Abstract.
Different types of present or future satellite data have to be combined by applying appropriate weighting for the determination of the gravity field of the Earth, for instance GPS observations for CHAMP with satellite to satellite tracking for the coming mission GRACE as well as gradiometer measurements for GOCE. In addition, the estimate of the geopotential has to be smoothed or regularized because of the inversion problem. It is proposed to solve these two tasks by Bayesian inference on variance components. The estimates of the variance components are computed by a stochastic estimator of the traces of matrices connected with the inverse of the matrix of normal equations, thus leading to a new method for determining variance components for large linear systems. The posterior density function for the variance components, weighting factors and regularization parameters are given in order to compute the confidence intervals for these quantities. Test computations with simulated gradiometer observations for GOCE and satellite to satellite tracking for GRACE show the validity of the approach.
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Received: 5 June 2001 / Accepted: 28 November 2001
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Koch, KR., Kusche, J. Regularization of geopotential determination from satellite data by variance components. Journal of Geodesy 76, 259–268 (2002). https://doi.org/10.1007/s00190-002-0245-x
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DOI: https://doi.org/10.1007/s00190-002-0245-x