Hyperbolic K-means for traffic-aware clustering in cloud and virtualized RANs

被引:1
|
作者
Djeddal, Hanane [1 ]
Touzari, Liticia [1 ]
Giovanidis, Anastasios [1 ]
Phung, Chi-Dung [2 ]
Secci, Stefano [2 ]
机构
[1] Sorbonne Univ, CNRS LIP6, 4 Pl Jussieu, F-75252 Paris 05, France
[2] Cnam, Cedric, 292 Rue St Martin, F-75003 Paris, France
关键词
C-RAN; vRAN; O-RAN; SD-RAN; K-means; Clustering; Hyperbolic geometry; Poincare half-plane; C-RAN; NETWORK;
D O I
10.1016/j.comcom.2021.06.021
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
As the internet and connected objects gain more and more in popularity, serving the ever-increasing data traffic becomes a challenge for the mobile operators. The traditional cellular radio access network (RAN), where each base station is co-located with its own processing unit and is responsible for a specific geographic area, has evolved first with the so-called Cloud RAN (C-RAN), and is currently undergoing further architectural evolution under the virtualized RAN (vRAN), Software-Defined RAN (SD-RAN), and Open RAN (O-RAN) architectures. In all these versions, the data processing units can be dynamically centralized into a pool and shared between several base stations, enlarging the geographical view for scheduling and resource allocation algorithms. For instance, resource utilization is improved by avoiding resource idling during off-peak hours. C-RAN and vRAN gains depend strongly on the clustering scheme of radio units (RRHs and RUs). In this paper, we propose a novel radio clustering algorithm that takes into account both the traffic demand and the position of stations, by using the hyperbolic distance in 3-dimensions. We introduce a modified K-means clustering algorithm, called Hyperbolic K-means, and show that this generates geographically compact RU clusters with traffic charge equally shared among them. Application of our algorithm on real-world mobile data traffic, collected from the cities of Nantes and Lille in France, shows an increase in resource utilization by 25%, and a reduction in deployment cost by 15%, compared to the standard RAN. Furthermore, the performance of our Hyperbolic K-means algorithm is compared extensively against alternative C-RAN clustering proposals from the literature and is shown to outperform them, in resource utilization as well as in cost reduction.
引用
收藏
页码:258 / 271
页数:14
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