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A Filtering of Incomplete GNSS Position Time Series with Probabilistic Principal Component Analysis

机译:具有概率主成分分析的不完整GNSS位置时间序列的过滤

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For the first time, we introduced the probabilistic principal component analysis (pPCA) regarding the spatio-temporal filtering of Global Navigation Satellite System (GNSS) position time series to estimate and remove Common Mode Error (CME) without the interpolation of missing values. We used data from the International GNSS Service (IGS) stations which contributed to the latest International Terrestrial Reference Frame (ITRF2014). The efficiency of the proposed algorithm was tested on the simulated incomplete time series, then CME was estimated for a set of 25 stations located in Central Europe. The newly applied pPCA was compared with previously used algorithms, which showed that this method is capable of resolving the problem of proper spatio-temporal filtering of GNSS time series characterized by different observation time span. We showed, that filtering can be carried out with pPCA method when there exist two time series in the dataset having less than 100 common epoch of observations. The 1st Principal Component (PC) explained more than 36% of the total variance represented by time series residuals' (series with deterministic model removed), what compared to the other PCs variances (less than 8%) means that common signals are significant in GNSS residuals. A clear improvement in the spectral indices of the power-law noise was noticed for the Up component, which is reflected by an average shift towards white noise from - 0.98 to - 0.67 (30%). We observed a significant average reduction in the accuracy of stations' velocity estimated for filtered residuals by 35, 28 and 69% for the North, East, and Up components, respectively. CME series were also subjected to analysis in the context of environmental mass loading influences of the filtering results. Subtraction of the environmental loading models from GNSS residuals provides to reduction of the estimated CME variance by 20 and 65% for horizontal and vertical components, respectively.
机译:我们首次介绍了关于全局导航卫星系统(GNSS)位置时间序列的时空滤波的概率主成分分析(PPCA),以估计和去除共模误差(CME)而不会插入缺失值。我们使用来自国际GNSS服务(IGS)站的数据,这些电台贡献了最新的国际陆地参考框架(ITRF2014)。在模拟的不完全时间序列上测试了所提出的算法的效率,然后估计CME为位于中欧的一组25站。将新应用的PPCA与先前使用的算法进行了比较,这表明该方法能够解决特征在于不同观察时间跨度的GNSS时间序列的适当时空滤波的问题。我们显示,当在具有少于100个观察时期的数据集中存在两个时间序列时,可以使用PPCA方法进行滤波。第一个主成分(PC)解释了时间序列残差所代表的总方差的36%以上(删除了确定性模型的系列),与其他PC差异相比(小于8%)意味着常见信号在GNSS残差。对于向上的组分注意到电力法噪声的光谱指标的明确改善,其反映了从-0.98至-0.67(30%)的白噪声的平均变化。我们分别观察到北,东部和上升组件的过滤残留物估计的电台速度的准确性的显着平均降低。 CME系列也在环境质量加载的背景下进行分析,对滤波结果的影响影响。来自GNSS残差的环境加载模型的减法可以分别为水平和垂直部件的估计的CME方差降低20和65%。

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