异构云无线接入网中联合波束形成和聚类的一种先进移动感知算法

D. Ha, L. Boukhatem, Megumi Kaneko, Steven Martin
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引用次数: 9

摘要

异构云无线接入网(H-CRANs)是将云计算集成到异构网络(HetNets)中的5G系统的一种有前途的经济高效的架构。本文考虑下行链路H-CRAN的联合波束形成和聚类(用户对远程无线电头(RRH)关联)问题,以解决前传链路容量和每RRH功率约束下的和速率最大化问题。主要目标是通过将用户移动性作为调整解决方案参数的关键因素来考虑波束形成和用户关联过程。更准确地说,我们提出了一种先进的基于用户移动特征(主要是速度)的移动感知波束形成和用户聚类(MABUC)算法,该算法选择最佳的信道状态信息(CSI)反馈策略和周期,以实现目标和速率性能,同时确保尽可能小的成本(复杂性和CSI信令)。MABUC继承了我们之前提出的混合算法的行为,该算法周期性地激活动态和静态聚类策略来管理分配过程。而MABUC算法通过使用CSI估计模型考虑了用户的移动性,与参考方案相比,可以提高算法的性能。我们提出的算法在满足目标和速率性能的同时,能够意识到并适应实际系统的约束,如移动性、复杂性和信令成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Advanced Mobility-Aware Algorithm for Joint Beamforming and Clustering in Heterogeneous Cloud Radio Access Network
Heterogeneous Cloud Radio Access Networks (H-CRANs) are a promising cost-effective architecture for 5G system which incorporates the cloud computing into Heterogeneous Networks (HetNets). We consider in this work the joint beamforming and clustering (user-to-Remote Radio Head (RRH) association) issue for downlink H-CRAN to solve the sum-rate maximization problem under fronthaul link capacity and per-RRH power constraints. The main objective is to address the beamforming and user association process over time by taking into account the user mobility as a key factor to tune the solution's parameters. More precisely, based on the mobility profile of users (mainly velocity), we propose an advanced Mobility-Aware Beamforming and User Clustering (MABUC) algorithm which selects the best Channel State Information (CSI) feedback strategy and periodicity to achieve the targeted sum-rate performance while ensuring the minimum possible cost (complexity and CSI signaling). MABUC inherits the behavior of our previously proposed Hybrid algorithm which periodically activates dynamic and static clustering strategies to manage the allocation process over time. MABUC algorithm, however, takes into account the user mobility by using a CSI estimation model which can improve the algorithm performance compared to reference schemes. Our proposed algorithm has the benefit to meet the targeted sum-rate performance while being aware and adaptive to practical system constraints such as mobility, complexity and signaling costs.
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