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Off-Grid Compressive Channel Estimation for mm-Wave Massive MIMO With Hybrid Precoding

机译:混合预编码毫米波大规模MIMO的离网压缩信道估计

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摘要

To reduce the pilot overhead and improve the channel estimation accuracy in the massive MIMO system, various channel estimation algorithms employing the sparse signal reconstruction (SSR) scheme have been proposed. However, the spatial grid division leads to the tradeoff between the estimation accuracy and the computational complexity. In addition, when the true angle is not on the discretized grid point which is referred as off-grid problem, the performance of SSR-based algorithms will degrade heavily. In this letter, a novel channel estimation algorithm which achieves superior performance under the off-grid scenario is proposed. At first, the conventional joint angle of arrivals/departures (AoAs/AoDs) estimation is transformed into two 1-D sub-problems. Then, the SSR-based framework is presented to obtain the initial sparse-support set. By minimizing the constructed objective function, the off-grid errors regarded as adjustable parameters are iteratively refined. In addition, scatter gains are acquired by LSE. Numerical simulations are provided to illustrate the superiority of the proposed algorithm in terms of estimation accuracy and computational complexity.
机译:为了减少大规模MIMO系统中的导频开销并提高信道估计精度,已经提出了采用稀疏信号重构(SSR)方案的各种信道估计算法。然而,空间网格划分导致估计精度和计算复杂度之间的折衷。另外,当真实角度不在离散网格点上(称为离网问题)时,基于SSR的算法的性能将大大降低。在这封信中,提出了一种新的信道估计算法,该算法在离网情况下可以实现出色的性能。首先,将常规的到达/离开联合角(AoAs / AoDs)估计转换为两个一维子问题。然后,提出了基于SSR的框架以获得初始稀疏支持集。通过最小化构造的目标函数,可以迭代地完善被视为可调整参数的离网误差。另外,LSE获得了散射增益。提供数值模拟以说明所提出算法在估计精度和计算复杂度方面的优越性。

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