A Two-Stage Majorization-Minimization Based Beamforming for Downlink Massive MIMO

Qian Xu, Jianyong Sun
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Abstract

In this paper, we investigate the transmit beamforming design for weighted sum-rate maximization in massive multiple-input multiple-output (MIMO) downlink systems. Currently, the most popular algorithm for this scenario is the weighted minimum mean square error (WMMSE) algorithm. We propose a two-stage majorization-minimization (MM) based beamforming (dubbed TMMBF) which transforms the weighted sum-rate maximization problem into a quadratic convex problem by utilizing the MM method twice. The proposed algorithm converges to a stationary point of the weighted sum-rate maximization problem. Interestingly, we find that the WMMSE algorithm is a special case of the TMMBF algorithm, thus unifying the WMMSE algorithm into the MM framework for the first time. In addition, the surrogate function of TMMBF is tighter than that of WMMSE, resulting in faster convergence of the TMMBF algorithm. The simulation results on 3GPP channel models generated from Quadriga show that the TMMBF algorithm has better performance and faster numerical convergence compared to the WMMSE algorithm.
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基于两级最大化最小化的下行海量MIMO波束形成
本文研究了大规模多输入多输出(MIMO)下行系统中加权和速率最大化的发射波束形成设计。目前,这种情况下最流行的算法是加权最小均方误差(WMMSE)算法。提出了一种基于两阶段最大化最小化(mmbf)的波束形成方法,该方法将加权和速率最大化问题转化为二次凸问题。该算法收敛于加权和速率最大化问题的一个平稳点。有趣的是,我们发现WMMSE算法是TMMBF算法的一个特例,从而首次将WMMSE算法统一到MM框架中。此外,TMMBF的代理函数比WMMSE更严格,使得TMMBF算法收敛速度更快。在由Quadriga生成的3GPP信道模型上的仿真结果表明,TMMBF算法比WMMSE算法具有更好的性能和更快的数值收敛速度。
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