Reconfigurable intelligent surface (RIS) is considered as a revolutionary technology for future wireless communication networks. In this letter, we consider the acquisition of the cascaded channels, which is a challenging task due to the massive number of passive RIS elements. To reduce the pilot overhead, we adopt the element-grouping strategy, where each element in one group shares the same reflection coefficient and is assumed to have the same channel condition. We analyze the channel interference caused by the element-grouping strategy and further design two deep learning based networks. The first one aims to refine the partial channels by eliminating the interference, while the second one tries to extrapolate the full channels from the refined partial channels. We cascade the two networks and jointly train them. Simulation results show that the proposed scheme provides significant gain compared to the conventional element-grouping method without interference elimination.
翻译:重新配置智能表面(RIS)被认为是未来无线通信网络的革命性技术。 在这封信中,我们认为获取级联频道是一项具有挑战性的任务,因为被动的RIS元素数量众多。为了减少试点间接费用,我们采用了元素组合战略,一个组中的每个元素都具有相同的反射系数,并假定其具有相同的频道条件。我们分析了元素组合战略造成的频道干扰,并进一步设计了两个深层次的基于学习的网络。第一个旨在通过消除干扰来改进部分渠道,而第二个则试图从精细的局部渠道外推所有渠道。我们将两个网络相叠并联合培训它们。模拟结果表明,拟议的计划与常规元素组合方法相比,可以带来显著的收益,而不会消除干扰。