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Online GPR-KF for GNSS Navigation with Unmodelled Measurement Error

机译:在线GPR-KF用于GNSS导航,具有未介质测量误差

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To achieve the best performance for a Kalman filter (KF) for global navigation satellite system (GNSS) positioning, a comprehensive measurement model is required. However, the GNSS observations suffer from unmodelled errors resulting from multipath, interference, etc. These errors are difficult (even impos?sible) to model using parametric models. Inspired by Gaussian process (GP) Bayes filters with measurement and dynamic models trained with non-parametric GP regression (GPR), the unmodelled errors in the GNSS observations can be trained online based on the GPR using the measurements residuals calculated by the KF. One of the problems in using the GPR for online modelling is its high computa?tional cost. To reduce the computational complexity, more than one forward step sliding window for the input training points and the GPR model training can be used. Furthermore, to avoid the over-prediction using the online trained GPR model, a constraint on the query point was introduced. In this study a non-linear autoregressive model was used for the online GPR model training. To verify this algorithm, both static and kinematic experiments were evaluated. The results show that the online GPR-KF algorithm can effectively improve the deteriorated GNSS positioning accuracy caused by unmodelled errors in the GNSS observations. The effectiveness of the proposed algorithm was also validated using the measurement innovation statistical test.
机译:为实现适用于全球导航卫星系统(GNSS)定位的卡尔曼滤波器(KF)的最佳性能,因此需要综合测量模型。然而,GNSS观察结果患有多径,干扰等产生的未暗误差。使用参数模型,这些误差是困难的(即使是Impos?Sevis)的模拟。受高斯过程(GP)贝叶斯滤波器具有测量和动态模型,具有非参数GP回归(GPR),GNSS观察中的未刻度误差可以使用由KF计算的测量残差基于GPR在线培训。使用GPR进行在线建模的问题之一是其高计算成本。为了降低计算复杂性,可以使用用于输入训练点的多于一个前进的步骤滑动窗口和GPR模型训练。此外,为了避免使用在线训练的GPR模型的过预测,引入了对查询点的约束。在本研究中,非线性自回归模型用于在线GPR模型培训。为了验证该算法,评估静态和运动学实验。结果表明,在线GPR-KF算法可以有效地改善GNSS观察中未刻度误差引起的劣化GNSS定位精度。使用测量创新统计测试还验证了所提出的算法的有效性。

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