This paper investigates the massive random access for a huge amount of user devices served by a base station (BS) equipped with a massive number of antennas. We consider a grant-free unsourced random access (U-RA) scheme where all users possess the same codebook and the BS aims at declaring a list of transmitted codewords and recovering the messages sent by active users. Most of the existing works concentrate on applying U-RA in the oversimplified independent and identically distributed (i.i.d.) channels. In this paper, we consider a fairly general joint-correlated MIMO channel model with line-of-sight components for the realistic outdoor wireless propagation environments. We conduct the activity detection for the emitted codewords by performing an improved coordinate descent approach with Bayesian learning automaton to solve a covariance-based maximum likelihood estimation problem. The proposed algorithm exhibits a faster convergence rate than traditional descent approaches. We further employ a coupled coding scheme to resolve the issue that the dimensions of the common codebook expand exponentially with user payload size in the practical massive machine-type communications scenario. Our simulations reveal that to achieve an error probability of 0.05 for reliable communications in correlated channels, one must pay a 0.9 to 1.3 dB penalty comparing to the minimum signal to noise ratio needed in i.i.d. channels on condition that a sufficient number of receiving antennas is equipped at the BS.
翻译:本文调查了由配备大量天线的基地站(BS)提供的大量用户设备的巨大随机访问。 我们考虑一种无赠无源无源随机访问(U-RA)方案,所有用户都拥有相同的代码簿,而BS的目的是公布一份传送的代码词清单,并收回活跃用户发送的信息。大多数现有工作的重点是在过度简化的独立和同样分布(i.d.)渠道中应用U-RA。在本文中,我们考虑的是具有现实的室外无线传播环境直观组件的相当普遍的联合-cor相关MIMO频道模型。我们通过与巴伊西亚学习自动地图改进协调定位方法,对发出的代码进行活动探测,以解决基于共变的最大可能性估计问题。提议的算法比传统的脱落(i.d.)渠道集中速度要快得多。我们还采用一种结合的编码计划来解决在实际大规模机型通信设想中用户有效载荷规模以指数膨胀的问题。 我们的模拟结果显示,对排放编码的编码器进行活动检测,我们采用更好的方法,即使B频道获得最起码的概率。