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首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >Separation of Sources of Seasonal Uplift in China Using Independent Component Analysis of GNSS Time Series
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Separation of Sources of Seasonal Uplift in China Using Independent Component Analysis of GNSS Time Series

机译:使用GNSS时间序列的独立分析分析中国季节隆起来源的分离

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摘要

With the improvement of Global Navigation Satellite System (GNSS) observation accuracy and the establishment of large continuously operating networks, long GNSS time series are now widely used to understand a range of Earth deformation processes. The continuously operating stations of the Crustal Movement Observation Network of China capture deformation signals due to time-dependent tectonic, nontectonic mass loading, and potentially unknown geophysical processes. In order to separate and recover these underlying sources accurately and effectively, we apply the independent component analysis (ICA) to decompose the observed time series of vertical displacements. Then, we compare these signals with those predicted from independently developed geophysical process models of atmospheric, nontidal ocean, snow, soil moisture mass loading, and the Land Surface Discharge Model, as well as with Gravity Recovery and Climate Experiment observations. For comparison, we also perform the principal component analysis decomposition of time series and find that the ICA achieves a more consistent representation of multiple geophysical contributors to annual vertical GNSS displacements. ICA can decompose the long-term trend and different seasonal and multiannual signals that closely correspond to the independently derived mass loading models. We find that independent contributions from atmospheric, soil moisture, and snow mass loading can be resolved from the GNSS data. Discrepancies are likely due to the correlated nature of some of the loading processes and unmodeled contributions from groundwater and surface water changes in South Central China and the Ganges Basin.
机译:随着全球导航卫星系统(GNSS)观察精度的改进和大型连续运营网络的建立,LONG GNSS时间序列现在广泛用于了解一系列地球变形过程。由于时间依赖性构造,义型质量荷载和潜在未知的地球物理过程,中国地壳运动观测网络的连续操作站捕获变形信号。为了准确且有效地分离和恢复这些潜在的来源,我们应用独立的分量分析(ICA)来分解观察到的垂直位移的时间序列。然后,我们将这些信号与从独立开发的大气,非洲海洋,雪,土壤水分载荷和土地表面放电模型以及重力恢复和气候实验观察结果进行了预测的那些信号。为了比较,我们还执行时间序列的主要成分分析分解,发现ICA实现了多个地球物理贡献者对年度垂直GNSS位移的更一致的代表。 ICA可以分解与独立衍生的大众装载模型密切对应的长期趋势和不同的季节性和多次信号。我们发现,可以从GNSS数据中解析来自大气,土壤水分和雪地质量负荷的独立贡献。差异很可能是由于地下水和地下水和地表水变化的一些装载过程和未改造贡献的相关性,以及恒河流域的相关性。

著录项

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  • 作者单位

    Engineering Center of SHMEC for Space Information and GNSS East China Normal University Shanghai China;

    Engineering Center of SHMEC for Space Information and GNSS East China Normal University Shanghai China;

    Berkeley Seismological Laboratory and Department of Earth and Planetary Science University of California Berkeley CA USA;

    Berkeley Seismological Laboratory and Department of Earth and Planetary Science University of California Berkeley CA USA;

    Shanghai Astronomical Observatory Chinese Academy of Sciences Shanghai China;

    Engineering Center of SHMEC for Space Information and GNSS East China Normal University Shanghai China;

    Shanghai Astronomical Observatory Chinese Academy of Sciences Shanghai China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 地球物理学;
  • 关键词

    Separation; Sources; Seasonal Uplift;

    机译:分离;来源;季节隆起;

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