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Sparse beamforming based energy efficiency optimization for distributed antenna systems

机译:基于稀疏的分布式天线系统能效优化基于稀疏的波束形成优化

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In this paper, we propose a sparse beamforming based energy efficiency (EE) maximization problem for multi-user distributed antenna systems (DASs). In DAS, the power consumption of remote antenna units (RAUs) and corresponding backhaul links have an important influence on the whole network efficiency. Hence this paper addresses RAU selection. We select optimal RAUs and corresponding backhaul links to operate in sleep mode when building the network power consumption model. Meanwhile, the power consumption of backhaul also plays a significant role, and RAU clustering is considered when calculate backhaul power consumption. With QoS requirements and per-RAU power constraints, a non-convex joint optimization problem considering transmit beamforming, RAU selection and RAU clustering is presented. In order to solve the problem, a series of operations including equivalent transformations, convex relaxation and compressed sensing are performed. An iterative algorithm is designed to solve the practical problem. Simulation results show the proposed algorithm can converge at a fast rate, and there are optimal number of users and RAUs achieving the largest EE.
机译:在本文中,我们为多用户分布式天线系统(DASS)提出了一种基于稀疏的基于波束形成的能效(EE)最大化问题。在DAS中,远程天线单元(RAU)的功耗和相应的回程链路对整个网络效率具有重要影响。因此,本文解决了RAU选择。我们选择最佳RAU和相应的回程链路在构建网络功耗模型时以睡眠模式运行。同时,回程的功耗也起着重要作用,并且在计算回程功耗时考虑了RAU聚类。通过QoS要求和Per-RAU功率约束,提出了考虑发射波束成形,RAU选择和RAU聚类的非凸面优化问题。为了解决问题,进行一系列操作,包括等同的变换,凸松弛和压缩感测。迭代算法旨在解决实际问题。仿真结果表明,所提出的算法可以以快速汇总,并且有最佳数量的用户和raus实现最大的ee。

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