Site-Specific Beamforming for Full-Duplex Massive MIMO Systems via Implicit Channel Estimation
Samuel H. Li, Ian P. Roberts

TL;DR
This paper introduces a site-specific beamforming method for full-duplex massive MIMO systems that uses a deep learning model to implicitly estimate the channel with fewer measurements, improving performance.
Contribution
It proposes a transformer-based deep learning approach for implicit channel estimation, reducing measurement costs and enhancing beamforming in full-duplex massive MIMO systems.
Findings
Outperforms explicit channel estimation in simulations
Requires fewer measurements for effective beamforming
Maintains high performance across multiple users and scenarios
Abstract
Beamforming has proven to be valuable in enabling full-duplex massive MIMO base stations, but doing so effectively often requires knowledge of the self-interference channel matrix H. Estimating this high-dimensional channel is costly in practice, however, since it requires a prohibitive number of measurements, especially in fast-fading conditions. In this work, we overcome this dilemma by designing full-duplex beams using implicit channel knowledge gathered from a relatively small number of measurements across H. These measurements are collected by the base station using a sequence of beams tailored to both the deployment environment and the particular users being served. This is accomplished through site-specific training of a transformer-based deep learning model that learns to efficiently probe portions of H most relevant to the particular users being served by exploiting the…
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