Compressive Sensing for Feedback Reduction in MIMO Broadcast Channels
Syed T. Qaseem, Tareq Y. Al-Naffouri

TL;DR
This paper introduces compressive sensing-based opportunistic feedback schemes for MIMO broadcast channels, significantly reducing feedback resources while maintaining throughput, and analyzing trade-offs between feedback load and accuracy.
Contribution
It proposes a novel compressive sensing framework for feedback reduction in MIMO systems, applicable to both analog and digital feedback, with proven throughput efficiency.
Findings
Achieves same sum-rate throughput as dedicated feedback with fewer resources.
Reduces feedback noise in analog feedback, improving throughput.
Digital feedback scheme approaches noiseless performance in noisy scenarios.
Abstract
We propose a generalized feedback model and compressive sensing based opportunistic feedback schemes for feedback resource reduction in MIMO Broadcast Channels under the assumption that both uplink and downlink channels undergo block Rayleigh fading. Feedback resources are shared and are opportunistically accessed by users who are strong, i.e. users whose channel quality information is above a certain fixed threshold. Strong users send same feedback information on all shared channels. They are identified by the base station via compressive sensing. Both analog and digital feedbacks are considered. The proposed analog & digital opportunistic feedback schemes are shown to achieve the same sum-rate throughput as that achieved by dedicated feedback schemes, but with feedback channels growing only logarithmically with number of users. Moreover, there is also a reduction in the feedback load.…
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