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An adaptive clustering approach for small cell in ultra-dense networks

机译:超密集网络中小型小区的自适应聚类方法

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As one of the key technique to realize the large network capacity in the fifth generation mobile communication networks (5G), ultra-dense networks (UDNs) is centralized deployment of small cell stations (SCSs) which is caused interference problem and complex network structure, hinder the application of existing radio resource management (RRM) and interference management (IM) scheme on UDNs directly. Clustered RRM and IM provides a feasibility mechanism to solve this problem. However, how to properly form SCS cluster has not been well studied. We believe that small cells clustering is an effective method to simplify the topology of ultra-dense network. The trend of clustering approach is lower complexity and user-centric. In this paper, we propose a user-centric adaptive small-cell clustering scheme based on improved K-means algorithm. Simulation results show that the proposed scheme can dynamic adjust the size and number of small cell clusters according to user's signal to interference plus noise ratio (SINR), and reduce the computational complexity in the clustering process effectively.
机译:作为在第五代移动通信网络(5G)中实现大网络容量的关键技术之一,超密集网络(UDN)是小型小区站(SCS)的集中部署,这引起了干扰问题和复杂的网络结构,直接阻碍了现有无线资源管理(RRM)和干扰管理(IM)方案在UDN上的应用。群集的RRM和IM提供了解决此问题的可行性机制。但是,如何正确地形成SCS集群尚未得到很好的研究。我们认为,小小区群集是简化超密集网络拓扑的有效方法。群集方法的趋势是较低的复杂性和以用户为中心。本文提出了一种基于改进的K均值算法的以用户为中心的自适应小小区聚类方案。仿真结果表明,该方案能够根据用户的信噪比动态调整小小区簇的大小和数目,有效降低了聚类过程的计算复杂度。

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