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首页> 外文期刊>Journal of Geodesy >On the application of Monte Carlo singular spectrum analysis to GPS position time series
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On the application of Monte Carlo singular spectrum analysis to GPS position time series

机译:蒙特卡罗奇异谱分析在GPS位置时间序列中的应用

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Singular spectrum analysis (SSA) has recently been applied to various geodetic time series studies. As a data-adaptive method, SSA is capable of extracting signals with non-constant phase and amplitudes. Although SSA is a competent method in the presence of white noise, the contribution of colored noise, having semi-periodic behavior, degrades its performance. Parts of colored noise can be absorbed in the SSA eigenmodes, which specifies signals and hence resulting in spurious modulation or losing significant signals. Signals and colored noise are thus to be discriminated in the signal identification procedure. Monte Carlo SSA (MCSSA) in its original formulation, providing a significance test against the AR(1) noise null hypothesis, can be misinterpreted when other colored noise structures contribute to the series. We propose an algorithm for MCSSA that is not limited to the AR(1) noise hypothesis. It estimates the noise model parameters using LS-VCE and generates the surrogate data using the Cholesky decomposition. The algorithm is adapted to GPS position time series where the underlying noise is a combination of white noise and flicker noise. GPS position time series, postulated real situation, are first simulated to include annual and semiannual signals plus white and flicker noise. The results indicate that MCSSA can extract the annual and semiannual signals with 2.11 and 1.25 mm amplitudes (the global mean values) from 20-year-long time series, with 95% confidence level, if flicker noise is less than 17 and 13 mm/year(1/4), respectively. The longer the time series or the stronger the signals are, the higher these thresholds will be. This conclusion is also verified when applying MCSSA to the up component of GPS position time series of 347 JPL stations.
机译:奇异频谱分析(SSA)最近已应用于各种大地时间序列研究。作为一种数据自适应方法,SSA能够提取具有非恒定相位和幅度的信号。尽管SSA在存在白噪声的情况下是一种有效的方法,但是具有半周期行为的有色噪声的影响会降低其性能。彩色噪声的一部分可以在SSA本征模式中吸收,该模式指定信号,因此导致杂散调制或丢失大量信号。因此,在信号识别过程中要区分信号和有色噪声。蒙特卡洛SSA(MCSSA)的原始公式提供了针对AR(1)噪声零假设的显着性检验,当其他有色噪声结构对该系列有所贡献时,可能会被误解。我们提出了一种不限于AR(1)噪声假设的MCSSA算法。它使用LS-VCE估计噪声模型参数,并使用Cholesky分解生成替代数据。该算法适用于GPS位置时间序列,其中基本噪声是白噪声和闪烁噪声的组合。首先对模拟的GPS位置时间序列(假定的实际情况)进行仿真,以包括年度和半年度信号以及白噪声和闪烁噪声。结果表明,如果闪烁噪声小于17和13 mm /,则MCSSA可以从20年的时间序列中以2.11和1.25 mm振幅(全局平均值)提取年度和半年度信号,置信度为95%。年(1/4)。时间序列越长或信号越强,这些阈值将越高。当将MCSSA应用于347个JPL站的GPS位置时间序列的up分量时​​,这一结论也得到了验证。

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