技术以日志文件的形式收集和维护雾数据存储库。当需要检索数据时,借助这些日志和以前成功的搜索查询进行预测,从而得出实际的运行时位置估计以及最佳雾选择。仿真结果显示,减少了数据检索延迟,使5G触觉互联网成为可能。此外,结果还显示,成功的文件命中率增加,从而减少了重复下载的次数。
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Data caching and selection in 5G networks using F2F communication
As an emergent technology the IoT promises to harness the computational and data resources distributed across different remote clouds. Fog computing extends cloud computing by bringing the network and cloud resources closer to the network edge. As the number of resources contributing to the cloud/fog system grows, so the problems associated with efficient and effective resource selection and allocation. In this paper, we introduce a fog-to-fog (F2F) data caching and selection method, which allows IoT devices to retrieve data in a faster and more efficient way. The proposed solution is based on a data caching and selection strategy using a multi-agent cooperation framework. Caching is achieved by decomposing cloud data into a set of files and then placed into fog storage sites. The selection process is based on a run-time file location prediction technique, which collects and maintains a repository of fog data in the form of log files. When data needs to be retrieved, prediction is made with the aid of these logs and previous successful search queries resulting in realistic run-time location estimates as well as best fog selection. Simulation results showcase the reduced data retrieval latency that enable tactile Internet in 5G. Additionally, results show increased successful file hit ratio leading to a reduced number of repeated downloads.
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