基于稀疏高斯过程模型的RTK-GNSS轨迹数据建模

R. Nahar, K. M. Ng, F. H. K. Zaman, J. Johari
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引用次数: 0

摘要

将高斯过程回归(GPR)应用于全球导航卫星系统(GNSS)的轨迹点模型。在以往的工作中,使用GP进行轨迹建模,但在使用各种核函数训练GP时,其性能并没有得到很好的体现。此外,残差未进行分析以确定拟合优度。在本文中,我们的目标是开发具有最佳协方差函数的稀疏GPR模型,以模拟使用RTK-GNSS(实时运动学-全球导航卫星系统)在郊区收集的轨迹数据。利用5种核函数或协方差函数对收集的3个数据集进行稀疏探地雷达训练。采用10倍交叉验证对模型进行验证。交叉验证的贝叶斯信息(BIC)和均方误差(MAE)被用来识别性能最好的核函数。随后,采用最佳核的稀疏探地雷达模型进行弹道预测。模型残差分析采用自相关、偏相关、直方图和QuantileQuantile (Q-Q)图。稀疏探地雷达可将定位误差提高9.93% ~ 34.91%。然而,对残差的分析表明,模型拟合不佳,数据中存在相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling RTK-GNSS Trajectory Data using Sparse Gaussian Process Models
The Gaussian process regression (GPR) has been applied to model trajectory points from Global Navigation Satellite System (GNSS). Trajectory modeling using GP in previous works did not demonstrate its performance when training the GP using various kernel functions. In addition, residuals were not analyzed to ascertain the goodness of fit. In this paper, we aim to develop sparse GPR model with the best performing covariance function to model trajectory data collected using the RTK-GNSS (Real-Time Kinematics-Global Navigation Satellite Systems) in a sub-urban area. The sparse GPR was trained on three data sets collected using five types of kernel or covariance functions. The model was validated using 10-fold cross validation. The Bayesian information (BIC) and mean square error (MAE) from the cross-validation were used to identify the best performing kernel function. Subsequently sparse GPR model with the best kernel was implemented to predict the trajectory. Model residuals were analyzed using the autocorrelation, partial correlation, histograms and QuantileQuantile (Q-Q) plot. The sparse GPR could improve positioning errors ranging from 9.93 % to 34.91 %. However, the analyses on the residuals reveal poor model fit and the presence of correlation in the data.
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