Author
Listed:
- Shoukath Ali K.
- Arfat Ahmad Khan
- Perarasi T
- Ateeq Ur Rehman
- Khmaies Ouahada
Abstract
In Millimeter-Wave (mm-Wave) massive Multiple-Input Multiple-Output (MIMO) systems, hybrid precoders/combiners must be designed to improve antenna gain and reduce hardware complexity. Sparse Bayesian learning via Expectation Maximization (SBL-EM) algorithm is not practically feasible for high signal dimensions because estimating sparse signals and designing optimal hybrid precoders/combiners using SBL-EM still provide high computational complexity for higher signal dimensions. To overcome the issues of high computational complexity along with making it suitable for larger data sets, in this paper, we propose Learned-Sparse Bayesian Learning with Generalized Approximate Message Passing algorithm (L-SBL-GAMP) algorithm for designing optimal hybrid precoders/combiners suitable for mmWave Massive MIMO systems. The L-SBL-GAMP algorithm is an extension of the SBL-GAMP algorithm that incorporates a Deep Neural Network (DNN) to improve the system performance. Based on the nature of the training data, the L-SBL-GAMP can design the optimal Hybrid precoders/combiners, which enhances the spectral efficiency of mmWave massive MIMO systems. The proposed L-SBL-GAMP algorithm reduces the iterations, training overhead, and computational complexity compared to the SBL-EM algorithm. The simulation results unveil that the proposed L-SBL-GAMP provides higher achievable rates, better accuracy, and low computational complexity compared to the existing algorithm, such as Orthogonal Matching Pursuit (OMP), Simultaneous Orthogonal Matching Pursuit (SOMP), SBL-EM and SBL-GAMP for mmWave massive MIMO architectures.
Suggested Citation
Shoukath Ali K. & Arfat Ahmad Khan & Perarasi T & Ateeq Ur Rehman & Khmaies Ouahada, 2023.
"Learned-SBL-GAMP based hybrid precoders/combiners in millimeter wave massive MIMO systems,"
PLOS ONE, Public Library of Science, vol. 18(9), pages 1-22, September.
Handle:
RePEc:plo:pone00:0289868
DOI: 10.1371/journal.pone.0289868
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