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Dense small cell clustering based on undirected weighted graph for local mobility management 被引量:1

Dense small cell clustering based on undirected weighted graph for local mobility management
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摘要 The concept of dense small cell has been recently emerged as a promising architecture that can significantly improve spectrum efficiency and system capacity. However, it brings frequent handover for user equipment (UE). Furthermore, this will bring a great deal of signaling overhead to the core network. Virtual technology has been received widespread attention for solving this problem. Its essence is to form virtual cells by clustering various terminals properly. The local mobility management proposed recently is based on the virtual technology. Therefore, the formation process of virtual cells is the basis for the research in local mobility management. So clustering scheme for dense small cell network has been studied in this paper, and a maximum benefit merging algorithm based on undirected weighted graph has been proposed. There are X2 interfaces between the cluster head and each of cluster members within the same cluster. The cluster heads manage the handover among cluster members acting as the local anchors. The proposed clustering scheme is useful for local mobility management. The simulation results show that the proposed clustering algorithm can decrease the signaling overhead more than 70% and 20% compared with the non-clustering algorithm and other clustering algorithms respectively. The concept of dense small cell has been recently emerged as a promising architecture that can significantly improve spectrum efficiency and system capacity. However, it brings frequent handover for user equipment (UE). Furthermore, this will bring a great deal of signaling overhead to the core network. Virtual technology has been received widespread attention for solving this problem. Its essence is to form virtual cells by clustering various terminals properly. The local mobility management proposed recently is based on the virtual technology. Therefore, the formation process of virtual cells is the basis for the research in local mobility management. So clustering scheme for dense small cell network has been studied in this paper, and a maximum benefit merging algorithm based on undirected weighted graph has been proposed. There are X2 interfaces between the cluster head and each of cluster members within the same cluster. The cluster heads manage the handover among cluster members acting as the local anchors. The proposed clustering scheme is useful for local mobility management. The simulation results show that the proposed clustering algorithm can decrease the signaling overhead more than 70% and 20% compared with the non-clustering algorithm and other clustering algorithms respectively.
出处 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2016年第5期32-39,共8页 中国邮电高校学报(英文版)
基金 supported by the National Natural Science Foundation of China (61572074) the Funding Project for Beijing Excellent Talents Training (2013D009006000002) the Foundation of Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services
关键词 mobility management dense small cell network HANDOVER CLUSTERING LTE-A mobility management, dense small cell network, handover, clustering, LTE-A
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