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MIDAS robust trend estimator for accurate GPS station velocities without step detection

机译:MIDAS强大的趋势估计器,无需步距检测即可获得准确的GPS站速度

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Automatic estimation of velocities from GPS coordinate time series is becoming required to cope with the exponentially increasing flood of available data, but problems detectable to the human eye are often overlooked. This motivates us to find an automatic and accurate estimator of trend that is resistant to common problems such as step discontinuities, outliers, seasonality, skewness, and heteroscedasticity. Developed here, Median Interannual Difference Adjusted for Skewness (MIDAS) is a variant of the Theil-Sen median trend estimator, for which the ordinary version is the median of slopes v(ij)=(x(j)-x(i))/(t(j)-t(i)) computed between all data pairs i>j. For normally distributed data, Theil-Sen and least squares trend estimates are statistically identical, but unlike least squares, Theil-Sen is resistant to undetected data problems. To mitigate both seasonality and step discontinuities, MIDAS selects data pairs separated by 1year. This condition is relaxed for time series with gaps so that all data are used. Slopes from data pairs spanning a step function produce one-sided outliers that can bias the median. To reduce bias, MIDAS removes outliers and recomputes the median. MIDAS also computes a robust and realistic estimate of trend uncertainty. Statistical tests using GPS data in the rigid North American plate interior show 0.23mm/yr root-mean-square (RMS) accuracy in horizontal velocity. In blind tests using synthetic data, MIDAS velocities have an RMS accuracy of 0.33mm/yr horizontal, 1.1mm/yr up, with a 5th percentile range smaller than all 20 automatic estimators tested. Considering its general nature, MIDAS has the potential for broader application in the geosciences.
机译:为了应对可用数据呈指数级增长的趋势,需要从GPS坐标时间序列自动估计速度,但是人眼可检测到的问题常常被忽略。这促使我们找到一种自动,准确的趋势估计器,该估计器可以抵抗常见问题,例如步长不连续,离群值,季节性,偏度和异方差。此处开发的中位数年际差异校正偏斜(MIDAS)是Theil-Sen中位数趋势估计量的一种变体,其普通版本是斜率中位数v(ij)=(x(j)-x(i)) /(t(j)-t(i))在所有数据对i> j之间计算。对于正态分布的数据,Theil-Sen和最小二乘趋势估计在统计上是相同的,但是与最小二乘不同,Theil-Sen可以抵抗未检测到的数据问题。为了缓解季节性和阶跃不连续性,MIDAS选择间隔1年的数据对。对于带有间隙的时间序列,此条件是宽松的,因此可以使用所有数据。跨步函数的数据对中的斜率会产生单边离群值,从而使中位数产生偏差。为了减少偏差,MIDAS会删除异常值并重新计算中位数。 MIDAS还可以对趋势不确定性进行可靠而实际的估计。在刚性北美板块内部使用GPS数据进行的统计测试显示,水平速度的均方根(RMS)精度为0.23mm / yr。在使用合成数据进行盲测中,MIDAS速度的RMS精度水平为0.33mm /年,向上为1.1mm /年,比所有测试的20个自动估计器小5个百分点。考虑到其一般性质,MIDAS具有在地球科学中更广泛应用的潜力。

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