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Transfer Learning for Signal Detection in Wireless Networks

Van Huynh, Nguyen; Li, Geoffrey Ye

Authors

Nguyen Van Huynh

Geoffrey Ye Li



Abstract

The last decade has witnessed the rapid growth of deep learning (DL) applications in wireless communications, especially for channel estimation and signal detection. However, conventional DL techniques are usually trained for a specific scenario. Therefore, it is required to be retrained when applying for new wireless systems. Unfortunately, acquiring enough training data for good detection performance may be costly and time-consuming. Even if the training data is sufficient, conventional DL techniques usually require a long training time. Consequently, this can significantly impact the performance of DL techniques and hinder their robustness. To address all these limitations, this letter introduces a transfer learning framework that can transfer knowledge from a source system to improve the training process of target systems with limited training data. Our simulation results demonstrate that the proposed solution outperforms the conventional deep learning methods in terms of channel estimation and signal detection.

Citation

Van Huynh, N., & Li, G. Y. (2022). Transfer Learning for Signal Detection in Wireless Networks. IEEE Wireless Communications Letters, 11(11), 2325-2329. https://doi.org/10.1109/lwc.2022.3202117

Journal Article Type Article
Acceptance Date Aug 24, 2022
Online Publication Date Aug 26, 2022
Publication Date 2022-11
Deposit Date Mar 29, 2023
Journal IEEE Wireless Communications Letters
Print ISSN 2162-2337
Electronic ISSN 2162-2345
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
Volume 11
Issue 11
Pages 2325-2329
DOI https://doi.org/10.1109/lwc.2022.3202117
Keywords Transfer learning, signal detection, channel estimation, deep learning, OFDM