The evolution of the future beyond-5G/6G networks towards a service-aware network is based on network slicing technology. With network slicing, communication service providers seek to meet all the requirements imposed by the verticals, including ultra-reliable low-latency communication (URLLC) services. In addition, the open radio access network (O-RAN) architecture paves the way for flexible sharing of network resources by introducing more programmability into the RAN. RAN slicing is an essential part of end-to-end network slicing since it ensures efficient sharing of communication and computation resources. However, due to the stringent requirements of URLLC services and the dynamics of the RAN environment, RAN slicing is challenging. In this article, we propose a two-level RAN slicing approach based on the O-RAN architecture to allocate the communication and computation RAN resources among URLLC end-devices. For each RAN slicing level, we model the resource slicing problem as a single-agent Markov decision process and design a deep reinforcement learning algorithm to solve it. Simulation results demonstrate the efficiency of the proposed approach in meeting the desired quality of service requirements.
翻译:未来超越5G/6G网络的演变将超越5G/6G网络发展成一个有服务意识的网络,其基础是网络切片技术,而随着网络切片技术,通信服务提供商寻求满足纵向服务的所有要求,包括超可依赖的低纬度通信(URLLC)服务,此外,开放无线电接入网络(O-RAN)架构为灵活分享网络资源铺平了道路,在RAN中引入更多的可编程性。RAN切片是端对端网络切片的一个重要部分,因为它确保有效分享通信和计算资源。然而,由于URLLC服务的严格要求以及RAN环境的动态,RAN切片具有挑战性。在本篇文章中,我们提议基于O-RAN结构的两级RAN剪片方法,在URLC终端设备之间分配通信和计算RAN资源。对于每个RAN切片级别而言,我们将资源切除问题作为单一代理Markov决策过程和计算结果的模型,并设计一个深度加固学习算法,以便解决它。我们期望在满足拟议的服务要求方面的效率。