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Low-Complexity Channel Estimation in 5G Massive MIMO-OFDM Systems

机译:5G大规模MIMO-OFDM系统中的低复杂度信道估计

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Pilot contamination is the reuse of pilot signals, which is a bottleneck in massive multi-input multi-output (MIMO) systems as it varies directly with the numerous antennas, which are utilized by massive MIMO. This adversely impacts the channel state information (CSI) due to too large pilot overhead outdated feedback CSI. To solve this problem, a compressed sensing scheme is used. The existing algorithms based on compressed sensing require that the channel sparsity should be known, which in the real channel environment is not the case. To deal with the unknown channel sparsity of the massive MIMO channel, this paper proposes a structured sparse adaptive coding sampling matching pursuit (SSA-CoSaMP) algorithm that utilizes the space–time common sparsity specific to massive MIMO channels and improves the CoSaMP algorithm from the perspective of dynamic sparsity adaptive and structural sparsity aspects. It has a unique feature of threshold-based iteration control, which in turn depends on the SNR level. This approach enables us to determine the sparsity in an indirect manner. The proposed algorithm not only optimizes the channel estimation performance but also reduces the pilot overhead, which saves the spectrum and energy resources. Simulation results show that the proposed algorithm has improved channel performance compared with the existing algorithm, in both low SNR and low pilot overhead.
机译:导频污染是导频信号的重用,这是大规模多输入多输出(MIMO)系统的瓶颈,因为它随大量MIMO直接利用的大量天线而变化。由于导频开销太大而过时的反馈CSI,这会对信道状态信息(CSI)产生不利影响。为了解决这个问题,使用了压缩感测方案。现有的基于压缩感测的算法要求应该知道信道稀疏度,而在实际信道环境中则不是这样。为了应对大规模MIMO信道的未知信道稀疏性,本文提出了一种结构化的稀疏自适应编码采样匹配追踪(SSA-CoSaMP)算法,该算法利用了特定于大规模MIMO信道的时空公共稀疏性,并从动态稀疏性和结构稀疏性方面的观点。它具有基于阈值的迭代控制的独特功能,而后者又取决于SNR级别。这种方法使我们能够间接确定稀疏性。该算法不仅优化了信道估计性能,还减少了导频开销,节省了频谱和能源。仿真结果表明,与现有算法相比,该算法在低信噪比和低导频开销方面具有更好的信道性能。

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