Journal of South China University of Technology(Natural Science) >
Beamspace Channel Estimation Algorithm Based on Deep Compressed Sensing
Received date: 2022-01-11
Online published: 2022-03-11
Supported by
the National Natural Science Foundation of China(61901367)
In the millimeter-wave (mmWave) massive multiple-input multiple-output (MIMO) system with lens antenna array, because the radio frequency (RF) link is much less than the number of antennas, it is necessary to recover the high-dimensional channel from the low-dimensional effective measurement signal by channel estimation. The current channel estimation methods basically make use of the sparsity of the beamspace channel, transforming the channel estimation into compressed sensing problem and then estimating with different methods. Aiming at the limitation that approximate message passing (AMP) algorithm needs channel prior information in channel estimation, this paper proposed an improved channel estimation algorithm. Firstly, a new noise term was derived based on the AMP algorithm and fitted with a convolutional neural network (CNN). Then the iterative denoising process was expanded into a deep network to solve the linear inverse transformation of the measurement signal to the cha-nnel. Finally, the initially estimated channel was further optimized by a residual noise removal network. In addition, the controllable parameters were introduced to increase the flexibility of the channel estimation process, and the sen-sing matrix was jointly trained with other network parameters to improve the channel estimation accuracy. This paper verified the proposed algorithm from two aspects of channel estimation accuracy and system transmission quality, and carried out the theoretical formula derivation and system simulation analysis on the Saleh-Valenzuela channel model. Simulation results show that the proposed algorithm has less model parameters and computation than the traditional algorithm, and can improve the accuracy of channel estimation and the transmission quality of the communication system.
Juanyi ZHENG , Jinyu MU , Lirong XING , Yuanyuan Lü , Pei JIE . Beamspace Channel Estimation Algorithm Based on Deep Compressed Sensing[J]. Journal of South China University of Technology(Natural Science), 2022 , 50(12) : 101 -108 . DOI: 10.12141/j.issn.1000-565X.220017
| 1 | HEATH R W, GONZALEZ-PRELCIC N, RANGAN S,et al .An overview of signal processing techniques for millimeter wave MIMO systems[J].IEEE Journal of Selected Topics in Signal Processing,2016,10(3):436-453. |
| 2 | QI C, DONG P, MA W,et al .Acquisition of channel state information for mmWave massive MIMO:traditional and machine learning-based approaches [J].Science China Information Sciences,2021,64(8):1-16. |
| 3 | BRADY J, BEHDAD N, SAYEED A M .Beamspace MIMO for millimeter-wave communications:system architecture,modeling,analysis,and measurements [J].IEEE Transactions on Antennas and Propagation,2013,61(7):3814-3827. |
| 4 | ZHANG Z, LIU Y, LIU J,et al .AMP-Net:denoising-based deep unfolding for compressive image sensing [J].IEEE Transactions on Image Processing,2020,30:1487-1500. |
| 5 | 杨春玲,汤瑞东 .基于低秩增强的图像压缩感知重构算法[J].华南理工大学学报(自然科学版),2018,46(10):72-80. |
| 5 | YANG Chunling, TANG Ruidong .Low-rank enhancement-based compressed image sensing reconstruction algorithm [J].Journal of South China University of Technology(Natural Science Edition),2018,46(10):72-80. |
| 6 | ALKHATEEB A, AYACH O E, LEUS G,et al .Channel estimation and hybrid precoding for millimeter wave cellular systems [J].IEEE Journal of Selected Topics in Signal Processing,2014,8(5):831-846. |
| 7 | WU X, YANG G, HOU F,et al .Low-complexity downlink channel estimation for millimeter-wave FDD massive MIMO systems [J].IEEE Wireless Communications Letters,2019,8(4):1103-1107. |
| 8 | MALEKI A .Approximate message passing algorithms for compressed sensing [D].Palo Alto:Stanford University,2010. |
| 9 | ZOU X, LI F, FANG J,et al .Computationally efficient sparse Bayesian learning via generalized approximate message passing [C]∥ Proceedings of 2016 IEEE International Conference on Ubiquitous Wireless Broadband.Nanjing:IEEE,2016:1-4. |
| 10 | 黄源,何怡刚,吴裕庭,等 .基于深度学习的压缩感知FDD大规模MIMO系统稀疏信道估计算法 [J].通信学报,2021,42(8):61-69. |
| 10 | HUANG Yuan, HE Yigang, WU Yuting,et al .Deep learning for compressed sensing based sparse channel estimation in FDD massive MIMO systems [J].Journal on Communications,2021,42(8):61-69. |
| 11 | BORGERDING M, SCHNITER P, RANGAN S .AMP-inspired deep networks for sparse linear inverse pro-blems [J].IEEE Transactions on Signal Processing,2017,65(16):4293-4308. |
| 12 | WEI Y, ZHAO M M, ZHAO M,et al .An AMP-based network with deep residual learning for mmwave beamspace channel estimation [J].IEEE Wireless Communications Letters,2019,8(4):1289-1292. |
| 13 | HE H, WEN C K, JIN S,et al .Deep learning-based channel estimation for beamspace mmWave massive MIMO systems [J].IEEE Wireless Communications Letters,2018,7(5):852-855. |
| 14 | WEI X, HU C, DAI L .Deep learning for beamspace channel estimation in millimeter-wave massive MIMO systems [J].IEEE Transactions on Communications,2020,69(1):182-193. |
| 15 | GAO X, DAI L, HAN S,et al .Reliable beamspace channel estimation for millimeter-wave massive MIMO systems with lens antenna array [J].IEEE Transactions on Wireless Communications,2017,16(9):6010-6021. |
| 16 | ZHANG J, GHANEM B.ISTA-Net:interpretable optimization-inspired deep network for image compressive sensing [C]∥ Proceedings of 2018 IEEE/CVF Confe-rence on Computer Vision and Pattern Recognition.Salt Lake City:IEEE,2018:1828-1837. |
| 17 | HE K, SUN J .Convolutional neural networks at constrained time cost [C]∥ Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition.Boston:IEEE,2015: 5353-5360. |
/
| 〈 |
|
〉 |