Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS

After the BeiDou Navigation Satellite System (BDS) was completed in 2020, the combination of Global Positioning System (GPS), BDS, and Galileo became a popular multi-constellation Precise Point Positioning (PPP) method. With the further standardization of state-space representation (SSR) after March...

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Main Authors: Liu, Peng, Ling, Keck Voon, Qin, Honglei, Jiang, Xue, Lu, Jun
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2024
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Online Access:https://hdl.handle.net/10356/178294
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1782942024-06-11T01:48:30Z Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS Liu, Peng Ling, Keck Voon Qin, Honglei Jiang, Xue Lu, Jun School of Electrical and Electronic Engineering Engineering Precise Point Positioning Real-Time Service After the BeiDou Navigation Satellite System (BDS) was completed in 2020, the combination of Global Positioning System (GPS), BDS, and Galileo became a popular multi-constellation Precise Point Positioning (PPP) method. With the further standardization of state-space representation (SSR) after March 2021, the suitability of different stochastic models may vary in multi-constellation real-time PPP with SSR corrections. To select an optimal stochastic model, this paper statistically assesses different stochastic models in real-time PPP with SSR corrections at a new mountpoint. In detail, the quality of service (QoS) is analyzed after mountpoints are updated on 22 Mar. 2021. Meanwhile, the four commonly used elevation-dependent stochastic models are compared after expressing the observation model. Specifically, as a modest breakthrough, the Cramer-Rao lower bound (CRLB) is introduced to obtain theoretical evidence for possible variations in the suitability of a stochastic model with varying SSR through the mathematical relationship of positioning errors, ephemeris errors, and the stochastic model. Subsequently, the real-time statistical experiments, which are based on 46 reference stations on the Multi-Global Navigation Satellite System Experiment (MGEX) in static and simulated kinematic modes under GPS/Galileo/BDS during continuous 21 days, are statistically analyzed in terms of the positioning accuracy, precision, and convergence. The positioning accuracy and precision of the four commonly used stochastic models are similar, the convergence of the sine stochastic model is optimal in real-time PPP with updated state-space representation (SSR) corrections. The mean convergence time reduces by 51.21% and 25.80%, and the stability of convergence increases by 33.78% and 7.29%, compared with the worst stochastic model in real-time static and simulated kinematic PPP. Finally, the field experiments verified that the sine stochastic model matches best with updated SSR corrections from Centre National d′études Spatiales (CNES) for real-time PPP. Agency for Science, Technology and Research (A*STAR) This work was supported by Advanced Manufacturing and Engineering (AME) Industry Alignment Fund – Pre Positioning (IAF-PP) (Grant No. A19D6a0053) funded by Agency for Science, Technology and Research (A*STAR) in RESEARCH, INNOVATION AND ENTERPRISE (RIE) 2020, Singapore. 2024-06-11T01:48:30Z 2024-06-11T01:48:30Z 2024 Journal Article Liu, P., Ling, K. V., Qin, H., Jiang, X. & Lu, J. (2024). Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS. Advances in Space Research, 73(9), 4571-4583. https://dx.doi.org/10.1016/j.asr.2024.01.036 0273-1177 https://hdl.handle.net/10356/178294 10.1016/j.asr.2024.01.036 2-s2.0-85183987262 9 73 4571 4583 en A19D6a0053 Advances in Space Research © 2024 COSPAR. Published by Elsevier B.V. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
Precise Point Positioning
Real-Time Service
spellingShingle Engineering
Precise Point Positioning
Real-Time Service
Liu, Peng
Ling, Keck Voon
Qin, Honglei
Jiang, Xue
Lu, Jun
Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS
description After the BeiDou Navigation Satellite System (BDS) was completed in 2020, the combination of Global Positioning System (GPS), BDS, and Galileo became a popular multi-constellation Precise Point Positioning (PPP) method. With the further standardization of state-space representation (SSR) after March 2021, the suitability of different stochastic models may vary in multi-constellation real-time PPP with SSR corrections. To select an optimal stochastic model, this paper statistically assesses different stochastic models in real-time PPP with SSR corrections at a new mountpoint. In detail, the quality of service (QoS) is analyzed after mountpoints are updated on 22 Mar. 2021. Meanwhile, the four commonly used elevation-dependent stochastic models are compared after expressing the observation model. Specifically, as a modest breakthrough, the Cramer-Rao lower bound (CRLB) is introduced to obtain theoretical evidence for possible variations in the suitability of a stochastic model with varying SSR through the mathematical relationship of positioning errors, ephemeris errors, and the stochastic model. Subsequently, the real-time statistical experiments, which are based on 46 reference stations on the Multi-Global Navigation Satellite System Experiment (MGEX) in static and simulated kinematic modes under GPS/Galileo/BDS during continuous 21 days, are statistically analyzed in terms of the positioning accuracy, precision, and convergence. The positioning accuracy and precision of the four commonly used stochastic models are similar, the convergence of the sine stochastic model is optimal in real-time PPP with updated state-space representation (SSR) corrections. The mean convergence time reduces by 51.21% and 25.80%, and the stability of convergence increases by 33.78% and 7.29%, compared with the worst stochastic model in real-time static and simulated kinematic PPP. Finally, the field experiments verified that the sine stochastic model matches best with updated SSR corrections from Centre National d′études Spatiales (CNES) for real-time PPP.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Liu, Peng
Ling, Keck Voon
Qin, Honglei
Jiang, Xue
Lu, Jun
format Article
author Liu, Peng
Ling, Keck Voon
Qin, Honglei
Jiang, Xue
Lu, Jun
author_sort Liu, Peng
title Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS
title_short Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS
title_full Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS
title_fullStr Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS
title_full_unstemmed Optimal selection of elevation-dependent stochastic models for real-time PPP with GPS/Galileo/BDS
title_sort optimal selection of elevation-dependent stochastic models for real-time ppp with gps/galileo/bds
publishDate 2024
url https://hdl.handle.net/10356/178294
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