Development of an Algorithm for Reducing Signalling Overhead Cost in 5G Networks

Aman Sanwal, Shekhar Singh, P. M. Pradhan
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Abstract

The 5G mobile networks aim to accomplish the austere requirements on data rates, reliability, and connectivity. In order to achieve these objectives, heterogeneous radio access technologies are used. In order to use the technology efficiently, massive connectivity of devices has been proposed in 3GPP Release 15. In the stand alone architecture, small base stations are deployed without any dependency on LTE core network. Increase in the number of devices will lead to an increase in signalling overhead consisting of tracking area update and paging overhead. This paper proposes an approach to reduce the signalling cost using clustering algorithm. The base stations form clusters using the proposed algorithm, and act as static cluster heads. The clustering algorithm is used to connect different types of User Equipments (UEs), including the vehicles, machines and various stationary IoT devices. In addition, this paper also deals with a hybrid scenario which represents the unification of both the layers (LTE and NR) for the initial rollout of the 5G to fill the coverage gaps. Simulation results show that the proposed scheme provides better performance in terms of reduced energy consumption by the UEs.
一种降低5G网络信令开销的算法研究
5G移动网络旨在满足对数据速率、可靠性和连接性的严格要求。为了实现这些目标,采用了异构无线接入技术。为了有效地使用该技术,3GPP第15版提出了设备的大规模连接。在独立架构中,部署小型基站,而不依赖于LTE核心网。设备数量的增加将导致信令开销的增加,包括跟踪区域更新和分页开销。本文提出了一种利用聚类算法降低信令代价的方法。基站使用所提出的算法组成集群,并充当静态簇头。聚类算法用于连接不同类型的用户设备(ue),包括车辆,机器和各种固定物联网设备。此外,本文还讨论了一种混合场景,该场景代表了5G初始推出时两层(LTE和NR)的统一,以填补覆盖空白。仿真结果表明,该方案在降低终端能耗方面具有较好的性能。
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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