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Novel deep reinforcement learning-based delay-constrained buffer-aided relay selection in cognitive cooperative networks

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journal contribution
posted on 2020-11-12, 09:38 authored by Chong Huang, Jie Zhong, Yu GongYu Gong, Zaid Abdullah, Gaojie Chen
In this Letter, a deep reinforcement learning-based approach is proposed for the delay-constrained buffer-aided relay selection in a cooperative cognitive network. The proposed learning algorithm can efficiently solve the complicated relay selection problem, and achieves the optimal throughput when the buffer size and number of relays are large. In particular, the authors use the deep-Q-learning to design an agent to estimate a specific action for each state of the system, which is then utilised to provide an optimum trade-off between throughput and a given delay constraint. Simulation results are provided to demonstrate the advantages of the proposed scheme over conventional selection methods. More specifically, compared to the max-ratio selection criteria, where the relay with the highest signal-to-interference ratio is selected, the proposed scheme achieves a significant throughput gain with higher throughput-delay balance.

Funding

Communications Signal Processing Based Solutions for Massive Machine-to-Machine Networks (M3NETs)

Engineering and Physical Sciences Research Council

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History

School

  • Mechanical, Electrical and Manufacturing Engineering

Published in

Electronics Letters

Volume

56

Issue

21

Pages

1148 - 1150

Publisher

IET - Institute of Electronic Technology

Version

  • AM (Accepted Manuscript)

Rights holder

© The Institution of Engineering and Technology

Publisher statement

This paper is a postprint of a paper submitted to and accepted for publication in Electronics Letters and is subject to Institution of Engineering and Technology Copyright. The copy of record is available at the IET Digital Library.

Acceptance date

2020-07-13

Publication date

2020-09-01

Copyright date

2020

ISSN

0013-5194

eISSN

1350-911X

Language

  • en

Depositor

Dr Yu Gong. Deposit date: 10 November 2020