4.7 Article

Learning-Based Adaptive IRS Control With Limited Feedback Codebooks

期刊

IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS
卷 21, 期 11, 页码 9566-9581

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TWC.2022.3178055

关键词

Behavioral sciences; Channel estimation; Wireless communication; Capacitance; Protocols; Integrated circuit modeling; Time-varying channels; Intelligent reflecting surface (IRS); reconfigurable intelligent surface (RIS); software-controlled meta-surface; limited feedback; adaptive codebook; deep reinforcement learning

资金

  1. National Spectrum Consortium (NSC) [W15QKN-15-9-1004]
  2. Office of Naval Research (ONR) [N00014-21-1-2472]
  3. NSF [CNS-2146171]
  4. National Science Foundation (NSF) [CNS1955561]

向作者/读者索取更多资源

Intelligent reflecting surfaces (IRS) can change the wireless propagation environment by adjusting their reflection coefficients, but conventional optimization-based IRS control protocols are not applicable in practical settings. Therefore, we propose an adaptive codebook-based limited feedback protocol and develop several augmented schemes, which have been shown to significantly improve the data rate.
Intelligent reflecting surfaces (IRS) consist of configurable meta-atoms, which can change the wireless propagation environment through design of their reflection coefficients. We consider a practical setting where (i) the IRS reflection coefficients are configured by adjusting tunable elements embedded in the meta-atoms, (ii) the IRS reflection coefficients are affected by the incident angles of the incoming signals, (iii) the IRS is deployed in multi-path, time-varying channels, and (iv) the feedback link from the base station to the IRS has a low data rate. Conventional optimization-based IRS control protocols, which rely on channel estimation and conveying the optimized variables to the IRS, are not applicable in this setting due to the difficulty of channel estimation and the low feedback rate. Therefore, we develop a novel adaptive codebook-based limited feedback protocol where only a codeword index is transferred to the IRS. We propose two solutions for adaptive codebook design, random adjacency (RA) and deep neural network policy-based IRS control (DPIC), both of which only require the end-to-end compound channels. We further develop several augmented schemes based on RA and DPIC. Numerical evaluations show that the data rate and average data rate over one coherence time are improved substantially by our schemes.

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