Satellite–Based Navigation Enhancement Employing Advancements in GPS and Integration with 5G Networks

  IJRES-book-cover  International Journal of Recent Engineering Science (IJRES)          
  
© 2024 by IJRES Journal
Volume-11 Issue-3
Year of Publication : 2024
Authors : Ezeilo Ifeoma Kelechukwu, Ehikhamenle Matthew, Ifeoma Asianuba
DOI : 10.14445/23497157/IJRES-V11I3P106

How to Cite?

Ezeilo Ifeoma Kelechukwu, Ehikhamenle Matthew, Ifeoma Asianuba, "Satellite–Based Navigation Enhancement Employing Advancements in GPS and Integration with 5G Networks," International Journal of Recent Engineering Science, vol. 11, no. 3, pp. 56-63, 2024. Crossref, https://doi.org/10.14445/23497157/IJRES-V11I3P106

Abstract
Modern navigation and location-based services have been completely transformed by satellite-based navigation systems, most notably the Global Positioning System (GPS). In order to improve satellite-based navigation, this article examines the latest developments in GPS technology and how they integrate with 5G networks. Recent developments in GPS technology have greatly increased the precision, dependability, and accessibility of GPS signals. These developments include the launch of additional satellite constellations and upgraded signal processing methods. Improved coverage in indoor and urban locations, reduced latency, and increased data transfer rates are just a few benefits of integrating with 5G networks. Applications for augmented reality, real-time location-based services, and improved car navigation are just a few of the new features and services made possible by the integration of GPS with 5G networks. Moreover, the integration of 5G and GPS can boost the effectiveness and security of transportation networks, allow for more accurate asset tracking and monitoring, and improve location-based applications' overall user experience. All things considered, the combination of GPS and 5G networks marks a substantial development in satellite-based navigation, creating new channels for location-based applications and services. In this study, the Square Root Unscented Stable Filtering algorithm method was proposed for the integration of GPS and 5G to increase the network's dependability, accuracy, and efficiency in placement.

Keywords
Advancements, GPS (Global Positioning Systems), Communications, 5G generation networks, Navigation technologies, Satellites.

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