Algorithms for relative train localization with GNSS and track map: Evaluation and comparison

B. Siebler, F. Müller, O. Heirich, S. Sand
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引用次数: 2

Abstract

Large safety distances between consecutive trains limit the flexibility and capacity of rail traffic. The introduction of automatic distance control between trains has the potential to reduce the safety distances. This requires an accurate and reliable distance estimation. In this paper, we therefore evaluate the performance of a relative localization system that tightly integrates the global satellite navigation system (GNSS) measurements and a map of the track network. The tight integration reduces the absolute train position to a 1-D value that describes the position on a track. The relative position is then calculated by subtracting two 1-D positions. In an empirical evaluation the tightly integrated system is compared to a loosely integrated system and a cooperative approach based solely on GNSS measurements. The cooperative approach uses GNSS pseudorange and range rate double differences, to determine the baseline between two antennas. For the loosely integrated system first the 3-D train position is estimated in an extended Kalman filter (EKF). In a second step, this position is matched to the map to obtain the position on the track. The relative position root-mean-square error (RMSE) of the different approaches is determined with a 167 km long data set, measured on a diesel train over the duration of 6 hours. The data set is divided into open sky, suburban and forest environments. For each of these environments, six different antenna distances are evaluated. The results show that the tightly and loosely integrated systems have a considerable smaller RMSE than the cooperative approach. The difference in the average performance of the two map based approaches is negligible. An advantage of the tight integration can be seen only under poor satellite visibility conditions that were encountered only sporadic during the measurements.
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基于GNSS和轨道图的列车相对定位算法:评价与比较
列车间较大的安全距离限制了轨道交通的灵活性和运力。列车间自动距离控制的引入有可能缩短安全距离。这需要精确可靠的距离估计。因此,在本文中,我们评估了紧密集成全球卫星导航系统(GNSS)测量和轨道网络地图的相对定位系统的性能。这种紧密的集成将列车的绝对位置简化为描述轨道上位置的一维值。然后通过减去两个一维位置来计算相对位置。在经验评估中,将紧密集成的系统与松散集成的系统和仅基于GNSS测量的合作方法进行比较。该合作方法利用GNSS伪距和距离速率双差,确定两天线之间的基线。对于松散集成系统,首先用扩展卡尔曼滤波(EKF)估计列车的三维位置。在第二步中,将此位置与地图匹配以获得轨道上的位置。不同方法的相对位置均方根误差(RMSE)是用167公里长的数据集确定的,该数据集是在一列柴油火车上持续6小时测量的。数据集分为露天、郊区和森林环境。对于每种环境,评估了六种不同的天线距离。结果表明,紧密和松散集成系统的均方根误差比协作方法要小得多。这两种基于映射的方法的平均性能差异可以忽略不计。紧密集成的优点只有在卫星能见度差的情况下才能看到,这种情况在测量期间只是偶尔出现。
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