SPAIJun 26, 2025

Demonstrating Interoperable Channel State Feedback Compression with Machine Learning

arXiv:2506.21796v12 citationsh-index: 36IEEE wireless communications
Originality Incremental advance
AI Analysis

This work addresses the practical implementation challenge for ML-based feedback compression in 6G networks, representing an incremental step towards commercialization.

The paper tackled the lack of real-world demonstrations for machine learning-based channel state feedback compression in wireless networks by developing a novel interoperable training approach, achieving accurate channel reconstruction and downlink throughput gains without sharing models between devices and base stations.

Neural network-based compression and decompression of channel state feedback has been one of the most widely studied applications of machine learning (ML) in wireless networks. Various simulation-based studies have shown that ML-based feedback compression can result in reduced overhead and more accurate channel information. However, to the best of our knowledge, there are no real-life proofs of concepts demonstrating the benefits of ML-based channel feedback compression in a practical setting, where the user equipment (UE) and base station have no access to each others' ML models. In this paper, we present a novel approach for training interoperable compression and decompression ML models in a confidential manner, and demonstrate the accuracy of the ensuing models using prototype UEs and base stations. The performance of the ML-based channel feedback is measured both in terms of the accuracy of the reconstructed channel information and achieved downlink throughput gains when using the channel information for beamforming. The reported measurement results demonstrate that it is possible to develop an accurate ML-based channel feedback link without having to share ML models between device and network vendors. These results pave the way for a practical implementation of ML-based channel feedback in commercial 6G networks.

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