移动边缘计算中移动感知服务分配和迁移策略的跟踪驱动建模与验证

Kaustabha Ray, A. Banerjee
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引用次数: 2

摘要

最近,移动边缘计算(MEC)已经成为一种新的范例,允许低延迟访问部署在提供计算、存储和通信设施的边缘节点上的服务。供应商将他们的服务部署在MEC服务器上,以提高性能并减轻访问云服务时经常遇到的网络延迟。分配策略决定如何将移动用户的业务请求分配给MEC服务器。文献中已经提出了许多将用户服务请求绑定到路由中的附近边缘服务器的建议。然而,据我们所知,这些建议都没有对服务度量的质量提供定量的性能保证。实际上,不断变化的环境以及巨大的分配配置空间使得证明此类分配策略的性能保证成为一项具有挑战性的任务。为了解决这些问题,我们提出了一种跟踪驱动的方法来推导分配策略的正式模型,并执行定量验证以产生性能度量的概率保证。我们使用基准真实世界的MEC服务器和用户数据集,以及最近文献中的移动感知分配和迁移策略来验证我们的模型。实验结果表明,该模型在MEC系统服务分配绩效指标的定量推理中是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trace-driven Modeling and Verification of a Mobility-Aware Service Allocation and Migration Policy for Mobile Edge Computing
In recent times, Mobile Edge Computing (MEC) has emerged as a new paradigm allowing low-latency access to services deployed on edge nodes offering computation, storage and communication facilities. Vendors deploy their services on MEC servers to improve performance and mitigate network latencies often encountered in accessing cloud services. An allocation policy determines how to allocate service requests from mobile users to MEC servers. A number of proposals for binding user service requests to nearby edge servers enroute have been proposed in literature. However, none of these proposals, to the best of our knowledge, provide quantitative performance guarantees on the quality of service metrics. Indeed, the evolving environment, along with a large allocation configuration space makes proving performance guarantees for such allocation policies a challenging task. To address such issues, we propose a trace driven approach to derive a formal model of allocation policies and perform quantitative verification to produce probabilistic guarantees on performance metrics. We use benchmark real world MEC server and user datasets and a mobility aware allocation and migration policy from recent literature to validate our model. Experimental results show our model's effectiveness in quantitatively reasoning about service allocation performance metrics in MEC systems.
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