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A variational Bayesian-based robust adaptive filtering for precise point positioning using undifferenced and uncombined observations

机译:基于变化的贝叶斯的鲁棒自适应滤波,用于使用未经定义和未结合的观察到精确点定位

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摘要

In the application of precise point positioning (PPP), especially in the dynamic mode, the classical Kalman filter (KF) usually produces a large number of estimation errors or diverges when there are gross errors in the observation data or unexpected turbulences occur in target motion state or both of them. For such problem, a variational Bayesian (VB)-based robust adaptive Kalman filtering (VB-RAKF) is proposed in this paper. This filter introduces a classification robust equivalent weight function to resist observation gross error and the inverse Wishart prior to model inaccurate process noise covariance matrix (PNCM). To improve the instantaneous accuracy of state estimation, the VB approach is used to obtain better estimations of inaccurate PNCM. Several sets of observation data collected by IGS reference stations and vehicles are employed to check the robustness and positioning accuracy of the VB-RAKF model. The results show that the VB-RAKF algorithm is more robust than the KF, and can effectively resist the gross error in observation data and control state disturbance. In the IGS reference station tests, when compared to the KF, the static positioning accuracies of the VB-RAKF in the north, east and up directions are improved by 13%, 8% and 22%, respectively, and the simulated dynamic positioning accuracies of the VB-RAKF in the north, east and up directions are improved by 19%, 9% and 21%, respectively. The in-vehicle dynamic test verifies that the VB-RAKF outperforms the KF, and shows that the VB-RAKF has better performance than the KF when dealing with observation data which has obvious gross errors, and similar performance as the KF when gross errors are small.
机译:在精确点定位(PPP)的应用中,特别是在动态模式中,经典卡尔曼滤波器(KF)通常会产生大量估计误差或在观察数据中存在粗略误差或在目标运动中发生意外的湍流时发散州或两者。对于这样的问题,本文提出了一种变形贝叶斯(VB)基础的鲁棒自适应卡尔曼滤波(VB-RAKF)。该过滤器引入了分类强大的等效权重函数,以抵御观察总误差和逆后之处在模型不准确的过程噪声协方差矩阵(PNCM)之前。为了提高状态估计的瞬时精度,VB方法用于获得不准确的PNCM的更好估计。采用IGS参考站和车辆收集的几组观测数据来检查VB-RAKF模型的鲁棒性和定位精度。结果表明,VB-RAKF算法比KF更鲁棒,并且可以有效地抵抗观察数据和控制状态干扰的总误差。在IGS参考站测试中,与KF相比,北方VB-RAKF的静态定位精度分别提高了13%,8%和22%,以及模拟的动态定位精度在北方的VB-RAKF中,东部和向上方向分别提高了19%,9%和21%。车载动态测试验证了VB-RAKF优于KF,并显示VB-RAKF在处理具有明显粗略误差的观察数据时具有比KF更好的性能,并且当毛重错误时与KF类似的性能小的。

著录项

  • 来源
    《Advances in space research》 |2021年第6期|1859-1869|共11页
  • 作者单位

    MNR Key Laboratory of Land Environment and Disaster Monitoring China University of Mining and Technology Xuzhou 221116 China School of Environment Science and Spatial Informatics China University of Mining and Technology Xuzhou 221116 China;

    MNR Key Laboratory of Land Environment and Disaster Monitoring China University of Mining and Technology Xuzhou 221116 China School of Environment Science and Spatial Informatics China University of Mining and Technology Xuzhou 221116 China;

    MNR Key Laboratory of Land Environment and Disaster Monitoring China University of Mining and Technology Xuzhou 221116 China School of Environment Science and Spatial Informatics China University of Mining and Technology Xuzhou 221116 China;

    MNR Key Laboratory of Land Environment and Disaster Monitoring China University of Mining and Technology Xuzhou 221116 China School of Environment Science and Spatial Informatics China University of Mining and Technology Xuzhou 221116 China Nottingham Geospatial Institute University of Nottingham Nottingham NG7 2RD United Kingdom;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Variational Bayesian; Robust adaptive Kalman filter; Equivalent weight function; Inverse Wishart distribution; PPP; Undiferenced and uncombined model;

    机译:变形贝叶斯;强大的自适应卡尔曼滤波器;等效权重功能;逆不动分配;PPP;无穷无尽和未经内容的模型;
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