...
首页> 外文期刊>Intelligent and Converged Networks >An intelligent self-sustained RAN slicing framework for diverse service provisioning in 5G-beyond and 6G networks
【24h】

An intelligent self-sustained RAN slicing framework for diverse service provisioning in 5G-beyond and 6G networks

机译:一个聪明的自我维持的切片多样化的服务配置的框架5 g-beyond 6 g网络

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Network slicing is a key technology to support the concurrent provisioning of heterogeneous Quality of Service (QoS) in the 5th Generation (5G)-beyond and the 6th Generation (6G) networks. However, effective slicing of Radio Access Network (RAN) is very challenging due to the diverse QoS requirements and dynamic conditions in the 6G networks. In this paper, we propose a self-sustained RAN slicing framework, which integrates the self-management of network resources with multiple granularities, the self-optimization of slicing control performance, and self-learning together to achieve an adaptive control strategy under unforeseen network conditions. The proposed RAN slicing framework is hierarchically structured, which decomposes the RAN slicing control into three levels, i.e., network-level slicing, next generation NodeB (gNodeB)-level slicing, and packet scheduling level slicing. At the network level, network resources are assigned to each gNodeB at a large timescale with coarse resource granularity. At the gNodeB-level, each gNodeB adjusts the configuration of each slice in the cell at the large timescale. At the packet scheduling level, each gNodeB allocates radio resource allocation among users in each network slice at a small timescale. Furthermore, we utilize the transfer learning approach to enable the transition from a model-based control to an autonomic and self-learning RAN slicing control. With the proposed RAN slicing framework, the QoS performance of emerging services is expected to be dramatically enhanced.
机译:网络分割是一个关键的技术支持并发提供异构质量在第五代的服务(QoS)(5克)为这场战争和第六代(6克)网络。然而,有效的电台访问切片网络(跑)是非常具有挑战性的因不同的QoS需求和动态条件在6 g网络。自我维持的跑切片框架,它集成网络的自我管理资源与多个粒度,自我优化的分段控制性能,实现一个自适应和自学习在一起控制策略下的不可预见的网络条件。等级结构,分解运行控制划分为三个层次,即网络级切片,下一代NodeB(gNodeB)水平切片,和包调度水平切片。资源被分配到每个gNodeB大时间表和资源粒度粗。gNodeB-level,每个gNodeB调整配置单元中每个片的大时间尺度。每个gNodeB分配无线资源分配在每个网络用户在一个小片时间表。学习方法使的过渡基于模型的自主和控制自学了切控制。提出了分段框架,QoS预计新兴服务的性能显著增强。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号