社区检测在移动网络中的应用:迈向下一代蜂窝网络的数据驱动设计

Ayman Gaber;Nashwa Abdelbaki;Tamer Arafa
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引用次数: 0

摘要

除了降低运营成本的压力越来越大之外,现有的无线电接入网络(RAN)还面临着许多挑战,以满足不同移动应用程序非常严格的速度和延迟要求。RAN的创新和发展已经加速,以应对这些挑战,并定义下一代移动网络应该是什么样子。机器学习(ML)和人工智能(AI)驱动的创新在RAN领域的作用正在加强,并吸引了大量关注,以解决许多具有挑战性的问题。本文综述了RAN网络基站(BS)集群及其在文献中的应用。本文还演示了如何利用社区检测算法来理解RAN中潜在的社区结构。通过调整现有的社区检测算法,解决了根据移动模式将一组BS静态划分为TA的问题,开发了一种新的跟踪区域框架。最后,使用开罗密集城市地区的实时网络数据集来评估与其他聚类技术相比,如何使用所开发的框架更有效地划分网络的这一部分。结果表明,新方法节省了高达34.6%的TA间信令开销,超过了其他传统的聚类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Community Detection Applications in Mobile Networks: Towards Data-Driven Design for Next Generation Cellular Networks
The existing radio access network (RAN) is facing many challenges to meet the very strict speed and latency requirements by different mobile applications in addition to the increasing pressure to reduce operating cost. Innovation and development in RAN have been accelerated to tackle these challenges and to define how next generation mobile networks should look like. The role of machine learning (ML) and artificial intelligence (AI) driven innovations within the RAN domain is strengthening and attracting lots of attention to tackle many of the challenging problems. In this paper we surveyed RAN network base stations (BSs) clustering and its applications in the literature. The paper also demonstrates how to leverage community detection algorithms to understand underlying community structures within RAN. Tracking areas (TAs) novel framework was developed by adapting existing community detection algorithm to solve the problem of statically partitioning a set of BSs into TA according to mobility patterns. Finally, live network dataset in dense urban part of Cairo is used to assess how the developed framework is used to partition this part of the network more efficiently compared to other clustering techniques. Results obtained showed that the new methodology saved up to 34.6% of inter TA signaling overhead and surpassing other conventional clustering algorithms.
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