基于期望传播的海量MIMO系统块稀疏信道估计

M. Rashid, M. Naraghi-Pour
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引用次数: 1

摘要

我们考虑使用贝叶斯压缩感知(BCS)方法在大规模多输入多输出(MIMO)系统中进行下行信道估计。BCS利用信道在角域的稀疏结构来减少导频开销。由于有限的局部散射,大规模MIMO信道在角域具有块稀疏表示。因此,我们使用条件独立且分布相同的spike-and-slab先验模型来表示通道的稀疏向量系数,并使用马尔可夫先验模型来表示其支持。提出了一种期望传播(EP)算法,用指数族分布逼近稀疏向量及其支持上的难治性关节后向分布。利用期望最大化(EM)算法估计EP所需的未知模型参数。提出的EM和EP算法的组合让人想起变分EM,被称为EM-EP。该近似分布用于估计大规模MIMO信道。仿真结果表明,本文提出的EM-EP算法在信道估计方面优于最近提出的几种算法。
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Block-Sparse Channel Estimation in Massive MIMO Systems by Expectation Propagation
We consider downlink channel estimation in massive multiple input multiple output (MIMO) systems using a Bayesian compressive sensing (BCS) approach. BCS exploits the sparse structure of the channel in the angular domain in order to reduce the pilot overhead. Due to limited local scattering, the massive MIMO channel has a block-sparse representation in the angular domain. Thus, we use a conditionally independent and identically distributed spike-and-slab prior to model the sparse vector coefficients representing the channel and a Markov prior to model its support. An expectation propagation (EP) algorithm is developed to approximate the intractable joint posterior distribution on the sparse vector and its support with a distribution from an exponential family. The unknown model parameters which are required by EP, are estimated using the expectation maximization (EM) algorithm. The proposed combination of EM and EP algorithms is reminiscent of variational EM and is referred to as EM-EP. The approximated distribution is then used for estimating the massive MIMO channel. Simulation results show that our proposed EM-EP algorithm outperforms several recently-proposed algorithms in channel estimation.
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