4.7 Article

Channel Parameter Estimation of mmWave MIMO System in Urban Traffic Scene: A Training Channel-Based Method

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2022.3145363

Keywords

Matching pursuit algorithms; Channel estimation; Massive MIMO; Wireless communication; OFDM; Estimation; Radio frequency; Urban traffic scene; mmWave MIMO; training channel model; channel estimation

Funding

  1. National Natural Science Foundation of China [61901409]
  2. Open Project of State Key Laboratory of Marine Resources Utilization in South China Sea [MRUKF2021034]
  3. Operation Mechanism and Active Control of Urban Traffic System under Intelligent Connected Conditions (FDCT-MOST) [0091/2019/AMJ]

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In frequency selective channel environments, channel estimation in hybrid precoding millimeter-wave massive MIMO systems is challenging. This paper proposes an effective channel estimation scheme based on a training channel model in an urban traffic environment. By treating the channel estimation problem as sparse channel recovery and using a multipath simultaneous matching tracking estimation method, our proposed method achieves better performance in frequency selective mmWave MIMO channels.
In frequency selective channel environment, channel estimation in hybrid precoding millimeter-wave (mmWave) massive multiple input multiple output (MIMO) system is a challenge issue. To solve this problem, we propose an effective channel estimation scheme for frequency selective channel, which is based on the training channel model in urban traffic environment. Considering that the practical mmWave MIMO channel is sparsity and the subcarrier multi-channels have the same sparse structure, we regard the channel estimation problem as the sparse channel recovery, and propose a multipath simultaneous matching tracking estimation method. It is assumed that the noise between the practical channels has a certain correlation, and the noise correlation has an impact on the selection of the optimal atomic support set in the process of channel recovery. Therefore, noise weighting is introduced in our proposed method. The simulation results prove the validity of this proposed method in frequency selective mmWave MIMO channel. Without increasing the complexity of the algorithm, the proposed method can achieve better local performance than the traditional classical methods.

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