EURASIP Journal on Advances in Signal Processing (Jan 2023)

Deep reinforcement learning-based adaptive modulation for OFDM underwater acoustic communication system

  • Xuerong Cui,
  • Peihao Yan,
  • Juan Li,
  • Shibao Li,
  • Jianhang Liu

DOI
https://doi.org/10.1186/s13634-022-00961-5
Journal volume & issue
Vol. 2023, no. 1
pp. 1 – 23

Abstract

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Abstract Due to the time-varying and space-varying characteristics of the underwater acoustic channel, the communication process may be seriously disturbed. Thus, the underwater acoustic communication system is facing the challenges of alleviating interference and improving communication quality and communication efficiency through adaptive modulation. In order to select the optimal modulation mode adaptively and maximize the system throughput ensuring that the bit error rate (BER) meets the transmission requirements, this paper introduces deep reinforcement learning (DRL) into orthogonal frequency division multiplexing acoustic communication system. The adaptive modulation is mapped into a Markov decision process with unknown state transition probability. Thereby, the underwater communication channel environment is regarded as the state of DRL, and the modulation mode is regarded as action. The system returns channel state information (CSI) and signal–noise ratio in every time slot through the feedback link. Because the Deep Q-Network optimizes in the changing state space of each time slot, it is suitable for a variety of different CSI. Finally, simulations in different underwater environments (SWellEx-96) show that the proposed adaptive modulation scheme can obtain lower BER and improve the system throughput effectively.

Keywords