In cell-free massive multiple-input multiple-output (MIMO) the fluctuations of the channel gain from the access points to a user are large due to the distributed topology of the system. Because of these fluctuations, data decoding schemes that treat the channel as deterministic perform inefficiently. A way to reduce the channel fluctuations is to design a precoding scheme that equalizes the effective channel gain seen by the users. Conjugate beamforming (CB) poorly contributes to harden the effective channel at the users. In this work, we propose a variant of CB dubbed enhanced normalized CB (ECB), in that the precoding vector consists of the conjugate of the channel estimate normalized by its squared norm. For this scheme, we derive an exact closed-form expression for an achievable downlink spectral efficiency (SE), accounting for channel estimation errors, pilot reuse and user's lack of channel state information (CSI), assuming independent Rayleigh fading channels. We also devise an optimal max-min fairness power allocation based only on large-scale fading quantities. ECB greatly boosts the channel hardening enabling the users to reliably decode data relying only on statistical CSI. As the provided effective channel is nearly deterministic, acquiring CSI at the users does not yield a significant gain.
翻译:在无细胞的大型多输出多重输出(MIMO)中,由于系统分布式的地形分布,进入点给用户带来的频道的波动很大。由于这些波动,将频道视为确定性的数据解码计划效率低下。减少频道波动的一个办法是设计一个预编码计划,使用户看到的有效频道收益相等。调制波形(CB)对用户有效频道的硬化作用不大。在这项工作中,我们提出了一个称为CB的加码增强正常CB(ECB)的变体,因为预先编码的矢量包括频道估计的共和体,按其正方形规范进行正常化。对于这个方案,我们为可实现的下链光谱效率(SE)制作了精确的封闭式表达方式,计算了频道估计错误、试点再利用和用户缺乏频道状态信息,假设独立的Raylei 淡化频道,我们还设计了一种最佳的最小度公平性权力分配方式,仅基于大规模减速量。欧洲央行大大推进了CSI系统用户获得大量数据的能力。