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Correlated errors in GPS position time series: Implications for velocity estimates

机译:GPS位置时间序列中的相关误差:对速度估计的影响

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This study focuses on the effects of time correlation in weekly GPS position time series on velocity estimates. Time series 2.5 to 13 years long from a homogeneously reprocessed solution of 275 globally distributed stations are analyzed in terms of noise content and velocity uncertainty assessment. Several noise models were tested, including power law and Gauss-Markov processes. The best noise model describing our global data set was a combination of variable white noise and power law noise models with mean amplitudes of –2 mm and –6 mm, respectively, for the sites considered. This noise model provided a mean vertical velocity uncertainty of ~0.3 mm/yr, 4-5 times larger than the uncorrelated data assumption. We demonstrated that correlated noise content with homogeneously reprocessed data is dependent on time series length and, especially, on data time period. Time series of 2-3 years of the oldest data contain noise amplitude similar to that found for time series of 12 years. The data time period should be taken into account when estimating correlated noise content, when comparing different noise estimations, or when applying an external noise estimation to assess velocity uncertainty. We showed that the data period dependency cannot be explained by the increasing tracking network or the ambiguity fixation rate but is probably related to the amount and quality of recorded data.
机译:这项研究集中于每周GPS位置时间序列中的时间相关性对速度估计的影响。根据噪声含量和速度不确定性评估,分析了由275个全球分布式站点的均质后处理解决方案产生的2.5到13年的时间序列。测试了多种噪声模型,包括幂律和高斯-马尔可夫过程。描述我们的全球数据集的最佳噪声模型是可变白噪声模型和幂律噪声模型的组合,对于所考虑的站点,其平均幅度分别为–2 mm和–6 mm。该噪声模型提供的平均垂直速度不确定度为〜0.3 mm / yr,是不相关数据假设的4-5倍。我们证明了与均匀地重新处理的数据相关的噪声含量取决于时间序列长度,尤其是取决于数据时间段。最早的2-3年数据的时间序列包含的噪声幅度类似于12年时间序列的噪声幅度。在估算相关的噪声含量时,在比较不同的噪声估算值时,或在应用外部噪声估算值来评估速度不确定性时,应考虑数据时间段。我们表明,数据周期的依赖性不能用跟踪网络的增加或模糊度固定率来解释,而可能与记录数据的数量和质量有关。

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