Deep Learning based User Slice Allocation in 5G Radio Access Networks

Salma Matoussi, Ilhem Fajjari, N. Aitsaadi, R. Langar
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引用次数: 10

Abstract

Network slicing is proposed as a new paradigm to serve the plethora of 5G services on a shared infrastructure. Within this context, a Radio Access Network (RAN) slice is considered as the proportion of physical spectrum resources to be served to third parties. Interestingly, 3GPP standardized options of RAN processing dis-aggregation into network functions while enabling their placement whether in distributed or centralized locations. The adoption of an end-to-end RAN slicing raises new challenges related to the allocation efficiency of joint radio, link and computational resources. To deal with the stringent latency requirements of 5G services, we propose, in this paper, a Deep Learning based approach for User-centric end-to-end RAN Slice Allocation scheme. It can decide in real-time, to jointly allocate the amount of radio resources and functional split for each end- user. Our proposal satisfies end-user's requirements in terms of throughput and latency, while minimizing the infrastructure deployment cost.
基于深度学习的5G无线接入网用户片分配
网络切片是在共享基础设施上为大量5G服务提供服务的一种新范式。在这种情况下,无线接入网(RAN)切片被认为是提供给第三方的物理频谱资源的比例。有趣的是,3GPP标准化了RAN处理分解为网络功能的选项,同时允许它们放置在分布式或集中式位置。端到端无线局域网切片的采用对联合无线电、链路和计算资源的分配效率提出了新的挑战。为了应对5G服务严格的延迟要求,本文提出了一种基于深度学习的以用户为中心的端到端RAN分片分配方案。它可以实时决定,为每个终端用户共同分配无线资源的数量和功能分割。我们的建议在吞吐量和延迟方面满足了最终用户的需求,同时最小化了基础设施部署成本。
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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