Unsupervised Learning for Distributed Downlink Power Allocation in Cell-Free mMIMO Networks

Mattia Fabiani;Asmaa Abdallah;Abdulkadir Celik;Omer Haliloglu;Ahmed M. Eltawil
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Abstract

Cell-free massive multiple-input multiple-output (CF-mMIMO) surmounts conventional cellular network limitations in terms of coverage, capacity, and interference management. This paper aims to introduce a novel unsupervised learning framework for the downlink (DL) power allocation problem in CF-mMIMO networks, utilizing only large-scale fading (LSF) coefficients as input, rather than the hard-to-obtain exact user location or channel state information (CSI). Both centralized and distributed CF-mMIMO power control learning frameworks are explored, with deep neural networks (DNNs) trained to estimate power coefficients while addressing the constraints of pilot contamination and power budgets. For both learning frameworks, the proposed approach is utilized to maximize three well-known power control objectives under maximum-ratio and regularized zero-forcing precoding schemes: 1) sum of spectral efficiency, 2) minimum signal-to-interference-plus-noise ratio (SINR) for max-min fairness, and 3) product of SINRs for proportional fairness, for each of which customized loss functions are formulated. The proposed unsupervised learning approach circumvents the arduous task of training data computations, typically required in supervised learning methods, bypassing the use of conventional complex optimization methods and heuristic methodologies. Furthermore, an LSF-based radio unit (RU) selection algorithm is employed to activate only the contributing RUs, allowing efficient utilization of network resources. Simulation results demonstrate that our proposed unsupervised learning framework outperforms existing supervised learning and heuristic solutions, showcasing an improvement of up to 20% in spectral efficiency and more than 40% in terms of energy efficiency compared to state-of-the-art supervised learning counterparts.
无小区mimo网络中分布式下行功率分配的无监督学习
无蜂窝大规模多输入多输出(CF-mMIMO)在覆盖范围、容量和干扰管理方面超越了传统蜂窝网络的限制。本文旨在为CF-mMIMO网络中的下行链路(DL)功率分配问题引入一种新的无监督学习框架,仅利用大规模衰落(LSF)系数作为输入,而不是难以获得的精确用户位置或信道状态信息(CSI)。本文探索了集中式和分布式CF-mMIMO功率控制学习框架,并训练了深度神经网络(dnn)来估计功率系数,同时解决了试点污染和功率预算的约束。对于这两种学习框架,所提出的方法利用最大比和正则化强制零预编码方案最大化三个众所周知的功率控制目标:1)频谱效率之和,2)最小信噪比(SINR)达到最大最小公平性,3)SINR的乘积达到比例公平性,并为每一个目标都制定了定制的损失函数。提出的无监督学习方法绕过了监督学习方法中通常需要的训练数据计算的艰巨任务,绕过了传统复杂优化方法和启发式方法的使用。此外,采用基于lsf的无线电单元(RU)选择算法,只激活有贡献的RU,从而有效利用网络资源。仿真结果表明,我们提出的无监督学习框架优于现有的监督学习和启发式解决方案,与最先进的监督学习相比,频谱效率提高了20%,能源效率提高了40%以上。
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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