Downlink CSIT under Compressed Feedback: Joint vs. Separate Source-Channel Coding
Yi Song, Tianyu Yang, Mahdi Barzegar Khalilsarai, and Giuseppe Caire

TL;DR
This paper investigates downlink CSIT feedback in massive MIMO systems, comparing joint and separate source-channel coding, and proposes a practical JSCC scheme that leverages channel statistics to improve estimation accuracy with minimal delay.
Contribution
It provides a theoretical lower bound on feedback schemes, proposes a practical JSCC method exploiting second-order statistics, and demonstrates its superior performance through numerical analysis.
Findings
Proposed JSCC scheme outperforms baseline and deep learning methods.
Theoretical lower bounds on channel estimation MSE are derived.
The scheme approaches optimal DR performance at practical SNR levels.
Abstract
The acquisition of Downlink (DL) channel state information at the transmitter (CSIT) is known to be a challenging task in multiuser massive MIMO systems when uplink/downlink channel reciprocity does not hold (e.g., in frequency division duplexing systems). From a coding viewpoint, the DL channel state acquired at the users via DL training can be seen as an information source that must be conveyed to the base station via the UL communication channels. The transmission of a source through a channel can be accomplished either by separate or joint source-channel coding (SSCC or JSCC). In this work, using classical remote distortion-rate (DR) theory, we first provide a theoretical lower bound on the channel estimation mean-square-error (MSE) of both JSCC and SSCC-based feedback schemes, which however requires encoding of large blocks of successive channel states and thus cannot be used in…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Wireless Communication Techniques · Advanced Wireless Communication Technologies
