利用可重构智能表面进行定位:主动传感方法

Zhongze Zhang, Tao Jiang, Wei Yu
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摘要

本文探讨了一个上行链路定位问题,其中基站(BS)的目标是借助可重构智能表面(RIS)定位远程用户。我们提出了一种策略,在该策略中,用户按顺序发射导航信号,而基站则根据已进行的观测,自适应地调整传感向量,包括基站波束成形向量和多个 RIS 反射系数,最终得出用户的估计位置。这是一个具有挑战性的主动传感问题,要找到最佳解决方案,需要在一个复杂的函数空间中进行搜索,而这个函数空间的维度随着测量次数的增加而增加。我们的研究表明,长短期记忆(LSTM)网络可用于利用测量之间的潜在时间相关性,自动构建可扩展的状态向量。随后,通过深度神经网络(DNN)将状态向量映射到下一时间段的传感向量。最后一个 DNN 用于将状态向量映射到估计的用户位置。数值结果表明了主动传感设计与非主动传感方法相比的优势。所提出的解决方案产生了可解释的结果,并且在感测阶段的数量上具有通用性。值得注意的是,我们的研究表明,具有一个 BS 和多个 RIS 的网络性能优于具有多个 BS 的类似网络。
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Localization with Reconfigurable Intelligent Surface: An Active Sensing Approach
This paper addresses an uplink localization problem in which a base station (BS) aims to locate a remote user with the help of reconfigurable intelligent surfaces (RISs). We propose a strategy in which the user transmits pilots sequentially and the BS adaptively adjusts the sensing vectors, including the BS beamforming vector and multiple RIS reflection coefficients based on the observations already made, to eventually produce an estimated user position. This is a challenging active sensing problem for which finding an optimal solution involves searching through a complicated functional space whose dimension increases with the number of measurements. We show that the long short-term memory (LSTM) network can be used to exploit the latent temporal correlation between measurements to automatically construct scalable state vectors. Subsequently, the state vector is mapped to the sensing vectors for the next time frame via a deep neural network (DNN). A final DNN is used to map the state vector to the estimated user position. Numerical result illustrates the advantage of the active sensing design as compared to non-active sensing methods. The proposed solution produces interpretable results and is generalizable in the number of sensing stages. Remarkably, we show that a network with one BS and multiple RISs can outperform a comparable setting with multiple BSs.
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