Cell-free massive MIMO is one of the key technologies for future wireless communications, in which users are simultaneously and jointly served by all access points (APs). In this paper, we investigate the minimum mean square error (MMSE) estimation of effective channel coefficients in cell-free massive MIMO systems with massive connectivity. To facilitate the theoretical analysis, only single measurement vector (SMV) based MMSE estimation is considered in this paper, i.e., the MMSE estimation is performed based on the received pilot signals at each AP separately. Inspired by the decoupling principle of replica symmetric postulated MMSE estimation of sparse signal vectors with independent and identically distributed (i.i.d.) non-zero components, we develop the corresponding decoupling principle for the SMV based MMSE estimation of sparse signal vectors with independent and non-identically distributed (i.n.i.d.) non-zero components, which plays a key role in the theoretical analysis of SMV based MMSE estimation of the effective channel coefficients in cell-free massive MIMO systems with massive connectivity. Subsequently, based on the obtained decoupling principle of MMSE estimation, likelihood ratio test and the optimal fusion rule, we perform user activity detection based on the received pilot signals at only one AP, or cooperation among the entire set of APs for centralized or distributed detection. Via theoretical analysis, we show that the error probabilities of both centralized and distributed detection tend to zero when the number of APs tends to infinity while the asymptotic ratio between the number of users and pilots is kept constant. We also investigate the asymptotic behavior of oracle estimation in cell-free massive MIMO systems with massive connectivity via random matrix theory.
翻译:在未来无线通信中,用户同时和由所有接入点(APs)共同服务的无线通信的关键技术之一是无细胞巨量MIMO。在本文中,我们调查无细胞巨型MIMO系统有效频道系数的最小平均正方差估计值(MMSE),具有大规模连通性。为了便利理论分析,本文件只考虑基于MMSE的单一测量矢量估计值,即MMSE估算值是根据每份AP分别收到的试点信号进行的。受所有接入点(APs)同时和共同服务点(APs)同时复制对用户同时和共同服务点(APs)的对分散信号矢量测算值进行校正方差(MMSE)原则的启发,我们开发了SMSVS基于独立和不明显分布的微量矢量矢量矢量(SMMM.d.)估算值的最小正差差值估计值(MMMSE),同时根据我们获得的无细胞巨量测算性测算法, 也根据我们获得的深度测测测测测测测算法的概率,随后,对机极性测测测测测的机测测测算法(我们获得的机测测测算机机机测测测测测测测的机机的机的机率,对机率的机率的机极值),对机极值进行进行机率性测测测测测测测测算法,对机机机机机机机机机机机机机机机机率的机机机的机率的机率性测算法,对机率进行。