Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field Modeling

Various types of heterogeneous observations can be combined within a parameter estimation process using spherical radial basis functions (SRBFs) for regional gravity field refinement. In this process, regularization is in most cases inevitable, and choosing an appropriate value for the regularizatio...

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Main Authors: Qing Liu, Michael Schmidt, Roland Pail, Martin Willberg
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Remote Sensing
Subjects:
VCE
Online Access:https://www.mdpi.com/2072-4292/12/10/1617
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spelling doaj-0b4bf11a883740068f47853d1edba0662020-11-25T02:03:35ZengMDPI AGRemote Sensing2072-42922020-05-01121617161710.3390/rs12101617Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field ModelingQing Liu0Michael Schmidt1Roland Pail2Martin Willberg3Deutsches Geodätisches Forschungsinstitut der Technischen Universität München (DGFI-TUM), Arcisstr. 21, 80333 Munich, GermanyDeutsches Geodätisches Forschungsinstitut der Technischen Universität München (DGFI-TUM), Arcisstr. 21, 80333 Munich, GermanyInstitute for Astronomical and Physical Geodesy, Technical University of Munich, Arcisstr. 21, 80333 Munich, GermanyInstitute for Astronomical and Physical Geodesy, Technical University of Munich, Arcisstr. 21, 80333 Munich, GermanyVarious types of heterogeneous observations can be combined within a parameter estimation process using spherical radial basis functions (SRBFs) for regional gravity field refinement. In this process, regularization is in most cases inevitable, and choosing an appropriate value for the regularization parameter is a crucial issue. This study discusses the drawbacks of two frequently used methods for choosing the regularization parameter, which are the L-curve method and the variance component estimation (VCE). To overcome their drawbacks, two approaches for the regularization parameter determination are proposed, which combine the L-curve method and VCE. The first approach, denoted as “VCE-Lc”, starts with the calculation of the relative weights between the observation techniques by means of VCE. Based on these weights, the L-curve method is applied to determine the regularization parameter. In the second approach, called “Lc-VCE”, the L-curve method determines first the regularization parameter, and it is set to be fixed during the calculation of the relative weights between the observation techniques from VCE. To evaluate and compare the performance of the two proposed methods with the L-curve method and VCE, all these four methods are applied in six study cases using four types of simulated observations in Europe, and their modeling results are compared with the validation data. The RMS errors (w.r.t the validation data) obtained by VCE-Lc and Lc-VCE are smaller than those obtained from the L-curve method and VCE in all the six cases. VCE-Lc performs the best among these four tested methods, no matter if using SRBFs with smoothing or non-smoothing features. These results prove the benefits of the two proposed methods for regularization parameter determination when different data sets are to be combined.https://www.mdpi.com/2072-4292/12/10/1617regional gravity field modelingspherical radial basis functionscombination of heterogeneous observationsregularization parameterVCEthe L-curve method
collection DOAJ
language English
format Article
sources DOAJ
author Qing Liu
Michael Schmidt
Roland Pail
Martin Willberg
spellingShingle Qing Liu
Michael Schmidt
Roland Pail
Martin Willberg
Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field Modeling
Remote Sensing
regional gravity field modeling
spherical radial basis functions
combination of heterogeneous observations
regularization parameter
VCE
the L-curve method
author_facet Qing Liu
Michael Schmidt
Roland Pail
Martin Willberg
author_sort Qing Liu
title Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field Modeling
title_short Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field Modeling
title_full Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field Modeling
title_fullStr Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field Modeling
title_full_unstemmed Determination of the Regularization Parameter to Combine Heterogeneous Observations in Regional Gravity Field Modeling
title_sort determination of the regularization parameter to combine heterogeneous observations in regional gravity field modeling
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-05-01
description Various types of heterogeneous observations can be combined within a parameter estimation process using spherical radial basis functions (SRBFs) for regional gravity field refinement. In this process, regularization is in most cases inevitable, and choosing an appropriate value for the regularization parameter is a crucial issue. This study discusses the drawbacks of two frequently used methods for choosing the regularization parameter, which are the L-curve method and the variance component estimation (VCE). To overcome their drawbacks, two approaches for the regularization parameter determination are proposed, which combine the L-curve method and VCE. The first approach, denoted as “VCE-Lc”, starts with the calculation of the relative weights between the observation techniques by means of VCE. Based on these weights, the L-curve method is applied to determine the regularization parameter. In the second approach, called “Lc-VCE”, the L-curve method determines first the regularization parameter, and it is set to be fixed during the calculation of the relative weights between the observation techniques from VCE. To evaluate and compare the performance of the two proposed methods with the L-curve method and VCE, all these four methods are applied in six study cases using four types of simulated observations in Europe, and their modeling results are compared with the validation data. The RMS errors (w.r.t the validation data) obtained by VCE-Lc and Lc-VCE are smaller than those obtained from the L-curve method and VCE in all the six cases. VCE-Lc performs the best among these four tested methods, no matter if using SRBFs with smoothing or non-smoothing features. These results prove the benefits of the two proposed methods for regularization parameter determination when different data sets are to be combined.
topic regional gravity field modeling
spherical radial basis functions
combination of heterogeneous observations
regularization parameter
VCE
the L-curve method
url https://www.mdpi.com/2072-4292/12/10/1617
work_keys_str_mv AT qingliu determinationoftheregularizationparametertocombineheterogeneousobservationsinregionalgravityfieldmodeling
AT michaelschmidt determinationoftheregularizationparametertocombineheterogeneousobservationsinregionalgravityfieldmodeling
AT rolandpail determinationoftheregularizationparametertocombineheterogeneousobservationsinregionalgravityfieldmodeling
AT martinwillberg determinationoftheregularizationparametertocombineheterogeneousobservationsinregionalgravityfieldmodeling
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