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A statistical filtering approach for Gravity Recovery and Climate Experiment (GRACE) gravity data

机译:重力恢复和气候实验(GRACE)重力数据的统计过滤方法

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摘要

We describe and analyze a statistical filtering approach for Gravity Recovery and Climate Experiment (GRACE) data that uses a parameterized model for the temporal evolution of the GRACE coefficients. After least squares adjustment, a statistical test is performed to assess the significance of the estimated parameters. If the test is passed, the parameters are used by the filter in the reconstruction of the field; otherwise, they are rejected. The test is performed, and the filter is formed, separately for annual components of the model and the trend. This new approach is distinct from Gaussian smoothing since it uses the data themselves to test for specific components of the time-varying gravity field. The statistical filter appears inherently to remove most of the “stripes” present in the GRACE fields, although destriping the fields prior to filtering seems to help the trend recovery. We demonstrate that the statistical filter produces reasonable maps for the annual components and trend. We furthermore assess the statistical filter for the annual components using ground-based GPS data in South America by assuming that the annual component of the gravity signal is associated only with groundwater storage. The undestriped, statistically filtered field has a χ2 value relative to the GPS data consistent with the best result from smoothing. In the space domain, the statistical filters are qualitatively similar to Gaussian smoothing. Unlike Gaussian smoothing, however, the statistical filter has significant sidelobes, including large negative sidelobes on the north-south axis, potentially revealing information on the errors, and the correlations among the errors, for the GRACE coefficients.
机译:我们描述和分析重力恢复和气候实验(GRACE)数据的统计过滤方法,该方法使用参数化模型对GRACE系数进行时间演化。最小二乘平差调整后,进行统计检验以评估估计参数的重要性。如果通过测试,过滤器将在现场重建中使用这些参数;否则,它们将被拒绝。对模型的年度组成部分和趋势分别进行测试并形成过滤器。这种新方法与高斯平滑法不同,因为它使用数据本身来测试随时间变化的重力场的特定分量。统计过滤器似乎固有地删除了GRACE字段中存在的大多数“条带”,尽管在过滤之前对字段进行去条带似乎有助于趋势恢复。我们证明统计过滤器可以为年度组成部分和趋势生成合理的地图。我们还通过假设重力信号的年分量仅与地下水储量相关联,使用南美的地面GPS数据评估年分量的统计过滤器。相对于GPS数据,未分离,经过统计滤波的字段具有χ2值,与平滑处理的最佳结果一致。在空间域中,统计滤波器在质量上类似于高斯平滑。但是,与高斯平滑不同,统计滤波器具有显着的旁瓣,包括南北轴上的较大的负旁瓣,有可能揭示有关GRACE系数的误差信息以及误差之间的相关性。

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