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Offset detection in GPS position time series using multivariate analysis

机译:使用多变量分析的GPS位置时间序列中的偏移检测

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Proper analysis and subsequent interpretation of GPS position time series is an important issue in many geodetic and geophysical applications. The GPS position time series can possibly be contaminated by some abrupt changes, called offsets, which can be well compensated for in the functional model. An appropriate offset detection method requires proper specification of both functional and stochastic models of the series. Ignoring colored noise will degrade the performance of the offset detection algorithm. We first introduce the univariate analysis to identify possible offsets in a single time series. To enhance the detection ability, we then introduce the multivariate analysis, which considers the three coordinate components, north, east and up, simultaneously. To test the performance of the proposed algorithm, we use synthetic daily time series of three coordinate components emulating real GPS time series. They consist of a linear trend, seasonal periodic signals, offsets and white plus colored noise. The average detection power on individual components, either north, east or up, are 32.3 and 47.2% for the cases of white noise only and white plus flicker noise, respectively. The detection power of the multivariate analysis increases to 70.8 and 87.1% for the above two cases. This indicates that ignoring flicker noise, existing in the structure of the time series, leads to lower offset detection performance. It also indicates that the multivariate analysis is more efficient than the univariate analysis for offset detection in the sense that the three coordinate component time series are simultaneously used in the offset detection procedure.
机译:对GPS位置时间序列的适当分析和随后的解释是许多大地测量和地球物理应用中的重要问题。 GPS位置时间序列可能被一些突然的变化污染,称为偏移,这可以在功能模型中得到很好的补偿。适当的偏移检测方法需要对该系列的功能和随机模型的适当规范。忽略彩色噪声会降低偏移检测算法的性能。我们首先介绍一个单变量分析,以确定单个时间序列中可能的偏移。为了增强检测能力,我们将介绍多元分析,同时考虑三个坐标组件,北,东部和向上。为了测试所提出的算法的性能,我们使用仿真真正的GPS时间序列的三个坐标组件的合成日常时间序列。它们由线性趋势,季节性周期性信号,偏移和白色加上彩色噪声组成。对于北,东部或向上的各个组件的平均检测能力分别为32.3和47.2%,分别为白噪声和白色加上闪烁噪声。对于上述两种情况,多变量分析的检测能力增加到70.8%和87.1%。这表明忽略了在时间序列结构中存在的闪烁噪声,导致偏移检测性能较低。它还表明,多变量分析比在偏移检测过程中同时使用三个坐标分量时间序列的偏移检测的单变量分析更有效。

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