OCTRA‐5G:基于渗透计算的5G任务调度和资源分配框架

Akashdeep Kaur, Rajesh Kumar, S. Saxena
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引用次数: 1

摘要

长期演进(LTE)移动技术提供高数据速率和低延迟。5G技术能够处理越来越多的物联网设备,并提供超低延迟、更高吞吐量和更高可靠性。移动边缘计算(MEC)是5G的关键技术,增强了实时处理能力,释放了核心网的负载,帮助实时处理数据,实现了高数据速率和低延迟的承诺。MEC用于有效地管理对近用户资源的服务。使用渗透计算,服务可以高效地调度和迁移。本文提出了OCTRA - 5G框架,通过将服务分离为微服务和宏服务,使用渗透计算(OC)有效地调度服务和分配资源。通过仿真,在10、20和30 gnb(基站)组上验证了结果。OCTRA‐5G在先到先得(FCFS)、优先调度(PS)和最短作业优先(SJF)算法上进行了测试。FCFS提供了更少的时间复杂度和更高的吞吐量。数值模拟结果表明,有OC比无OC平均提高66.921%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OCTRA‐5G: Osmotic computing based task scheduling and resource allocation framework for 5G
Long term evolution (LTE) mobile technology provides high data rate and low latency. 5G Technology is capable of handling the increasing number of IoT devices and provides ultra‐low latency, higher throughput, and higher reliability. Mobile edge computing (MEC) a key 5G technology strengthens the real‐time processing ability, releases the load on the Core Network, and helps in the real‐time processing of data, fulfilling the promise of high data rate and low latency. MEC is used to manage services efficiently to the near user resource. Using Osmotic Computing the services are efficiently scheduled and migrated. The work presented in this article proposes OCTRA‐5G Framework to effectively schedule services and allocate resources using Osmotic Computing (OC) by segregating the services into microservices and macroservices. The results are validated on the sets of 10, 20, and 30 gNBs (base stations) through simulation. OCTRA‐5G is tested on First Come First Serve (FCFS), Priority Scheduling (PS), and Shortest Job First (SJF) algorithm. FCFS provides less time complexity and higher throughput. The results presented using numerical simulations shows better performance by an average of 66.921% with OC than without OC.
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