This paper presents a novel approach for the joint design of a reconfigurable intelligent surface (RIS) and a transmitter-receiver pair that are trained together as a set of deep neural networks (DNNs) to optimize the end-to-end communication performance at the receiver. The RIS is a software-defined array of unit cells that can be controlled in terms of the scattering and reflection profiles to focus the incoming signals from the transmitter to the receiver. The benefit of the RIS is to improve the coverage and spectral efficiency for wireless communications by overcoming physical obstructions of the line-of-sight (LoS) links. The selection process of the RIS beam codeword (out of a pre-defined codebook) is formulated as a DNN, while the operations of the transmitter-receiver pair are modeled as two DNNs, one for the encoder (at the transmitter) and the other one for the decoder (at the receiver) of an autoencoder, by accounting for channel effects including those induced by the RIS in between. The underlying DNNs are jointly trained to minimize the symbol error rate at the receiver. Numerical results show that the proposed design achieves major gains in error performance with respect to various baseline schemes, where no RIS is used or the selection of the RIS beam is separated from the design of the transmitter-receiver pair.
翻译:本文为联合设计可重新配置的智能表面(RIS)和作为一套深神经网络(DNNs)共同培训的发射机接收器-接收器对配对以优化接收器端至端通信性能的联合设计提供了一种新颖的方法。RIS是一个软件定义的单元单元阵列,可按散射和反射剖面图加以控制,以集中发报机向接收器发送信号;RIS的好处是通过克服视线链接物理障碍,提高无线通信的覆盖面和光谱效率。RIS的选定程序(在预设的代码手册中)是作为DNNNNW制定的,而发报收发机对配对的操作模式是两个DNNNNS,一个是发射机接收器接收器接收信号的,另一个是自动编码器的解码器(在接收器),通过计算频道效应,包括由RIS之间导引的效应,提高无线链接接收器的功能。DNNNNPS的选定程序是作为DNNNNRM的混合培训,在不同的设计中,在使用各种基准设计结果时,在不同的测试中,将显示各种最低设计结果。