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Machine learning-based reconfigurable intelligent surface-aided MIMO systems

Nhan T. Nguyen, Ly V. Nguyen, Thien Huynh‐The, Duy H. N. Nguyen, A. Lee Swindlehurst, Markku Juntti

2021University of Oulu Repository (University of Oulu)27 citations

Abstract

Reconfigurable intelligent surface (RIS) technology has recently emerged as a spectral- and cost-efficient approach for wireless communications systems. However, existing hand-engineered schemes for passive beamforming design and optimization of RIS, such as the alternating optimization (AO) approaches, require a high computational complexity, especially for multiple-input-multiple-output (MIMO) systems. To over-come this challenge, we propose a low-complexity unsupervised learning scheme, referred to as learning-phase-shift neural net-work (LPSNet), to efficiently find the solution to the spectral efficiency maximization problem in RIS-aided MIMO systems. In particular, the proposed LPSNet has an optimized input structure and requires a small number of layers and nodes to produce efficient phase shifts for the RIS. Simulation results for a 16 × 2 MIMO system assisted by an RIS with 40 elements show that the LPSNet achieves 97.25% of the SE provided by the AO counterpart with more than a 95% reduction in complexity.

Topics & Concepts

MIMOBeamformingComputer scienceComputational complexity theoryMaximizationWirelessSpectral efficiencyComputer engineeringReduction (mathematics)Multi-user MIMOArtificial neural networkElectronic engineeringArtificial intelligenceAlgorithmMathematical optimizationTelecommunicationsMathematicsEngineeringGeometryAdvanced Wireless Communication TechnologiesIndoor and Outdoor Localization TechnologiesAntenna Design and Analysis
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