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Deep Learning Phase Compression for MIMO CSI Feedback by Exploiting FDD Channel Reciprocity

Yu-Chien Lin, Zhenyu Liu, Ta-Sung Lee, Zhi Ding

2021IEEE Wireless Communications Letters18 citationsDOI

Abstract

Large scale MIMO FDD systems are often hampered by bandwidth required to feedback downlink CSI. Previous works have made notable progresses in efficient CSI encoding and recovery by taking advantage of FDD uplink/downlink reciprocity between their CSI magnitudes. Such framework separately encodes CSI phase and magnitude. To further enhance feedback efficiency, we propose a new deep learning architecture for phase encoding based on limited CSI feedback and magnitude-aided information. Our contribution features a framework with a modified loss function to enable end-to-end joint optimization of CSI magnitude and phase recovery. Our test results show superior performance in indoor/outdoor scenarios.

Topics & Concepts

Computer scienceTelecommunications linkMIMOChannel state informationBandwidth (computing)Reciprocity (cultural anthropology)Electronic engineeringChannel (broadcasting)Control theory (sociology)WirelessTelecommunicationsArtificial intelligenceEngineeringSocial psychologyPsychologyControl (management)Advanced Wireless Communication TechniquesAdvanced MIMO Systems OptimizationTelecommunications and Broadcasting Technologies