论文标题
在用户移动性和空间宽带效果下,支持RIS的SISO定位
RIS-Enabled SISO Localization under User Mobility and Spatial-Wideband Effects
论文作者
论文摘要
可重新配置的智能表面(RIS)是第六代(6G)无线系统的有前途的技术推动力,并在本地化和通信中应用。在本文中,我们考虑了基于从单个Antenna基站接收的信号将单人体用户定位在3D空间中的问题,并考虑了从RIS的信号,考虑了用户和空间宽带(WB)效果的移动性。为此,我们首先在远场假设下得出空间 - WB通道模型,用于正交频划分多路复用信号传输,其用户具有恒定的速度。我们得出了Cramer Rao边界,以作为基准。此外,我们设计了一个低复杂性估计器,该估计量以高信噪比达到边界。我们的估计器忽略了空间WB的效果,并通过估计径向速度并以迭代方式弥补其效果来处理用户移动性。我们表明,空间WB效应可以降低大RIS大小的定位精度和大信号带宽,因为到达或出发方向偏离RIS正常。特别是,对于64x64 RI,所提出的估计量对空间WB效应的弹性高达140 MHz带宽。关于用户移动性,我们的结果表明,用户的速度既不影响估计器的界限也不影响准确性。具体而言,我们观察到,具有高速(42 m/s)的用户状态几乎可以与静态用户相同的精度估算。
Reconfigurable intelligent surface (RIS) is a promising technological enabler for the 6th generation (6G) of wireless systems with applications in localization and communication. In this paper, we consider the problem of positioning a single-antenna user in 3D space based on the received signal from a single-antenna base station and reflected signal from an RIS by taking into account the mobility of the user and spatial-wideband (WB) effects. To do so, we first derive the spatial-WB channel model under the far-field assumption, for orthogonal frequency-division multiplexing signal transmission with the user having a constant velocity. We derive the Cramer Rao bounds to serve as a benchmark. Furthermore, we devise a low-complexity estimator that attains the bounds in high signal-to-noise ratios. Our estimator neglects the spatial-WB effects and deals with the user mobility by estimating the radial velocities and compensating for their effects in an iterative fashion. We show that the spatial-WB effects can degrade the localization accuracy for large RIS sizes and large signal bandwidths as the direction of arrival or departure deviate from the RIS normal. In particular, for a 64X64 RIS, the proposed estimator is resilient against the spatial-WB effects up to 140 MHz bandwidth. Regarding user mobility, our results suggest that the velocity of the user influences neither the bounds nor the accuracy of our estimator. Specifically, we observe that the state of the user with a high speed (42 m/s) can be estimated virtually with the same accuracy as a static user.