利用高维 RIS 信息进行定位:错误元素的影响是什么?

Tuo Wu;Cunhua Pan;Kangda Zhi;Hong Ren;Maged Elkashlan;Cheng-Xiang Wang;Robert Schober;Xiao-Hu You
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摘要

本文提出了一种使用可重构智能表面(RIS)接收信号(即 RIS 信息)的新型定位算法。与 BS 接收信号(即 BS 信息)相比,RIS 信息提供了更高的维度和更丰富的特征集,从而增强了区分移动用户(MU)位置的能力。此外,我们还解决了一个实际问题,即 RIS 中包含一些无法接收信号的未知(数量和位置)故障元素。首先,我们利用迁移学习设计了一种两阶段迁移学习(TPTL)算法,旨在准确检测故障元件。然后,我们的目标是重新获得从故障元件中丢失的信息,并重建完整的高维 RIS 信息以进行定位。为此,我们提出了一种转移增强双阶段(TEDS)算法。在第一阶段,我们整合了 CNN 和变异自动编码器 (VAE) 以获得 RIS 信息,在第二阶段,这些信息被输入到传输的 DenseNet 121 以估计 MU 的位置。为了获得更多信息,我们提出了另一种算法,即转移增强直接指纹算法(TEDF),它只需要 BS 信息。TEDS 和 TEDF 之间的比较揭示了故障元素检测的有效性,以及利用高维 RIS 信息进行定位的好处。此外,我们的实证结果表明,定位算法的性能由高维 RIS 信息主导,并且对未优化的相移和信噪比 (SNR) 具有鲁棒性。
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Exploit High-Dimensional RIS Information to Localization: What Is the Impact of Faulty Element?
This paper proposes a novel localization algorithm using the reconfigurable intelligent surface (RIS) received signal, i.e., RIS information. Compared with BS received signal, i.e., BS information, RIS information offers higher dimension and richer feature set, thereby providing an enhanced capacity to distinguish positions of the mobile users (MUs). Additionally, we address a practical scenario where RIS contains some unknown (number and places) faulty elements that cannot receive signals. Initially, we employ transfer learning to design a two-phase transfer learning (TPTL) algorithm, designed for accurate detection of faulty elements. Then our objective is to regain the information lost from the faulty elements and reconstruct the complete high-dimensional RIS information for localization. To this end, we propose a transfer-enhanced dual-stage (TEDS) algorithm. In Stage I, we integrate the CNN and variational autoencoder (VAE) to obtain the RIS information, which in Stage II, is input to the transferred DenseNet 121 to estimate the location of the MU. To gain more insight, we propose an alternative algorithm named transfer-enhanced direct fingerprint (TEDF) algorithm which only requires the BS information. The comparison between TEDS and TEDF reveals the effectiveness of faulty element detection and the benefits of utilizing the high-dimensional RIS information for localization. Besides, our empirical results demonstrate that the performance of the localization algorithm is dominated by the high-dimensional RIS information and is robust to unoptimized phase shifts and signal-to-noise ratio (SNR).
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Table of Contents IEEE Open Access Publishing Guest Editorial Positioning and Sensing Over Wireless Networks—Part II TechRxiv: Share Your Preprint Research With the World! IEEE Journal on Selected Areas in Communications Publication Information
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