In this paper, we investigate the uplink transmit power optimization problem in cell-free (CF) extremely large-scale multiple-input multiple-output (XL-MIMO) systems. Instead of applying the traditional methods, we propose two signal processing architectures: the centralized training and centralized execution with fuzzy logic as well as the centralized training and decentralized execution with fuzzy logic, respectively, which adopt the amalgamation of multi-agent reinforcement learning (MARL) and fuzzy logic to solve the design problem of power control for the maximization of the system spectral efficiency (SE). Furthermore, the uplink performance of the system adopting maximum ratio (MR) combining and local minimum mean-squared error (L-MMSE) combining is evaluated. Our results show that the proposed methods with fuzzy logic outperform the conventional MARL-based method and signal processing methods in terms of computational complexity. Also, the SE performance under MR combining is even better than that of the conventional MARL-based method.
翻译:在本文中,我们研究了无细胞(CF)超大型多投入多输出产出(XL-MIMO)系统中的上链传输力优化问题。我们建议采用两种信号处理结构,而不是采用传统方法:集中培训和集中执行,逻辑模糊;集中培训和分散执行,逻辑模糊,分别采用多剂加固学习(MARL)和模糊逻辑的合并,以解决系统光谱效率最大化(SE)方面的权力控制设计问题。此外,对采用最大混合率(MR)和当地最低平均差错(L-MMSE)合并的系统的上链连接性能进行了评估。我们的结果显示,在计算复杂性方面,拟议的模糊逻辑方法比传统的MARL方法和信号处理方法更符合常规MARL方法和信号处理方法。此外,在MR下合并的SE性能甚至比传统的ML方法要好。