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Autori principali: Ye, Ziqiang, Liao, Sikai, Gao, Yulan, Fang, Shu, Xiao, Yue, Xiao, Ming, Zammit, Saviour
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2407.05928
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author Ye, Ziqiang
Liao, Sikai
Gao, Yulan
Fang, Shu
Xiao, Yue
Xiao, Ming
Zammit, Saviour
author_facet Ye, Ziqiang
Liao, Sikai
Gao, Yulan
Fang, Shu
Xiao, Yue
Xiao, Ming
Zammit, Saviour
contents With the burgeon deployment of the fifth-generation new radio (5G NR) networks, the codebook plays a crucial role in enabling the base station (BS) to acquire the channel state information (CSI). Different 5G NR codebooks incur varying overheads and exhibit performance disparities under diverse channel conditions, necessitating codebook adaptation based on channel conditions to reduce feedback overhead while enhancing performance. However, existing methods of 5G NR codebooks adaptation require significant overhead for model training and feedback or fall short in performance. To address these limitations, this letter introduces a federated reservoir computing framework designed for efficient codebook adaptation in computationally and feedback resource-constrained mobile devices. This framework utilizes a novel series of indicators as input training data, striking an effective balance between performance and feedback overhead. Compared to conventional models, the proposed codebook adaptation via federated reservoir computing (CA-FedRC), achieves rapid convergence and significant loss reduction in both speed and accuracy. Extensive simulations under various channel conditions demonstrate that our algorithm not only reduces resource consumption of users but also accurately identifies channel types, thereby optimizing the trade-off between spectrum efficiency, computational complexity, and feedback overhead.
format Preprint
id arxiv_https___arxiv_org_abs_2407_05928
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CA-FedRC: Codebook Adaptation via Federated Reservoir Computing in 5G NR
Ye, Ziqiang
Liao, Sikai
Gao, Yulan
Fang, Shu
Xiao, Yue
Xiao, Ming
Zammit, Saviour
Signal Processing
With the burgeon deployment of the fifth-generation new radio (5G NR) networks, the codebook plays a crucial role in enabling the base station (BS) to acquire the channel state information (CSI). Different 5G NR codebooks incur varying overheads and exhibit performance disparities under diverse channel conditions, necessitating codebook adaptation based on channel conditions to reduce feedback overhead while enhancing performance. However, existing methods of 5G NR codebooks adaptation require significant overhead for model training and feedback or fall short in performance. To address these limitations, this letter introduces a federated reservoir computing framework designed for efficient codebook adaptation in computationally and feedback resource-constrained mobile devices. This framework utilizes a novel series of indicators as input training data, striking an effective balance between performance and feedback overhead. Compared to conventional models, the proposed codebook adaptation via federated reservoir computing (CA-FedRC), achieves rapid convergence and significant loss reduction in both speed and accuracy. Extensive simulations under various channel conditions demonstrate that our algorithm not only reduces resource consumption of users but also accurately identifies channel types, thereby optimizing the trade-off between spectrum efficiency, computational complexity, and feedback overhead.
title CA-FedRC: Codebook Adaptation via Federated Reservoir Computing in 5G NR
topic Signal Processing
url https://arxiv.org/abs/2407.05928