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Robust GNSS Position Estimation Using Graph Optimization Based Vector Tracking

机译:基于曲线图优化的矢量跟踪,鲁棒GNSS位置估计

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Vector tracking (VT) is proposed and demonstrated as a superior method to obtain more robust navigation solutions. In VT, instead of individually tracking the signals, VT accomplishes signal tracking and navigation solutions estimation through a central navigation filter, mutual aiding between the channels is realized in this manner. Commonly, a Kalman Filter (KF) is employed as the center navigation filter to estimate the navigation solutions, the estimated navigation solutions are then fed back to calculate the signal tracking parameters. However, KF works in a recursive manner, relationships between the current state and all the past states are ignored, which might degrade the estimation of the navigation solutions. In this paper, we proposed a Graph Optimization (GO) based on VT. GO optimized the state estimation utilizing all the past information instead of KF, the state transformation, and measurement model were all added to the GO as the constraints to optimize the state estimation. An experiment was carried out for assessing the proposed GO-VT, statistical analysis of the navigation solutions and the corresponding comparisons demonstrated the superiority of the proposed GO-VT method.
机译:提出了向量跟踪(VT)作为获得更强大的导航解决方案的卓越方法。在VT中,不是单独地跟踪信号,VT通过中央导航滤波器实现信号跟踪和导航解决方案估计,以这种方式实现信道之间的相互矛盾。通常,使用卡尔曼滤波器(KF)作为中心导航滤波器来估计导航解决方案,然后反馈估计的导航解决方案以计算信号跟踪参数。然而,KF以递归方式工作,忽略当前状态和所有过去状态之间的关系,这可能降低导航解决方案的估计。在本文中,我们提出了基于VT的图优化(GO)。使用所有过去信息而不是KF,状态转换和测量模型进行优化,并将其添加到DE作为优化状态估计的约束中。进行实验,用于评估所提出的GO-VT,导航解决方案的统计分析,相应的比较证明了所提出的GO-VT方法的优越性。

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