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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Set-Membership Position Estimation With GNSS Pseudorange Error Mitigation Using Lane-Boundary Measurements
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Set-Membership Position Estimation With GNSS Pseudorange Error Mitigation Using Lane-Boundary Measurements

机译:使用车道边界测量值进行GNSS伪距误差缓解的集合成员位置估计

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摘要

Model-based positioning methods involve nonlinear equations as is the case when using satellite pseudoranges on global navigation satellite systems (GNSSs) and local measurements on road features. As these are nonlinear models, classical estimation methods cannot provide guaranteed position estimation and can converge to local optima, sometimes far away from the global optimum or the true value. Based on interval analysis, set inversion, and constraints propagation on real values provide a framework that guarantees to find the true position with a characterized confidence domain. This paper describes an error bounded set membership algorithm that computes the absolute position of a road vehicle by using raw GNNS pseudoranges, lane boundary measurements, and a 2D road network map as geometric constraints. The algorithm is based on set inversion using interval analysis, and bounds are set on the measurements by taking into account a chosen risk. The GNSS pseudoranges errors are modeled carefully, and road constraints are formalized to provide additional information in the data fusion process. The proposed algorithm, named lane boundary augmented set-membership GNSS positioning (LB-ASGP), provides a novel and inexpensive approach to improve position estimation performance for road vehicles guaranteeing the enclosure of the computed solution with high confidence. Results from simulations and field experiments show that the LB-ASGP significantly reduces GNSS errors in the direction perpendicular to the lane thanks to the lane boundary measurements.
机译:基于模型的定位方法涉及非线性方程,例如在全球导航卫星系统(GNSS)上使用卫星伪距和对道路特征进行局部测量时就是这种情况。由于这些模型是非线性模型,因此经典的估算方法无法提供有保证的位置估算,并且无法收敛到局部最优值,有时甚至远离全局最优值或真实值。基于区间分析,集求逆和约束在实际值上的传播,提供了一个框架,可确保找到具有特征性置信域的真实位置。本文介绍了一种误差有界集隶属度算法,该算法通过使用原始GNNS伪距,车道边界测量和2D道路网络图作为几何约束来计算道路车辆的绝对位置。该算法基于使用间隔分析的集合反转,并且通过考虑选定的风险来设置度量范围。仔细建模GNSS伪距误差,并对道路约束进行形式化以在数据融合过程中提供其他信息。所提出的算法被称为车道边界增强集合成员资格GNSS定位(LB-ASGP),它提供了一种新颖而廉价的方法来提高道路车辆的位置估计性能,从而确保了计算解决方案的封闭性。模拟和现场实验的结果表明,由于车道边界的测量,LB-ASGP在垂直于车道的方向上大大降低了GNSS误差。

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