首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >Estimation of velocity uncertainties from GPS time series: Examples from the analysis of the South African TrigNet network
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Estimation of velocity uncertainties from GPS time series: Examples from the analysis of the South African TrigNet network

机译:从GPS时间序列估计速度不确定性:南非TrigNet网络分析的示例

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We present a method to derive velocity uncertainties from GPS position time series that are affected by time‐correlated noise. This method is based on the Allan variance, which is widely used in the estimation of oscillator stability and requires neither spectral analysis nor maximum likelihood estimation (MLE). The Allan variance of the rate (AVR) is calculated in the time domain and hence is not too sensitive to gaps in the time series. We derived analytical expressions of the AVR for different kinds of noises like power law noise, white noise, flicker noise, and random walk and found an expression for the variance produced by an annual signal. These functional relations form the basis of error models that have to be fitted to the AVR in order to estimate the velocity uncertainty. Finally, we applied the method to the South Africa GPS network TrigNet. Most time series show noise characteristics that can be modeled by a power law noise plus an annual signal. The method is computationally very cheap, and the results are in good agreement with the ones obtained by methods based on MLE.
机译:我们提出了一种从受时间相关的噪声影响的GPS位置时间序列中得出速度不确定性的方法。该方法基于Allan方差,该方差被广泛用于振荡器稳定性的估计,并且既不需要频谱分析,也不需要最大似然估计(MLE)。速率的艾伦方差(AVR)是在时域中计算的,因此对时间序列中的间隔不太敏感。我们推导了AVR对不同种类的噪声(如幂律噪声,白噪声,闪烁噪声和随机游动)的解析表达式,并找到了由年信号产生的方差的表达式。这些函数关系形成了误差模型的基础,必须将其拟合到AVR才能估计速度不确定性。最后,我们将该方法应用于南非GPS网络TrigNet。大多数时间序列显示的噪声特性可以通过幂律噪声加上年度信号来建模。该方法在计算上非常便宜,并且结果与通过基于MLE的方法所获得的结果吻合良好。

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