Centralized and Distributed Power Allocation for Max-Min Fairness in Cell-Free Massive MIMO

S. Chakraborty, Emil Björnson, L. Sanguinetti
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引用次数: 19

Abstract

Cell-free Massive MIMO systems consist of a large number of geographically distributed access points (APs) that serve users by coherent joint transmission. Downlink power allocation is important in these systems, to determine which APs should transmit to which users and with what power. If the system is implemented correctly, it can deliver a more uniform user performance than conventional cellular networks. To this end, previous works have shown how to perform system-wide max-min fairness power allocation when using maximum ratio precoding. In this paper, we first generalize this method to arbitrary precoding, and then train a neural network to perform approximately the same power allocation but with reduced computational complexity. Finally, we train one neural network per AP to mimic system-wide max-min fairness power allocation, but using only local information. By learning the structure of the local propagation environment, this method outperforms the state-of-the-art distributed power allocation method from the Cell-free Massive MIMO literature.
无小区大规模MIMO中最大最小公平性的集中式和分布式功率分配
无小区大规模MIMO系统由大量地理分布的接入点(ap)组成,通过相干联合传输为用户服务。在这些系统中,下行链路功率分配非常重要,它决定了哪些ap应该以何种功率向哪些用户传输数据。如果系统实现正确,它可以提供比传统蜂窝网络更统一的用户性能。为此,以前的工作已经展示了如何在使用最大比率预编码时执行系统范围的最大最小公平功率分配。在本文中,我们首先将该方法推广到任意预编码,然后训练一个神经网络来执行近似相同的功率分配,但降低了计算复杂度。最后,我们训练每个AP一个神经网络来模拟系统范围的最大最小公平功率分配,但只使用局部信息。通过学习局部传播环境的结构,该方法优于无小区大规模MIMO文献中最先进的分布式功率分配方法。
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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