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Deep autoencoder learning for relay-assisted cooperative communication systems

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journal contribution
posted on 2025-02-11, 04:33 authored by Yuxin Lu, Peng ChengPeng Cheng, Zhuo Chen, Yonghui Li, Wai Ho Mow, Branka Vucetic
Emerging recently as a novel concept in communication system design, end-to-end learning introduces deep neural networks (NNs) to represent the transmitter and receiver functions. Consequently, the whole system can be interpreted as an autoencoder (AE), which can be optimized from a holistic approach through a data-driven training method. Until now, the AE technique is mainly developed for point-to-point communication scenarios. In this paper, we aim to develop a novel NN-based AE scheme for relay-assisted cooperative communication systems. Specifically, three NN components are constructed to learn the behavior of the transmitter, relay node, and receiver, respectively. As the conventional end-to-end training is inapplicable, a novel two-stage training approach is proposed to indirectly solve the end-to-end training problem. The implicit approximations involved are analytically expressed based on information theory, offering insights on the achievable performance with the proposed training method. The proposed AE model eliminates the need for channel state information and noise variance of any link, and is adaptive to the variation in the input block length. Simulation results verify its advantages over the conventional decode-and-forward (DF) and amplify-and-forward (AF) schemes in various scenarios.

Funding

The work of Y. Lu and W. H. Mow was supported by the Hong Kong Research Grants Council under GRF Project no. 16233816. The work of P. Cheng was supported by ARC under Grant DE190100162.

History

Publication Date

2020-09-01

Journal

IEEE Transactions on Communications

Volume

68

Issue

9

Pagination

18p. (p. 5471-5488)

Publisher

Institute of Electrical and Electronics Engineers

ISSN

0090-6778

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