Title of article
The Data Depth-weight-kernel Estimation of the Model Error of Satellite Orbit Determination
Author/Authors
Pan، نويسنده , , Xiaogang and Zhou، نويسنده , , Hai-Yin، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
12
From page
293
To page
304
Abstract
It is an objective fact that there exists error in the satellite dynamic model and it will be transferred to satellite orbit determination algorithm, forming a part of the connotative model error. Mixed with the systematic error and random error of the measurements, they form the unitive model error and badly restrict the precision of the orbit determination. We deduce in detail the equations of orbit improvement for a system with dynamic model error, construct the parametric model for the explicit part of the model and nonparametric model for the error that can not be explicitly described. We also construct the partially linear orbit determination model, estimate and fit the model error using a two-stage estimation and a kernel function estimation, and finally make the corresponding compensation in the orbit determination. Beginning from the data depth theory, a data depth weight kernel estimator for model error is proposed for the sake of promoting the steadiness of model error estimation. Simulation experiments of SBSS are performed. The results show clearly that the model error is one of the most important effects that will influence the precision of the orbit determination. The kernel function method can effectively estimate the model error, with the window width as a major restrict parameter. A data depth-weight-kernel estimation, however, can improve largely the robustness of the kernel function and therefore improve the precision of orbit determination.
Keywords
celestial mechanics: orbit determination , method: numerical
Journal title
Chinese Astronomy and Astrophysics
Serial Year
2009
Journal title
Chinese Astronomy and Astrophysics
Record number
2263886
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