Publication | Closed Access
Unsupervised Learning for Passive Beamforming
204
Citations
18
References
2020
Year
EngineeringMachine LearningPassive BeamformingUnsupervised Machine LearningGenerative SystemReal-time PredictionSparse Neural NetworkComputing SystemsSystems EngineeringEmbedded Machine LearningSupervised LearningComputer EngineeringReconfigurable Intelligent SurfaceDeep Learning ApproachLarge Scale OptimizationComputer ScienceReconfigurable ArchitectureDeep LearningSignal ProcessingSpeech ProcessingBeamforming
Reconfigurable intelligent surface (RIS) has recently emerged as a promising candidate to improve the energy and spectral efficiency of wireless communication systems. However, the unit modulus constraint on the phase shift of reflecting elements makes the design of optimal passive beamforming solution a challenging issue. The conventional approach is to find a suboptimal solution using the semi-definite relaxation (SDR) technique, yet the resultant suboptimal iterative algorithm usually incurs high complexity, hence is not amenable for real-time implementation. Motivated by this, we propose a deep learning approach for passive beamforming design in RIS-assisted systems. In particular, a customized deep neural network is trained offline using the unsupervised learning mechanism, which is able to make real-time prediction when deployed online. Simulation results show that the proposed approach maintains most of the performance while significantly reduces computation complexity when compared with SDR-based approach.
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