In this paper, we consider the downlink (DL) of a zero-forcing (ZF) precoded extra-large scale massive MIMO (XL-MIMO) system. The base-station (BS) operates with limited number of radio-frequency (RF) transceivers due to high cost, power consumption and interconnection bandwidth associated to the fully digital implementation. The BS, which is implemented with a subarray switching architecture, selects groups of active antennas inside each subarray to transmit the DL signal. This work proposes efficient resource allocation (RA) procedures to perform joint antenna selection (AS) and power allocation (PA) to maximize the DL spectral efficiency (SE) of an XL-MIMO system operating under different loading settings. Two metaheuristic RA procedures based on the genetic algorithm (GA) are assessed and compared in terms of performance, coordination data size and computational complexity. One algorithm is based on a quasi-distributed methodology while the other is based on the conventional centralized processing. Numerical results demonstrate that the quasi-distributed GA-based procedure results in a suitable trade-off between performance, complexity and exchanged coordination data. At the same time, it outperforms the centralized procedures with appropriate system operation settings.
翻译:在本文中,我们考虑了零推进(ZF)预先编码的大规模超大型大型MIMO(XL-MIMO)系统的下行链(DL),基站(BS)运行的无线电频率收发器数量有限,原因是与完全数字执行有关的高成本、电耗和互连带带带宽度;BS是使用一个亚片切换结构实施的,它选择每个子集体内的活跃天线组来传输DL信号;这项工作提议了高效的资源分配程序,以实施联合选择天线(AS)和电力分配(PA)的程序,以最大限度地提高在不同装载环境下运行的XL-MIMO系统DL光谱效率;根据遗传算法(GA)评估并比较了两种光学RA程序,其性能、协调数据大小和计算复杂性;一种算法以准分配的方法为基础,而另一种则以常规集中处理为基础;数量结果显示,基于GA程序的准分散程序在适当的中央交易、复杂度和数据格式之间在适当的交易程序上,数据交换。