Energy-efficient multi-cell massive MIMO: How many antennas should we use?

K. N. R. S. V. Prasad, V. Bhargava
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引用次数: 1

Abstract

In this paper, we investigate resource optimization for energy-efficient data transmissions in a multi-cell massive multiple-input multiple-output (MIMO) system with zero-forcing (ZF) detectors. We optimize the number of active antennas per BS so as to maximize the energy efficiency (EE) of uplink data transmissions. To model the bit-per-joule EE objective, we consider throughput rate and power expenditure expressions which incorporate the effect of pilot contamination and non-zero circuit power consumption at the BS and the users. The resulting optimization problem is an integer fractional programming problem, which is non-convex and is difficult to solve in its original form. Therefore, a novel solution methodology is proposed, wherein principles from fractional programming are used to transform the original problem into a parametric form and then, to derive an iterative EE-maximization algorithm. During each iteration, the problem in parametric form is transformed into a discrete monotonic optimization problem, which is then solved using polyblock outer approximation. For a wide range of traffic loads, simulation results show that the proposed EE-maximization scheme achieves significantly higher EE levels when compared to conventional schemes with full antenna activation, particularly if the number of antennas deployed per BS is excessively large.
节能多单元大规模MIMO:我们应该使用多少天线?
在本文中,我们研究了具有零强迫(ZF)探测器的多单元大规模多输入多输出(MIMO)系统中节能数据传输的资源优化问题。我们优化了每个基站的有源天线数量,以最大限度地提高上行数据传输的能量效率。为了模拟每焦耳比特的EE目标,我们考虑了吞吐量和功耗表达式,其中包含了BS和用户的试点污染和非零电路功耗的影响。所得到的优化问题是一个整数分式规划问题,该问题是非凸的,难以按其原始形式求解。因此,提出了一种新的求解方法,该方法利用分数规划原理将原问题转化为参数形式,然后推导出迭代ee -最大化算法。在每次迭代过程中,将参数形式的问题转化为离散单调优化问题,然后利用多块外逼近求解。对于大范围的业务负载,仿真结果表明,与完全激活天线的传统方案相比,所提出的EE最大化方案实现了明显更高的EE水平,特别是在每个BS部署的天线数量过大的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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