Evaluating stochastic models for estimating site velocity from daily and weekly GNSS time series in the stable region of the South American plate
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Haroldo Antonio Marques
, Lucas Gonzales Lima Pereira Calado
, João Francisco Galera Monico
, Heloisa Alves Silva Marques
, Maurício Carvalho Mathias de Paulo
and Gabriela de Oliveira Nascimento Brassarote
Abstract
Accurate estimation of GNSS station velocities requires a precise characterization of stochastic noise in coordinate time series. This study evaluates stochastic models for estimating site velocities using weekly network and daily PPP GNSS solutions from 74 stations in the stable South American mid-plate. The functional model incorporated seasonal components, while the stochastic model was based on noise variance estimates. The Non-Negative Least Squares Variance Component Estimation method was applied to estimate noise amplitudes, classifying noise as a combination of white and colored components. Additionally, the spectral index was refined using Maximum Likelihood Estimation. Results show that most time series are best described by a combination of white and flicker noise, with differences in spectral properties between weekly and daily solutions. The impact of these models on velocity uncertainties was assessed, showing that neglecting an appropriate noise model can lead to overestimated uncertainties. These findings contribute to improving GNSS-based velocity estimations for geodynamic studies.
Funding source: Conselho Nacional de Desenvolvimento Científico e Tecnológico
Award Identifier / Grant number: 304773/2021-2
Award Identifier / Grant number: 431559/2018-0
Funding source: Coordenação de Aperfeiçoamento de Pessoal de Nível Superior
Award Identifier / Grant number: 495252/2020-00
Award Identifier / Grant number: 817759/2023-00
Acknowledgments
The authors would like to express their gratitude to the Nevada Geodetic Laboratory (http://geodesy.unr.edu/) and SIRGAS-CON (https://www.sirgas.org/en/sirgas-realizations/sirgas-connetwork/) for providing free access to the GNSS time series database. We also extend our thanks to the Graduate Program in Cartographic Sciences at FCT-UNESP.
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Research ethics: Not applicable.
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Informed consent: Not applicable.
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Author contributions: All authors have accepted responsibility for the entire content of this manuscript and approved its submission.
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Use of Large Language Models, AI and Machine Learning Tools: None declared.
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Conflict of interest: The authors state no conflict of interest.
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Research funding: Marques (grant 431559/2018-0) is funded by the Brazilian National Council for Scientific and Technological Development (CNPq) (https://doi.org/10.13039/501100003593). Monico also acknowledges CNPq for support through grant 304773/2021-2. Calado (grant 817759/2023-00 and 495252/2020-00) is funded by Coordination of Superior Level Staff Improvement (CAPES) (https://doi.org/10.13039/501100002322).
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Data availability: Not applicable.
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