LoS sensing-based superimposed CSI feedback for UAV-Assisted mmWave systems
Chaojin Qing, Qing Ye, Wenhui Liu, Zilong Wanga, Jiafan Wang and, Jinliang Chen

TL;DR
This paper introduces a LoS sensing-based superimposed CSI feedback scheme for UAV-assisted mmWave systems, reducing feedback overhead and energy consumption while improving CSI recovery accuracy and robustness.
Contribution
It proposes a novel LoS sensing-based superimposed CSI feedback method integrating ISAC, LoS sensing, and deep learning networks for efficient CSI feedback in UAV systems.
Findings
Enhanced CSI recovery accuracy compared to existing methods
Robustness against parameter variations demonstrated in simulations
Effective reduction in feedback overhead and energy consumption
Abstract
In unmanned aerial vehicle (UAV)-assisted millimeter wave (mmWave) systems, channel state information (CSI) feedback is critical for the selection of modulation schemes, resource management, beamforming, etc. However, traditional CSI feedback methods lead to significant feedback overhead and energy consumption of the UAV transmitter, therefore shortening the system operation time. To tackle these issues, inspired by superimposed feedback and integrated sensing and communications (ISAC), a line of sight (LoS) sensing-based superimposed CSI feedback scheme is proposed. Specifically, on the UAV transmitter side, the ground-to-UAV (G2U) CSI is superimposed on the UAVto-ground (U2G) data to feed back to the ground base station (gBS). At the gBS, the dedicated LoS sensing network (LoSSenNet) is designed to sense the U2G CSI in LoS and NLoS scenarios. With the sensed result of LoS-SenNet, the…
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Taxonomy
TopicsMillimeter-Wave Propagation and Modeling · UAV Applications and Optimization · Radio Wave Propagation Studies
MethodsBalanced Selection
