Intelligent surfaces comprising of cost effective, nearly passive, and reconfigurable unit elements are lately gaining increasing interest due to their potential in enabling fully programmable wireless environments. They are envisioned to offer environmental intelligence for diverse communication objectives, when coated on various objects of the deployment area of interest. To achieve this overarching goal, the channels where the Reconfigurable Intelligent Surfaces (RISs) are involved need to be in principle estimated. However, this is a challenging task with the currently available hardware RIS architectures requiring lengthy training periods among the network nodes utilizing RIS-assisted wireless communication. In this paper, we present a novel RIS architecture comprising of any number of passive reflecting elements, a simple controller for their adjustable configuration, and a single Radio Frequency (RF) chain for baseband measurements. Capitalizing on this architecture and assuming sparse wireless channels in the beamspace domain, we present an alternating optimization approach for explicit estimation of the channel gains at the RIS elements attached to the single RF chain. Representative simulation results demonstrate the channel estimation accuracy and achievable end-to-end performance for various training lengths and numbers of reflecting unit elements.
翻译:由成本效益高、几乎被动和可重新配置的单元元素组成的智能表面最近越来越受到越来越多的关注,因为它们有可能促成完全可编程的无线环境。设想它们为各种通信目标提供环境情报,如果涂在相关部署区的不同物体上。为了实现这一总体目标,需要原则上估计可重新配置的智能表面(RIS)所涉及的渠道。然而,由于目前可用的硬件RIS结构需要利用RIS辅助无线通信在网络节点中进行长时间的培训,因此这是一项具有挑战性的任务。在本文件中,我们提出了一个新型的RIS结构,由任何若干被动反映元素组成,一个简单的可调整配置控制器,以及一个用于基础波段测量的单一无线电频率链组成。利用这一结构并假设光空域范围内的稀少无线通道,我们提出一种交替优化办法,以明确估计单一RIS链所附的RIS元素的频道收益。代表的模拟结果显示各种培训长度和反射单元数的频道估计准确性和可实现端至端性能。