Assessment of local covariance estimation through Least Squares Collocation over Iran

Journal Article (2020)
Author(s)

Sabah Ramouz (University of Tehran)

Yosra Afrasteh (TU Delft - Physical and Space Geodesy)

Mirko Reguzzoni (Politecnico di Milano)

Abdolreza Safari (University of Tehran)

Research Group
Physical and Space Geodesy
Copyright
© 2020 Sabah Ramouz, Y. Afrasteh, Mirko Reguzzoni, Abdolreza Safari
DOI related publication
https://doi.org/10.5194/adgeo-50-65-2020
More Info
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Publication Year
2020
Language
English
Copyright
© 2020 Sabah Ramouz, Y. Afrasteh, Mirko Reguzzoni, Abdolreza Safari
Research Group
Physical and Space Geodesy
Volume number
50
Pages (from-to)
65-75
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Abstract

Covariance determination as the heart of Least Squares Collocation gravity field modeling is based on fitting an analytical covariance to the empirical covariance, which is stemmed from gravimetric data. The main objective of this study is to process different local covariance strategies over four regions with different topography and spatial data distribution in Iran. For this purpose, Least Squares Collocation based on Remove-Compute-Restore technique is implemented. In the Remove step, gravity reduction in regions with a denser distribution and a rougher topography is more effective. In the Compute step, the assessment of the Collocation estimates on the gravity anomaly control points illustrates that data density is more relevant than topography roughness to have a good covariance determination. Moreover, among the different attempts of localizing the covariance estimation, a recursive approach correcting the covariance parameters based on the agreement between Least Squares Collocation estimates and control points shows better performance. Furthermore, we could see that covariance localization in a region with sparse or bad distributed observations is a challenging task and may not necessarily improve the Collocation gravity modeling. Indeed, the geometrical fitness of the empirical and analytical covariances-which is usually a qualitative test to verify the precision of the covariance determination-is not always an adequate criterion.