CAnet: Uplink-aided Downlink Channel Acquisition in FDD Massive MIMO using Deep Learning
Jiajia Guo, Chao-Kai Wen, Shi Jin

TL;DR
This paper introduces a deep learning-based framework for downlink channel acquisition in FDD massive MIMO systems, reducing training and feedback overheads by leveraging uplink information and adaptive pilot design.
Contribution
It presents the first comprehensive approach integrating pilot design, channel estimation, and feedback, utilizing uplink data to enhance downlink CSI acquisition in FDD massive MIMO.
Findings
Direct feedback of pilot signals saves about 20% of feedback bits.
Adaptive pilot design improves channel estimation accuracy.
Uplink information significantly reduces feedback overhead.
Abstract
In frequency-division duplexing systems, the downlink channel state information (CSI) acquisition scheme leads to high training and feedback overheads. In this paper, we propose an uplink-aided downlink channel acquisition framework using deep learning to reduce these overheads. Unlike most existing works that focus only on channel estimation or feedback modules, to the best of our knowledge, this is the first study that considers the entire downlink CSI acquisition process, including downlink pilot design, channel estimation, and feedback. First, we propose an adaptive pilot design module by exploiting the correlation in magnitude among bidirectional channels in the angular domain to improve channel estimation. Next, to avoid the bit allocation problem during the feedback module, we concatenate the complex channel and embed the uplink channel magnitude to the channel reconstruction at…
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