中继环境下毫米波海量MIMO信道估计

Zheng-tang Liu, Jing He, Yuanzhi Chen, Jianhe Du, Jiaqi Li
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引用次数: 0

摘要

为了解决中继环境下毫米波海量MIMO信道估计问题,本文提出了一种下游毫米波海量MIMO中继系统的单径信道模型。在此基础上,提出了一种基于压缩感知(CS)算法的自适应压缩感知信道估计方案。仿真实验证明了压缩感知算法在中继信道模型下的适用性。最后,将自适应压缩感知算法与传统的正交匹配跟踪(OMP)压缩感知算法进行了比较,证明了本文提出的自适应压缩感知算法提高了信道估计精度。
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Millimeter-Wave Massive MIMO Channel Estimation in Relay Environment
In order to solve the problem of millimeter-wave massive MIMO channel estimation in a relay environment, this paper proposes a single-path channel model of a downstream millimeter-wave massive MIMO relay system. After that, based on the Compressive Sensing (CS) algorithm, an adaptive compressed sensing channel estimation scheme is proposed. Simulation experiments prove the applicability of the compressed sensing algorithm under the relay channel model. Finally, this paper compares the adaptive compressed sensing algorithm with the traditional orthogonal matching tracking (OMP) compressed sensing algorithm, and proves that the proposed adaptive compressed sensing algorithm improves the channel estimation accuracy.
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