LEO- and RIS-Empowered User Tracking: A Riemannian Manifold Approach

Pinjun Zheng;Xing Liu;Tareq Y. Al-Naffouri
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Abstract

Low Earth orbit (LEO) satellites and reconfigurable intelligent surfaces (RISs) have recently drawn significant attention as two transformative technologies, and the synergy between them emerges as a promising paradigm for providing cross-environment communication and positioning services. This paper investigates an integrated terrestrial and non-terrestrial wireless network that leverages LEO satellites and RISs to achieve simultaneous tracking of the three-dimensional (3D) position, 3D velocity, and 3D orientation of user equipment (UE). To address inherent challenges including nonlinear observation function, constrained UE state, and unknown observation statistics, we develop a Riemannian manifold-based unscented Kalman filter (UKF) method. This method propagates statistics over nonlinear functions using generated sigma points and maintains state constraints through projection onto the defined manifold space. Additionally, by employing Fisher information matrices (FIMs) of the sigma points, a belief assignment principle is proposed to approximate the unknown observation covariance matrix, thereby ensuring accurate measurement updates in the UKF procedure. Numerical results demonstrate a substantial enhancement in tracking accuracy facilitated by RIS integration, despite urban signal reception challenges from LEO satellites. In addition, extensive simulations underscore the superior performance of the proposed tracking method and FIM-based belief assignment over the adopted benchmarks. Furthermore, the robustness of the proposed UKF is verified across various uncertainty levels.
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LEO 和 RIS 驱动的用户跟踪:黎曼曲面方法
近地轨道(LEO)卫星和可重构智能表面(RISs)作为两种变革性技术最近引起了极大的关注,它们之间的协同作用成为提供跨环境通信和定位服务的有前途的范例。本文研究了一种综合地面和非地面无线网络,该网络利用LEO卫星和RISs实现对用户设备(UE)的三维(3D)位置、三维速度和三维方向的同时跟踪。为解决观测函数非线性、UE状态受限、观测统计量未知等问题,提出了一种基于黎曼流形的无气味卡尔曼滤波(UKF)方法。该方法使用生成的sigma点在非线性函数上传播统计信息,并通过投影到定义的流形空间上保持状态约束。此外,利用西格玛点的Fisher信息矩阵(FIMs),提出了一种信念赋值原则来近似未知观测协方差矩阵,从而保证了UKF过程中测量更新的准确性。数值结果表明,尽管来自低轨道卫星的城市信号接收存在挑战,但RIS集成大大提高了跟踪精度。此外,大量的仿真强调了所提出的跟踪方法和基于fim的信念分配优于所采用的基准。此外,所提出的UKF的鲁棒性在各种不确定性水平上得到验证。
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Table of Contents IEEE Communications Society Information Corrections to “Coverage Rate Analysis for Integrated Sensing and Communication Networks” IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial: Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part II
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