DRL-based Service Migration for MEC Cloud-Native 5G and beyond Networks

Theodoros Tsourdinis, N. Makris, S. Fdida, T. Korakis
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Abstract

Multi-access Edge Computing (MEC) has been considered one of the most prominent enablers for low-latency access to services provided over the telecommunications network. Nevertheless, client mobility, as well as external factors which impact the communication channel can severely deteriorate the eventual user-perceived latency times. Such processes can be averted by migrating the provided services to other edges, while the end-user changes their base station association as they move within the serviced region. In this work, we start from an entirely virtualized cloud-native 5G network based on the OpenAirInterface platform and develop our architecture for providing seamless live migration of edge services. On top of this infrastructure, we employ a Deep Reinforcement Learning (DRL) approach that is able to proactively relocate services to new edges, subject to the user’s multi-cell latency measurements and the workload status of the servers. We evaluate our scheme in a testbed setup by emulating mobility using realistic mobility patterns and workloads from real-world clusters. Our results denote that our scheme is capable sustain low-latency values for the end users, based on their mobility within the serviced region.
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基于drl的MEC云原生5G及以上网络的业务迁移
多访问边缘计算(MEC)被认为是电信网络上提供的服务的低延迟访问的最重要的推动者之一。然而,客户机移动性以及影响通信通道的外部因素可能会严重恶化用户感知到的最终延迟时间。当终端用户在服务区域内移动时更改其基站关联时,可以通过将所提供的服务迁移到其他边缘来避免此类过程。在这项工作中,我们从基于OpenAirInterface平台的完全虚拟化的云原生5G网络开始,开发我们的架构,以提供边缘服务的无缝实时迁移。在此基础设施之上,我们采用深度强化学习(DRL)方法,能够根据用户的多单元延迟测量和服务器的工作负载状态,主动将服务重新定位到新的边缘。我们通过使用真实的迁移模式和来自真实集群的工作负载来模拟迁移,从而在测试平台设置中评估我们的方案。我们的结果表明,基于终端用户在服务区域内的移动性,我们的方案能够为终端用户维持低延迟值。
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