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Network-based estimation of time-dependent noise in GPS position time series

机译:GPS位置时间序列中基于网络的时变噪声估计

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Some estimates of GPS velocity uncertainties are very low, 0.1 mm/year with 10 years of data. Yet, residual velocities relative to rigid plate models in nominally stable plate interiors can be an order of magnitude larger. This discrepancy could be caused by underestimating low-frequency time-dependent noise in position time series, such as random walk. We show that traditional estimators, based on individual time series, are insensitive to low-amplitude random walk, yet such noise significantly increases GPS velocity uncertainties. Here, we develop a method for determining representative noise parameters in GPS position time series, by analyzing an entire network simultaneously, which we refer to as the network noise estimator (NNE). We analyze data from the aseismic central-eastern USA, assuming that residual motions relative to North America, corrected for glacial isostatic adjustment (GIA), represent noise. The position time series are decomposed into signal (plate rotation and GIA) and noise components. NNE simultaneously processes multiple stations with a Kalman filter and solves for average noise components for the network by maximum likelihood estimation. Synthetic tests show that NNE correctly estimates even low-level random walk, thus providing better estimates of velocity uncertainties than conventional, single station methods. To test NNE on actual data, we analyze a heterogeneous 15 station GPS network from the central-eastern USA, assuming the noise is a sum of random walk, flicker and white noise. For the horizontal time series, NNE finds higher average random walk than the standard individual station-based method, leading to velocity uncertainties a factor of 2 higher than traditional methods.
机译:GPS速度不确定性的某些估计值非常低,只有10年的数据才能达到0.1毫米/年。然而,在名义上稳定的板内部中,相对于刚性板模型的残余速度可能会大一个数量级。这种差异可能是由于在位置时间序列中低估了与时间相关的低频噪声,例如随机游走。我们表明,基于单个时间序列的传统估计器对低振幅随机游动不敏感,但是这种噪声显着增加了GPS速度不确定性。在这里,我们开发了一种通过同时分析整个网络来确定GPS位置时间序列中代表性噪声参数的方法,我们将该方法称为网络噪声估算器(NNE)。我们分析了来自美国中东部抗震的数据,假设相对于北美的残余运动(经冰川等静压调整(GIA)校正)代表噪声。位置时间序列分解为信号(板旋转和GIA)和噪声分量。 NNE使用卡尔曼滤波器同时处理多个站,并通过最大似然估计来求解网络的平均噪声分量。综合测试表明,NNE甚至可以正确估计低级随机游动,因此与常规的单站方法相比,可以更好地估计速度不确定性。为了测试NNE的实际数据,我们假设来自噪声干扰是随机游走,闪烁和白噪声的总和,我们分析了来自美国中东部的15站GPS异构网络。对于水平时间序列,NNE发现其平均随机游走率比标准的基于单个站的方法更高,导致速度不确定性比传统方法高2倍。

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