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2023 Journal Impact Factor - 0.7
2023 CiteScore - 1.4
ISSN 2083-6473
ISSN 2083-6481 (electronic version)
Editor-in-Chief
Associate Editor
Prof. Tomasz Neumann
Published by
TransNav, Faculty of Navigation
Gdynia Maritime University
3, John Paul II Avenue
81-345 Gdynia, POLAND
e-mail transnav@umg.edu.pl
GNSS Positioning Error Change-point Detection in GNSS Positioning Performance Modelling
1 University of Ljubljana, Ljubljana, Slovenia
2 Zagreb University of Applied Sciences, Zagreb, Croatia
3 University of Rijeka, Rijeka, Croatia
2 Zagreb University of Applied Sciences, Zagreb, Croatia
3 University of Rijeka, Rijeka, Croatia
Times cited (SCOPUS): 3
ABSTRACT: Provision of uninterrupted and robust Positioning, Navigation, and Timing (PNT) services is essential task of Global Navigation Satellite Systems (GNSS) as an enabling technology for numerous technology and socio-economic applications, a cornerstone of the modern civilisation, a public goods, and an essential component of a national infrastructure. GNSS resilience may be accomplished only with complete understanding of the causes of GNSS positioning performance disruptions and degradations, presented in a form of applications- and scenarios-related models. Here the application of change-point detection methods is proposed and demonstrated in a selected scenario of a fast-developing ionospheric storm’s impact on GNSS positioning performance, as a novel contribution to forecasting GNSS positioning performance model development and GNSS utilisation risk mitigation.
KEYWORDS: Global Navigation Satellite System (GNSS), Positioning, Navigation and Timing (PNT), GNSS Positioning Performance, GNSS Resilience, GNSS Positioning Performance Modelling, GNSS Positioning Error Change-point Detection, GNSS Utilisation Risk Mitigation, GNSS Positioning Performance Degradation
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Citation note:
Filić M., Filjar R.: GNSS Positioning Error Change-point Detection in GNSS Positioning Performance Modelling. TransNav, the International Journal on Marine Navigation and Safety of Sea Transportation, Vol. 13, No. 3, doi:10.12716/1001.13.03.12, pp. 575-579, 2019
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