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M-SAMP: A Low-complexity Modified SAMP Algorithm for Massive MIMO CSI Feedback

机译:M-SAMP:一种用于大规模MIMO CSI反馈的低复杂度修改SAMP算法

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In frequency division duplex (FDD) massive MIMO systems, the feedback of channel state information (CSI) increases greatly with the number of antennas raising. Therefore, it is a hot-spot to research how to reduce the feedback overhead. It is considered that massive MIMO channel is sparse and in actual situation the sparsity is unknown, so the sparse adaptive matching pursuit (SAMP) algorithm is introduced to cope with these problems. Aiming at solving the shortcomings of SAMP, including the fixed step size and too much iterations, the modified SAMP (M-SAMP) is proposed in this paper. We combine the signal segmenting, the initial sparsity estimating and variable step size to reconstruct the signal quickly and accurately. The simulation results show that M-SAMP is superior than the SAMP algorithm both in reconstruction accuracy and computation time. In addition, compared with the orthogonal matching pursuit (OMP), subspace tracking (SP), and SAMP algorithms, the better normalized mean squared error (NMSE) performance of M-SAMP could be witnessed, which demonstrates the practicability of M-SAMP in massive MIMO systems.
机译:在频分双工(FDD)大规模MIMO系统中,信道状态信息(CSI)的反馈随着天线数量的增加而大大增加。因此,如何减少反馈开销成为研究的热点。人们认为大规模MIMO信道是稀疏的,在实际情况下稀疏性是未知的,因此引入了稀疏自适应匹配追踪(SAMP)算法来解决这些问题。为了解决SAMP的缺点,包括固定步长和迭代次数过多,提出了改进的SAMP(M-SAMP)。我们将信号分割,初始稀疏度估计和可变步长相结合,以快速,准确地重建信号。仿真结果表明,M-SAMP在重构精度和计算时间上均优于SAMP算法。此外,与正交匹配追踪(OMP),子空间跟踪(SP)和SAMP算法相比,M-SAMP具有更好的归一化均方误差(NMSE)性能,这证明了M-SAMP在实际应用中的实用性。大规模MIMO系统。

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