用于离散响应在线 RIS 配置的多分支注意力卷积神经网络:神经进化方法

George Stamatelis, Kyriakos Stylianopoulos, George C. Alexandropoulos
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引用次数: 0

摘要

在本文中,我们考虑了在可重构智能表面(RIS)供电的多输入单输出(MISO)通信系统中,如何联合控制具有离散响应单元元素的可重构智能表面(RIS)的配置和基于码本的发射前置编码器的问题。RIS 的可调单元和预编码矢量需要实时联合修改,以应对无线信道的快速变化,这使得应用复杂的离散优化算法变得不切实际。针对这一设计目标,我们提出了一种新颖的多分支注意力卷积神经网络(MBACNN)架构,并利用神经进化论(NE)对其进行了优化,从而有效地解决了因 RIS 元素的离散相位状态而产生的不可分问题。所有相关链路的信道矩阵首先传递给独立的自注意层,以获得初始嵌入,然后将其连接并传递给卷积网络进行空间特征提取,最后再馈送给单元素多层感知器进行最终的 RIS 相位配置计算。随后,我们将 MBACNN 架构扩展到多 RIS 增强型 MISO 通信系统,并介绍了一种基于近地网络的新型优化方法,用于多 RIS 的在线分布式配置。通过对随机和几何信道模型进行广泛的数值评估,展示了所提出的单RIS方法优于基于学习和经典离散优化基准。此外,还证明了所提出的分布式多 RIS 方法优于带前馈神经网络的分布式控制器和完全集中式控制器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Branch Attention Convolutional Neural Network for Online RIS Configuration with Discrete Responses: A Neuroevolution Approach
In this paper, we consider the problem of jointly controlling the configuration of a Reconfigurable Intelligent Surface (RIS) with unit elements of discrete responses and a codebook-based transmit precoder in RIS-empowered Multiple-Input Single-Output (MISO) communication systems. The adjustable elements of the RIS and the precoding vector need to be jointly modified in real time to account for rapid changes in the wireless channels, making the application of complicated discrete optimization algorithms impractical. We present a novel Multi-Branch Attention Convolutional Neural Network (MBACNN) architecture for this design objective which is optimized using NeuroEvolution (NE), leveraging its capability to effectively tackle the non-differentiable problem arising from the discrete phase states of the RIS elements. The channel matrices of all involved links are first passed to separate self-attention layers to obtain initial embeddings, which are then concatenated and passed to a convolutional network for spatial feature extraction, before being fed to a per-element multi-layered perceptron for the final RIS phase configuration calculation. Our MBACNN architecture is then extended to multi-RIS-empowered MISO communication systems, and a novel NE-based optimization approach for the online distributed configuration of multiple RISs is presented. The superiority of the proposed single-RIS approach over both learning-based and classical discrete optimization benchmarks is showcased via extensive numerical evaluations over both stochastic and geometrical channel models. It is also demonstrated that the proposed distributed multi-RIS approach outperforms both distributed controllers with feedforward neural networks and fully centralized ones.
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