城市峡谷中GNSS误差最小化的双频协同定位

Simon Ollander, F. Schiegg, Friedrich-Wilhelm Bode, M. Baum
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引用次数: 1

摘要

全球导航卫星系统(GNSS)在开阔的天空条件下提供精确定位,例如高速公路。然而,在城市峡谷中,建筑物阻挡和反射信号,造成多径定位误差。多频传输和协同定位是减少多径误差的两种技术。尽管如此,它们在减少多径误差方面的单个和组合优势的大小仍是未知的。为了填补这一空白,我们在开放天空环境和城市环境中模拟了四辆车的双频协同定位。我们比较了两种位置估计的求解算法:高斯-牛顿求解器(GN)和扩展卡尔曼滤波(EKF)。本文给出了在上述假设下这两种算法的性能。此外,我们还展示了如何使用双频接收的信息来选择最相关的卫星。在城市环境中,采用双频接收和协同定位的GN和EKF是均方根定位误差最小的方案(小于2.5 m),在模拟城市环境中,双频接收比协同定位对减小多径误差的贡献更大。因此,在开发汽车定位系统时,最好将多频接收与协同定位相结合,但多频接收优先考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual-frequency Collaborative Positioning for Minimization of GNSS Errors in Urban Canyons
Global Navigation Satellite Systems (GNSS) provide precise positioning under open-sky conditions, such as highways. However, in urban canyons, buildings block and reflect the signals, causing multipath positioning errors. Multi-frequency transmission and collaborative positioning are two technologies that have been proposed to reduce multipath errors. Still, the magnitude of their individual and combined advantage in reducing multipath errors is unknown. To fill this gap, we simulated dual-frequency collaborative positioning with four vehicles in an open-sky environment and in an urban environment. We compared two solution algorithms for position estimation: the Gauss-Newton solver (GN) and the extended Kalman filter (EKF). This paper presents the performance of these two algorithms under the previously mentioned assumptions. Furthermore, we show how the information from dual-frequency reception can be used to select the most relevant satellites. In the urban environment, the GN and the EKF using dual-frequency reception and collaborative positioning are the solutions with the smallest RMS positioning error (under 2.5 m), Additionally, in the simulated urban environment, dual-frequency reception contributes more to reducing multipath errors than collaborative positioning. As a consequence, when developing automotive positioning systems, multi-frequency reception and collaborative positioning should ideally be combined, but with higher priority on multi-frequency reception.
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