增强MEC服务的可用性:基于cvar的计算卸载

Shengli Pan, Zhiyong Zhang, Tao Xue, Guangmin Hu
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引用次数: 1

摘要

移动边缘计算(MEC)使移动用户能够将其计算负载卸载到附近的边缘服务器上,并被视为集成在5G架构中,以支持各种低延迟应用程序和服务。但是,当计算资源被大量请求时,边缘服务器可能很快就会过载,并且无法及时处理所有接收到的计算负载。与大多数现有方案巧妙地指示过载的边缘服务器将计算负载转移到远程云不同,我们通过特别考虑网络链路故障的风险,利用了其他本地边缘服务器的备用计算资源。我们使用条件风险值(CVaR)的财务风险管理度量来衡量这种链路故障风险,并使用最小成本流(MCF)问题公式将其约束为卸载决策。数值结果验证了风险感知卸载方案提高了MEC服务的可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Availability for the MEC Service: CVaR-based Computation Offloading
Mobile Edge Computing (MEC) enables mobile users to offload their computation loads to nearby edge servers, and is seen to be integrated in the 5G architecture to support a variety of low-latency applications and services. However, an edge server might soon be overloaded when its computation resources are heavily requested, and would then fail to process all of its received computation loads in time. Unlike most of existing schemes that ingeniously instruct the overloaded edge server to transfer computation loads to the remote cloud, we make use of the spare computation resources from other local edge servers by specially taking the risk of network link failures into account. We measure such link failure risks with the financial risk management metric of Conditional Value-at-Risk (CVaR), and well constrain it to the offloading decisions using a Minimum Cost Flow (MCF) problem formulation. Numerical results validate the enhancement of the MEC service's availability by our risk-aware offloading scheme.
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