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Effect of Stochastic Model Errors on Significance Test for Velocities in Analysis of GPS Position Time Series

机译:随机模型误差对GPS位置时间序列分析速度意义试验的影响

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This study investigates the effect of stochastic model errors on the significance test for velocities in the analysis of a global positioning system (GPS) position time series. This effect is studied by considering the estimated probabilities of type I and type II errors occurring in the hypothesis testing. For this purpose, synthetic daily time series with 3-, 7-, and 10-year periods are considered. Many random samples are simulated for each series such that they include white noise (WN), flicker noise (FN), and random walk noise (RWN) with specified magnitudes. First, it is shown that an incorrect WN-only stochastic model almost always yields false-positive decisions in testing the velocities. Later on, noise magnitudes in the series are obtained through the least-squares variance components estimation (LS-VCE) method. Confidence interval estimates depict that the estimated velocity uncertainties may be biased because of estimation errors of variance components. However, the type I and type II error probabilities in testing the velocities do not change significantly for most of the series samples with WN and FN. For the time series consisting of WN, FN, and RWN, the error in estimating the RWN magnitude causes more effect on the uncertainty of velocity. In this case, type I error relating to the velocity estimation may, on average, be increased by 9.4% while type II error remains the same.
机译:本研究研究了随机模型误差对全球定位系统(GPS)位置序列分析中的速度意义试验的影响。通过考虑假设检测中发生的I型和II型错误的估计概率来研究这种效果。为此目的,考虑了3-,7-和10年期间的合成日常时间序列。许多随机样本进行了模拟每个系列,使得它们包括白噪声(WN),闪烁噪声(FN)和随机游走噪声(RWN)与指定的大小。首先,示出了不正确的WN随机模型几乎总是在测试速度时产生假肯定的决定。稍后,通过最小二乘方差分量估计(LS-VCE)方法获得序列中的噪声幅度。置信区间估计描绘了由于方差分量的估计误差,所以估计的速度不确定性可能被偏置。然而,在测试速度的I型和II型错误概率对于大多数具有WN和FN的系列样本不会显着变化。对于由WN,FN,和RWN的时间序列,在估计RWN大小的错误将导致在速度的不确定性的影响更大。在这种情况下,与速度估计有关的I型误差平均可以在II型误差保持相同的同时增加9.4%。

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