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Helmert Variance Component Estimation for Multi-GNSS Relative Positioning

The Multi-constellation Global Navigation Satellite System (Multi-GNSS) has become the standard implementation of high accuracy positioning and navigation applications. It is well known that the noise of code and phase measurements depend on GNSS constellation. Then, Helmert variance component estim...

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Autores principales: Li, Mowen, Nie, Wenfeng, Xu, Tianhe, Rovira-Garcia, Adria, Fang, Zhenlong, Xu, Guochang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7038394/
https://www.ncbi.nlm.nih.gov/pubmed/31991729
http://dx.doi.org/10.3390/s20030669
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author Li, Mowen
Nie, Wenfeng
Xu, Tianhe
Rovira-Garcia, Adria
Fang, Zhenlong
Xu, Guochang
author_facet Li, Mowen
Nie, Wenfeng
Xu, Tianhe
Rovira-Garcia, Adria
Fang, Zhenlong
Xu, Guochang
author_sort Li, Mowen
collection PubMed
description The Multi-constellation Global Navigation Satellite System (Multi-GNSS) has become the standard implementation of high accuracy positioning and navigation applications. It is well known that the noise of code and phase measurements depend on GNSS constellation. Then, Helmert variance component estimation (HVCE) is usually used to adjust the contributions of different GNSS constellations by determining their individual variances of unit weight. However, HVCE requires a heavy computation load. In this study, the HVCE posterior weighting was employed to carry out a kinematic relative Multi-GNSS positioning experiment with six short-baselines from day of year (DoY) 171 to 200 in 2019. As a result, the HVCE posterior weighting strategy improved Multi-GNSS positioning accuracy by 20.5%, 15.7% and 13.2% in east-north-up (ENU) components, compared to an elevation-dependent (ED) priori weighting strategy. We observed that the weight proportion of both code and phase observations for each GNSS constellation were consistent during the entire 30 days, which indicates that the weight proportions of both code and phase observations are stable over a long period of time. It was also found that the quality of a phase observation is almost equivalent in each baseline and GNSS constellation, whereas that of a code observation is different. In order to reduce the time consumption of the HVCE method without sacrificing positioning accuracy, the stable variances of unit weights of both phase and code observations obtained over 30 days were averaged and then frozen as a priori information in the positioning experiment. The result demonstrated similar ENU improvements of 20.0%, 14.1% and 11.1% with respect to the ED method but saving 88% of the computation time of the HCVE strategy. Our study concludes with the observations that the frozen variances of unit weight (FVUW) could be applied to the positioning experiment for the next 30 days, that is, from DoY 201 to 230 in 2019, improving the positioning ENU accuracy of the ED method by 18.1%, 13.2% and 10.6%, indicating the effectiveness of the FVUW.
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spelling pubmed-70383942020-03-09 Helmert Variance Component Estimation for Multi-GNSS Relative Positioning Li, Mowen Nie, Wenfeng Xu, Tianhe Rovira-Garcia, Adria Fang, Zhenlong Xu, Guochang Sensors (Basel) Article The Multi-constellation Global Navigation Satellite System (Multi-GNSS) has become the standard implementation of high accuracy positioning and navigation applications. It is well known that the noise of code and phase measurements depend on GNSS constellation. Then, Helmert variance component estimation (HVCE) is usually used to adjust the contributions of different GNSS constellations by determining their individual variances of unit weight. However, HVCE requires a heavy computation load. In this study, the HVCE posterior weighting was employed to carry out a kinematic relative Multi-GNSS positioning experiment with six short-baselines from day of year (DoY) 171 to 200 in 2019. As a result, the HVCE posterior weighting strategy improved Multi-GNSS positioning accuracy by 20.5%, 15.7% and 13.2% in east-north-up (ENU) components, compared to an elevation-dependent (ED) priori weighting strategy. We observed that the weight proportion of both code and phase observations for each GNSS constellation were consistent during the entire 30 days, which indicates that the weight proportions of both code and phase observations are stable over a long period of time. It was also found that the quality of a phase observation is almost equivalent in each baseline and GNSS constellation, whereas that of a code observation is different. In order to reduce the time consumption of the HVCE method without sacrificing positioning accuracy, the stable variances of unit weights of both phase and code observations obtained over 30 days were averaged and then frozen as a priori information in the positioning experiment. The result demonstrated similar ENU improvements of 20.0%, 14.1% and 11.1% with respect to the ED method but saving 88% of the computation time of the HCVE strategy. Our study concludes with the observations that the frozen variances of unit weight (FVUW) could be applied to the positioning experiment for the next 30 days, that is, from DoY 201 to 230 in 2019, improving the positioning ENU accuracy of the ED method by 18.1%, 13.2% and 10.6%, indicating the effectiveness of the FVUW. MDPI 2020-01-25 /pmc/articles/PMC7038394/ /pubmed/31991729 http://dx.doi.org/10.3390/s20030669 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Li, Mowen
Nie, Wenfeng
Xu, Tianhe
Rovira-Garcia, Adria
Fang, Zhenlong
Xu, Guochang
Helmert Variance Component Estimation for Multi-GNSS Relative Positioning
title Helmert Variance Component Estimation for Multi-GNSS Relative Positioning
title_full Helmert Variance Component Estimation for Multi-GNSS Relative Positioning
title_fullStr Helmert Variance Component Estimation for Multi-GNSS Relative Positioning
title_full_unstemmed Helmert Variance Component Estimation for Multi-GNSS Relative Positioning
title_short Helmert Variance Component Estimation for Multi-GNSS Relative Positioning
title_sort helmert variance component estimation for multi-gnss relative positioning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7038394/
https://www.ncbi.nlm.nih.gov/pubmed/31991729
http://dx.doi.org/10.3390/s20030669
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