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首页> 外文期刊>Acta geodynamica et geomaterialia >ESTIMATES OF SEASONAL SIGNALS IN GNSS TIME SERIES AND ENVIRONMENTAL LOADING MODELS WITH ITERATIVE LEAST-SQUARES ESTIMATION (iLSE) APPROACH
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ESTIMATES OF SEASONAL SIGNALS IN GNSS TIME SERIES AND ENVIRONMENTAL LOADING MODELS WITH ITERATIVE LEAST-SQUARES ESTIMATION (iLSE) APPROACH

机译:GNSS时间序列和环境加载模型中的季节性信号估计,具有迭代最小二乘估计(ILSE)方法

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The GNSS (Global Navigation Satellite System) coordinates time series are still used as a source for determining the velocities of GNSS permanent stations. These coordinates, apart from the geodynamical signals, also contain an interference signal. This paper shows the results of the comparative analysis of the GNSS coordinates time series with a deformation of the Earth's crust obtained from loading models. In the analysis, coordinates time series are used (CODE Repro2013) without loading models (Atmospheric Pressure Loading, Hydrology, Non-Tidal Ocean Loading) at the stage of the reprocessing of GNSS archival data. The analyses showed that in the case of the Up component there is a high correlation between the GNSS coordinates changes and deformations of the Earth's crust from the loading models (coefficient 0.5-0.8). Additionally, we noticed that for horizontal components (North, East) changes occur in the phase shift between coordinates, and the Earth's crust deformations signals are accelerated or delayed each other (-150 to 200 days). This article shows new methods of iLSE (iteration Least Square Estimation) to determine periodic signals in the time series. Additionally, we compared the values of estimated amplitudes for GNSS and deformation time series.
机译:GNSS(全球导航卫星系统)坐标时间序列仍然用作确定GNSS永久站的速度的源。这些坐标除了几个踩踏信号,还包含干扰信号。本文展示了GNS​​S对坐标时间序列的比较分析的结果,其具有从装载模型获得的地壳的变形。在分析中,使用坐标时间序列(代码REPRO2013),无需在GNSS档案数据的再加工阶段加载模型(大气压负载,水文,非潮汐海洋装载)。分析表明,在UP组分的情况下,GNSS与地壳的变化和变形与加载模型(系数0.5-0.8)之间存在高相关性。此外,我们注意到,对于坐标之间的相位偏移发生水平组件(北,东)变化,并且地球的地壳变形信号加速或互相延迟(-150至200天)。本文显示了ILSE(迭代最小二乘估计)的新方法,以确定时间序列中的周期性信号。此外,我们比较了GNSS和变形时间序列的估计幅度的值。

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