This chapter overviews the concept of Smart Wireless Environments (SWEs) motivated by the emerging technology of Reconfigurable Intelligent Surfaces (RISs). The operating principles and state-of-the-art hardware architectures of programmable metasurfaces are first introduced. Subsequently, key performance objectives and use cases of RIS-enabled SWEs, including spectral and energy efficiency, physical-layer security, integrated sensing and communications, as well as the emerging paradigm of over-the-air computing, are discussed. Focusing on the recent trend of Beyond-Diagonal (BD) RISs, two distributed designs of respective SWEs are presented. The first deals with a multi-user Multiple-Input Single-Output (MISO) system operating within the area of influence of a SWE comprising multiple BD-RISs. A hybrid distributed and fusion machine learning framework based on multi-branch attention-based convolutional Neural Networks (NNs), NN parameter sharing, and neuroevolutionary training is presented, which enables online mapping of channel realizations to the BD-RIS configurations as well as the multi-user transmit precoder. Performance evaluation results showcase that the distributedly optimized RIS-enabled SWE achieves near-optimal sum-rate performance with low online computational complexity. The second design focuses on the wideband interference MISO broadcast channel, where each base station exclusively controls one BD-RIS to serve its assigned group of users. A cooperative optimization framework that jointly designs the base station transmit precoders as well as the tunable capacitances and switch matrices of all metasurfaces is presented. Numerical results demonstrating the superior sum-rate performance of the designed RIS-enabled SWE for multi-cell MISO networks over benchmark schemes, considering non-cooperative configuration and conventional diagonal metasurfaces, are presented.
翻译:本章概述了由可重构智能表面(RIS)新兴技术驱动的智能无线环境(SWE)概念。首先介绍了可编程超表面的工作原理和前沿硬件架构。随后,讨论了RIS赋能SWE的关键性能目标与应用场景,包括频谱效率与能量效率、物理层安全、集成感知与通信,以及新兴的空中计算范式。聚焦于超对角(BD)RIS的最新发展趋势,提出了两种相应的SWE分布式设计方案。第一种方案针对在由多个BD-RIS构成的影响区域内运行的多用户多输入单输出(MISO)系统。提出了一种基于多分支注意力卷积神经网络(NN)、NN参数共享和神经进化训练的混合分布式融合机器学习框架,该框架能够在线将信道实现映射至BD-RIS配置及多用户发射预编码器。性能评估结果表明,经分布式优化的RIS赋能SWE能以较低的在线计算复杂度实现接近最优的和速率性能。第二种设计专注于宽带干扰MISO广播信道,其中每个基站独立控制一个BD-RIS为其分配的用户组服务。提出了一个协同优化框架,联合设计基站发射预编码器以及所有超表面的可调电容与开关矩阵。数值结果表明,相较于非协同配置和传统对角超表面等基准方案,所设计的RIS赋能SWE在多小区MISO网络中展现出更优的和速率性能。