Deep Reinforcement Learning Based Beamforming in RIS-Assisted MIMO System Under Hardware Loss

  • Sun, Yuan
  • Bai, Zhiquan
  • Zhao, Jinqiu
  • Ma, Dejie
  • Xian, Zhaoxia
  • 외 1명
Citations

SCOPUS

0

초록

Reconfigurable intelligent surface (RIS) is considered as one of the key enabling technologies for future 6G wireless communication by realizing an intelligent radio environment. RIS is used as reflective array to change the transmission and coverage of radio frequency (RF) signals. In this paper, we propose a deep reinforcement learning (DRL) based RIS beamforming design in practical scenarios where RIS may have hardware loss, and the soft actor-critic (SAC)-exploration algorithm is presented to solve the beamforming design. The algorithm reduces the prediction error by introducing a perturbation signal to influence the action prediction. Simulation results show that our proposed SAC-exploration algorithm has significant improvement over the typical SAC algorithm, which verifies the effectiveness of the proposed algorithm, © 2024 Global IT Research Institute - GIRI.

키워드

multiple input multiple output (MIMO)radio frequencyReconfigurable intelligent surfaces (RIS)soft actor-critic (SAC)time division duplex (TDD)
제목
Deep Reinforcement Learning Based Beamforming in RIS-Assisted MIMO System Under Hardware Loss
저자
Sun, YuanBai, ZhiquanZhao, JinqiuMa, DejieXian, ZhaoxiaKwak, KyungSup
DOI
10.23919/ICACT60172.2024.10472006
발행일
2024
유형
Conference paper
저널명
International Conference on Advanced Communication Technology, ICACT
페이지
193 ~ 198