5G-Enabled Vehicle Positioning Using EKF With Dynamic Covariance Matrix Tuning

IF 2.1 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Canadian Journal of Electrical and Computer Engineering Pub Date : 2022-09-08 DOI:10.1109/ICJECE.2022.3187348
Sharief Saleh;Amr S. El-Wakeel;Aboelmagd Noureldin
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引用次数: 6

Abstract

The novel signaling and architectural features of 5G promise a major role in providing accurate, precise, and continuous positioning where satellite-based positioning systems may fail. In the case of time-based trilateration, optimal estimators like extended Kalman filter (EKF) can be used to estimate the position with the aid of time-of-arrival (TOA) and round-trip-time (RTT) measurements. However, the linearization of the measurement model used by EKF may lead to positioning errors. Such errors are further magnified due to the narrow geometrical placement of road-side 5G micro base stations (BSs) and due to the closeness of the vehicle to these BSs, leading to significant positioning errors. In this article, the impact of the 5G geometrical setup on the traditional EKF positioning estimation is analyzed. In addition, we propose a dynamically tuned covariance matrix (DTCM) EKF that is automatically tuned based on the measured ranges to trust less the BSs that would lead to high positioning errors. The performance of the proposed method was tested in Siradel’s S_5GChannel simulator that mimics the urban canyons of downtown Toronto. The proposed DTCM-EKF has sustained reliable positioning with sub-meter-level accuracy 90% of the time. The DTCM-EKF has reduced the rms and maximum position error of the EKF by approximately 60% and 67%, respectively.
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利用动态协方差矩阵调整的EKF实现5G车辆定位
5G的新型信号和架构特征有望在卫星定位系统可能出现故障的情况下,在提供准确、精确和连续定位方面发挥重要作用。在基于时间的三边测量的情况下,可以使用诸如扩展卡尔曼滤波器(EKF)的最优估计器来借助于到达时间(TOA)和往返时间(RTT)测量来估计位置。然而,EKF使用的测量模型的线性化可能导致定位误差。由于路边5G微基站(BS)的狭窄几何位置以及车辆与这些BS的接近,这些误差被进一步放大,从而导致显著的定位误差。本文分析了5G几何设置对传统EKF定位估计的影响。此外,我们提出了一种动态调谐协方差矩阵(DTCM)EKF,它是基于测量范围自动调谐的,以减少对BS的信任,从而导致高定位误差。该方法的性能在Siradel的s_5GChannel模拟器中进行了测试,该模拟器模拟了多伦多市中心的城市峡谷。所提出的DTCM-EKF在90%的时间内具有亚米级精度的持续可靠定位。DTCM-EKF将EKF的rms和最大位置误差分别降低了约60%和67%。
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