4.7 Article

Pervasive Machine Learning for Smart Radio Environments Enabled by Reconfigurable Intelligent Surfaces

Journal

PROCEEDINGS OF THE IEEE
Volume 110, Issue 9, Pages 1494-1525

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JPROC.2022.3174030

Keywords

Artificial neural networks (ANNs); deep reinforcement learning (DRL); future wireless networks; reconfigurable intelligent surface (RIS); smart radio environment

Funding

  1. China National Key Research and Development Program [2021YFA1000500]
  2. National Natural Science Foundation of China [62101492]
  3. Zhejiang Provincial Natural Science Foundation of China [LR22F010002]
  4. National Natural Science Fund for Excellent Young Scientists Fund Program (Overseas)
  5. Ng Teng Fong Charitable Foundation
  6. Zhejiang University Education Foundation Qizhen Scholar Foundation
  7. Fundamental Research Funds for the Central Universities [2021FZZX001-21]
  8. Singapore Ministry of Education Tier 2 [MOE-000168-01]

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This article introduces the application of reconfigurable intelligent surfaces (RISs) technology in smart wireless environments and discusses online machine learning approaches in multiuser and multi-RIS-empowered wireless systems. With the objective of maximizing sum-rate, a comprehensive problem formulation and generic algorithmic steps based on deep reinforcement learning (DRL) are presented. Additionally, practical considerations and research challenges for multi-RIS-empowered wireless communications in the 6G era are discussed.
The emerging technology of reconfigurable intelligent surfaces (RISs) is provisioned as an enabler of smart wireless environments, offering a highly scalable, low-cost, hardware-efficient, and almost energy-neutral solution for dynamic control of the propagation of electromagnetic signals over the wireless medium, ultimately providing increased environmental intelligence for diverse operation objectives. One of the major challenges with the envisioned dense deployment of RISs in such reconfigurable radio environments is the efficient configuration of multiple metasurfaces with limited, or even the absence of, computing hardware. In this article, we consider multiuser and multi-RIS-empowered wireless systems and present a thorough survey of the online machine learning approaches for the orchestration of their various tunable components. Focusing on the sum-rate maximization as a representative design objective, we present a comprehensive problem formulation based on deep reinforcement learning (DRL). We detail the correspondences among the parameters of the wireless system and the DRL terminology, and devise generic algorithmic steps for the artificial neural network training and deployment while discussing their implementation details. Further practical considerations for multi-RIS-empowered wireless communications in the sixth-generation (6G) era are presented along with some key open research challenges. Different from the DRL-based status quo, we leverage the independence between the configuration of the system design parameters and the future states of the wireless environment, and present efficient multiarmed bandits approaches, whose resulting sum-rate performances are numerically shown to outperform random configurations, while being sufficiently close to the conventional deep Q network (DQN) algorithm, but with lower implementation complexity.

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