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首页> 外文期刊>Industrial and organizational psychology >The application of least-square collocation and variance component estimation in crossover analysis of satellite altimetry observations and altimeter calibration
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The application of least-square collocation and variance component estimation in crossover analysis of satellite altimetry observations and altimeter calibration

机译:最小二乘搭配和方差分量估计在卫星公共观测和高度计校准中的交叉分析中的应用

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摘要

In this study, the collocation method accompanied with variance component estimation is used for least square adjustment of crossover observations in order to determine the effects of radial errors on the observations of satellite altimetry. The collocation is used for time series analysis of sea surface height observations both for predicting the possible missing observations in each cycle, and for approximating the observation of each cycle at crossover points. In addition, use is made of the variance component estimation to quantify the noise variance of observations and improve the least square evaluation of radial errors. For analysis of radial errors, two different approaches are followed, in the first approach, the radial errors are assumed to behave like a series of trigonometric function, the coefficients of which are unknowns which should be determined from observations. In the second approach, the values of radial errors, for ascending and descending passes are determined. Our results show the efficiency of collocation algorithm for highly accurate time series analysis of altimetry observations and moreover, they reveal the effectiveness of variance component estimation for true noise specification of observations which can significantly improve the results of least square adjustment. The outcome of this study can be used to calibration of altimeters. The numerical results indicate that the mean range biases of Topex/Poseidon, Jason 1-2 and ENVISAT in the six single and dual crossover points using the first and the second methods are about 0, 84, 33, 204 and 0, 98, 41, 286 mm, respectively.
机译:在该研究中,伴随方差分量估计的搭配方法用于对交叉观测的至少正方形调整,以便确定径向误差对卫星高度偏移的观察的影响。搭配用于对海面高度观测的时间序列分析,用于预测每个循环中可能的缺失观察,以及近似于交叉点的每个循环观察。此外,使用方差分量估计来量化观察的噪声方差,提高径向误差的最小平方评估。为了分析径向误差,遵循两种不同的方法,在第一种方法中,假设径向误差表现得像一系列三角函数,其系数是应从观察确定的未知数。在第二种方法中,确定用于上升和下降通行的径向误差的值。我们的结果表明,用于高度准确的时间序列分析的搭配算法的升性算法及目前,他们揭示了对真正噪声规范的方差分量估计的有效性,这可以显着提高最小二乘调整的结果。本研究的结果可用于校准高度计。数值结果表明,使用第一和第二种方法的六个单一和双交叉点中的Topex / Poseidon,Jason 1-2和Envisat的平均范围偏差约为0,84,33,204和0,98,41分别为286毫米。

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