A model-based DL method unrolls WMMSE to jointly optimize RIS phase shift compression and beamforming, showing improved sum-rate with fewer control bits than RIS elements.
Re- configurable Intelligent Surface-Aided Full-Duplex mmWav e MIMO: Channel Estimation, Passive and Hybrid Beamforming,
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Model-based Deep Learning for Joint RIS Phase Shift Compression and WMMSE Beamforming
A model-based DL method unrolls WMMSE to jointly optimize RIS phase shift compression and beamforming, showing improved sum-rate with fewer control bits than RIS elements.