We study the problem of downlink channel estimation in multi-user massive multiple input multiple output (MIMO) systems. To this end, we consider a Bayesian compressive sensing approach in which the clustered sparse structure of the channel in the angular domain is employed to reduce the pilot overhead. To capture the clustered structure, we employ a conditionally independent identically distributed Bernoulli-Gaussian prior on the sparse vector representing the channel, and a Markov prior on its support vector. An expectation propagation (EP) algorithm is developed to approximate the intractable joint distribution on the sparse vector and its support with a distribution from an exponential family. The approximate distribution is then used for direct estimation of the channel. The EP algorithm assumes that the model parameters are known a priori. Since these parameters are unknown, we estimate these parameters using the expectation maximization (EM) algorithm. The combination of EM and EP referred to as EM-EP algorithm is reminiscent of the variational EM approach. Simulation results show that the proposed EM-EP algorithm outperforms several recently-proposed algorithms in the literature.
翻译:我们研究了多用户大规模多输入多重输出(MIMO)系统中的下行链路估计问题。 为此,我们考虑一种巴伊西亚压缩感测方法,即采用角域频道的聚集稀疏结构来减少试点间接成本。为了捕捉聚集结构,我们使用一种有条件的单独分布的Bernoulli-Gausian在代表该频道的稀散矢量之前,使用一种有条件的分布相同的Bernoulli-Gausian在代表该频道的稀释矢量之前,而Markov在支持矢量之前使用一种配方。一种预期传播(EP)算法(EP)的算法(EP)是用来接近稀释矢量及其支持的棘手联合分布的指数式分布,然后将近似分布法用于直接估计该频道。EP算法假设模型参数是先知的。由于这些参数未知,我们使用预期最大化算法来估计这些参数。称为EM-EP算法的组合是变式EM方法的记忆。模拟结果显示,拟议的EM-EEC算法在文献中超越了最近提出的几种算法。