城市峡谷环境下的自适应RAIM算法

Li Zhang, Junping Li, T. Cui, Shuo Liu
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引用次数: 10

摘要

接收机自主完整性监测(RAIM)已成功应用于航空领域的故障检测和排除。在航空环境下,几何精度稀释(GDOP)和伪距离测量质量良好。然而,对于城市峡谷环境,GDOP可能会增加很多,伪距离测量可能包含巨大的多径误差。在这种情况下,排除任何具有多径的伪距离测量可能会使GDOP增加更多,从而使用户的位置精度变得更差。本文提出了一种城市自适应raim (UA-RAIM)算法,以适应城市峡谷特殊的卫星几何形状和多径环境。排除精度滤波器(EAF)用于检查故障排除前后的位置精度。采用加权估计技术对故障卫星进行处理,提高了定位精度。进行静态实验,设置反射镜模拟城市峡谷环境。与RAIM算法相比,North、East和Up方向的用户定位误差分别降低了63.70%、55.25%和64.52%。从城市车辆试验来看,UA-RAIM的车辆位置较RAIM更接近于一条直线。使用UA-RAIM的95%精度从20.32m下降到16.55m,与原始精度相比约为81.45%。
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An adapted RAIM algorithm for urban canyon environment
Receiver Autonomous Integrity Monitoring (RAIM) has been successfully used for fault detection and exclusion in aviation applications. For airborne environment, the Geometric Dilution Of Precision (GDOP) and pseudo-range measurement quality is good. However, for urban canyon environment the GDOP may increase much and the pseudo-range measurement may contain huge multipath error. In this case, the exclusion of any pseudo-range measurement with multipath may make the GDOP increase much more and make the user position accuracy even worse. In this work, we propose an Urban Adapted-RAIM (UA-RAIM) algorithm to adjust the particular poor satellite geometry and multipath environment of urban canyon. Exclusion Accuracy Filter (EAF) is designed to check the position accuracy before and after fault exclusion. The fault satellite which can improve the positioning accuracy is processed using weighted estimation technique. Static experiment was carried out and a reflector was set to simulate the urban canyon environment. The user position errors in North, East and Up direction are 63.70%, 55.25% and 64.52% lower compared with the RAIM algorithm. From the urban vehicle tests, the vehicle positions of UA-RAIM are more like a straight line compared with RAIM. The 95% accuracy decreases from 20.32m to 16.55m using UA-RAIM and about 81.45% compared with the original.
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