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首页> 外文期刊>Journal of ambient intelligence and humanized computing >FDD massive MIMO downlink channel estimation with complex hybrid generalized approximate message passing algorithm
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FDD massive MIMO downlink channel estimation with complex hybrid generalized approximate message passing algorithm

机译:复杂混合广义近似消息传递算法的FDD大规模MIMO下行链路信道估计

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摘要

Precise channel state information (CSI) is essential for the massive multiple-input multiple-output (MIMO) system to achieve high spectrum and energy efficiency performance in the forthcoming 5G communication. Combined with angular domain channel sparsity, compressive sensing (CS) technique is introduced to estimate downlink CSI because it can help the frequency division duplex massive MIMO system to overcome the restriction of the limited pilot overhead. Conventional CS techniques consider different entries of the sparse signal as equivalent random variables. However, some scatters around the base station are fixed during practical propagation. Consequently, some propagation beams are more likely to locate within certain angular spread and the corresponding entries of the angular domain channel response vector are more likely to be non-zero valued. While this non-zero probability of a certain entry can be acquired offline by learning and analyzing the historical CSI, it is unnecessary to be estimated again during the sparse reconstruction process. When we describe the non-zero probability of a certain entry with the probabilistic density manner, hybrid prior probabilistic settings are used because of the practical propagation property. Combined with the complex generalized approximated message passing (GAMP) algorithm, a new channel estimation method is introduced in this paper. We define the GAMP algorithm with its intrinsic architecture and amended hybrid probability node settings as hybrid GAMP algorithm. A definite improvement of the pilot consumption as well as the estimation accuracy are simultaneously achieved through our proposed channel estimation method with complex hybrid GAMP algorithm and accurate hybrid settings. By further simulation, the influence of the inaccurate hybrid settings of the sparse channel response vector is drawn that the negative effect is proved to be quite small for the proposed channel estimation method.
机译:精确的信道状态信息(CSI)对于大规模多输入多输出(MIMO)系统在即将到来的5G通信中实现高频谱和能效性能至关重要。结合角域信道稀疏性,引入压缩感知(CS)技术来估计下行链路CSI,因为它可以帮助频分双工大规模MIMO系统克服有限导频开销的限制。常规的CS技术将稀疏信号的不同条目视为等效随机变量。但是,在实际传播期间,基站周围的一些散射是固定的。因此,一些传播波束更有可能位于某个角度扩展内,并且角域信道响应矢量的相应条目更有可能是非零值。尽管可以通过学习和分析历史CSI离线获取某个条目的非零概率,但在稀疏重建过程中不必再次进行估计。当我们用概率密度方式描述某个项的非零概率时,由于实际的传播特性,使用了混合先验概率设置。结合复杂的广义近似消息传递算法,提出了一种新的信道估计方法。我们定义GAMP算法及其固有架构,并将混合概率节点设置修改为混合GAMP算法。通过我们提出的具有复杂混合GAMP算法和精确混合设置的信道估计方法,可以同时实现对导频消耗的明显改善以及估计精度。通过进一步的仿真,得出稀疏信道响应矢量的不正确混合设置的影响,证明了所提出信道估计方法的负面影响很小。

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