Cell-free massive multiple-input multiple-output (MIMO) is a promising cellular network. In this network, a large number of distributed and multi-antenna access points (APs) jointly serve many single antenna users using the same time-frequency resource. Consequently, it possibly provides a uniform service experience to users regardless of the users' locations by eliminating interference at cell boundaries via user-centric joint transmission. This joint transmission, however, requires extremely high signaling overheads for data sharing via backhaul links and causes a high network-wide power consumption. To resolve these problems, in this paper, we present a novel joint transmission method, which is referred to as sparse joint transmission (sparse-JT), for cell-free massive MIMO networks with finite backhaul capacity constraints. Sparse-JT jointly identifies the user-centric cooperative APs sets, precoding vectors for beamforming and compression, and power allocation that maximizes a lower bound of the sum-spectral efficiency under the constraint that a total number of active APs per the joint transmission is sparse. The proposed algorithm guarantees to identify a local-optimal solution for a relaxed sum-spectral maximization problem. By simulations, we show that sparse-JT achieves higher ergodic spectral efficiencies than those attained by multi-cell zero-forcing precoding with the user-centric AP clustering algorithm in all system configurations.
翻译:大型无细胞多输入多输出(MIMO)是一个充满希望的细胞网络。在这个网络中,大量分布式和多连接接入点(APs)联合为使用同一时间频率资源的许多单一天线用户共同服务。因此,它有可能通过用户中心联合传输消除对用户所在地的干扰,从而向用户提供统一的服务经验,而不论用户所在地。然而,这种联合传输需要极高的信号,通过回声连接共享数据共享,并造成高网络范围的电力消耗。为了解决这些问题,我们在本文件中提出了一个新型的联合传输方法,称为稀少联合传输(spasser-JT),用于无细胞的大型移动天线用户网络,使用有限的后向能力限制。Sprass-JT共同确定了以用户为中心的合作APset、预校正调节矢量的矢量,以及权力分配,在联合传输中,活跃的APs总数是很少的。拟议的算法保证在系统上找到一种本地-op质联合传输(spassyal-J)解决方案,用以模拟节制的甚低光谱层甚高的系统,以显示我们获得的甚低频谱级数据压的甚高频层数据压。