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Modeling Seasonal Variations in Vertical GPS Coordinate Time Series Using Independent Component Analysis and Varying Coefficient Regression

机译:使用独立分量分析和不同系数回归建模垂直GPS坐标时间序列的季节变化

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摘要

Common seasonal variations in Global Positioning System (GPS) coordinate time series always exist, and the modeling and correction of the seasonal signals are helpful for many geodetic studies using GPS observations. A spatiotemporal model was proposed to model the common seasonal variations in vertical GPS coordinate time series, based on independent component analysis and varying coefficient regression method. In the model, independent component analysis (ICA) is used to separate the common seasonal signals in the vertical GPS coordinate time series. Considering that the periodic signals in GPS coordinate time series change with time, a varying coefficient regression method is used to fit the separated independent components. The spatiotemporal model was then used to fit the vertical GPS coordinate time series of 262 global International GPS Service for Geodynamics (IGS) GPS sites. The results show that compared with least squares regression, the varying coefficient method can achieve a more reliable fitting result for the seasonal variation of the separated independent components. The proposed method can accurately model the common seasonal variations in the vertical GPS coordinate time series, with an average root mean square (RMS) reduction of 41.6% after the model correction.
机译:全球定位系统(GPS)坐标时间序列的常见季节变化总是存在,并且季节性信号的建模和校正有助于使用GPS观测的许多大地测量研究。基于独立分量分析和不同系数回归方法,提出了一种模拟垂直GPS坐标时间序列的常见季节变化的模型。在模型中,独立的分量分析(ICA)用于将常见GPS坐标时间序列中的常见季节信号分开。考虑到GPS坐标时间序列中的周期性信号随时间的变化,使用变化的系数回归方法来适合分离的独立组件。然后使用时空模型适用于地球动力学(IGS)GPS网站的262个全球国际GPS服务的垂直GPS坐标时间序列。结果表明,与最小二乘回归相比,变化系数方法可以实现分离的独立组分的季节变化的更可靠的拟合结果。该方法可以准确地模拟垂直GPS坐标时间序列中的常见季节变化,在模型校正后平均均方根(RMS)降低41.6%。

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