Joint Service Placement and Request Routing in Mobile Edge Computing Networks

Binbin Yuan, Songtao Guo, Quyuan Wang
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引用次数: 9

Abstract

Mobile edge computing (MEC) is envisioned as a prospective technology that supports latency-critical and computation-intensive applications by using storage and computation resources in network edges. The advantages of this technology are trapped in limited edge cloud resources, and one of the prime challenges is how to allocate available edge cloud resources to satisfy user requests. However, previous works usually optimize service (data& code) placement and request routing simultaneously within the same timescale, ignoring the fact that frequent service replacement will incur expensive operational expenses. In this paper, we jointly optimize service placement and request routing in the MEC network for data analysis applications, under the constraints of computation and storage resource. In particular, the Cloud Radio Access Network (C-RAN) architecture is applied to pool available resources and realize load balancing among edge clouds. In addition, we adopt a two timescale framework to reduce higher operating expenses caused by frequent cross-cloud service migration. Then, we develop a greedy-based approximation algorithm for service placement subproblem and a linear programming (LP) relaxation-based heuristic algorithm for request routing subproblem, respectively. Finally, the numerical results demonstrate that our proposed solution reaches 90% of the optimal performance in services homogeneous case and 76% in services heterogeneous case.
移动边缘计算网络中的联合服务布局和请求路由
移动边缘计算(MEC)被认为是一种有前景的技术,它通过使用网络边缘的存储和计算资源来支持延迟关键型和计算密集型应用。该技术的优势被限制在有限的边缘云资源中,如何分配可用的边缘云资源来满足用户的需求是主要的挑战之一。然而,以前的工作通常在同一时间范围内同时优化服务(数据和代码)的放置和请求路由,忽略了频繁的服务替换将产生昂贵的运营费用这一事实。在计算和存储资源的约束下,我们共同优化了MEC网络中用于数据分析应用的服务布局和请求路由。特别是采用云无线接入网(C-RAN)架构,集中可用资源,实现边缘云之间的负载均衡。此外,我们采用双时间尺度框架,以减少频繁跨云服务迁移带来的更高运营费用。然后,我们分别针对服务放置子问题开发了基于贪婪的近似算法,针对请求路由子问题开发了基于线性规划(LP)松弛的启发式算法。最后,数值结果表明,该方法在服务同构情况下达到最优性能的90%,在服务异构情况下达到最优性能的76%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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