Enabling Deterministic Tasks with Multi-Access Edge Computing in 5G Networks

IEEE Communications Magazine(2022)

引用 4|浏览31
暂无评分
摘要
Deterministic executions of computation-intensive and delay-sensitive tasks are vital for realizing Industry 4.0. Multi-access edge computing (MEC) enables critical tasks to be offloaded to the network edge for quickly responding and processing tasks locally. However, during workload peaks at the resource-limited edge, the best effort IP forwarding in the typical network architecture incurs long-tail latency at both the access and interconnection networks of MEC systems. The long-tail latency results in strict service level agreements (SLAs) unable to be guaranteed in end-to-end communication. In this article, we propose a task deterministic network (TDN) architecture that provides communication with bounded low latency and zero jitter for critical tasks among MEC systems. In TDN, the cross-domain collaboration mechanisms of the layer 2/layer 3 deterministic networking and 5G are jointly designed to eliminate the long-tail latency in typical MEC system networks. In addition, we design a seamless working scheme for the time-sensitive networking controller, the MEC orchestrator, and other coordinators to enable edge collaboration and global deterministic forwarding. Moreover, the main functions of TDN are detailed, including clock synchronization, network slicing, cycle mapping, and multi-layer collaboration. Finally, we present simulation results to substantiate the performance of TDN for accommodating critical service flows among MEC systems.
更多
查看译文
关键词
resource limited edge,time sensitive networking controller,multilayer collaboration,network slicing,global deterministic forwarding,edge collaboration,MEC orchestrator,typical MEC system networks,TDN,task deterministic network architecture,end-to-end communication,strict service level agreements,long tail latency,MEC systems,interconnection networks,typical network architecture,network edge,delay sensitive tasks,5G networks,multiaccess edge computing
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要