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  4. Fjord5G: A comprehensive 5G dataset for coastal maritime connectivity
 
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Fjord5G: A comprehensive 5G dataset for coastal maritime connectivity

Publikationstyp
Conference Paper
Date Issued
2025-06
Sprache
English
Author(s)
Denizer, Birkan  
Dohse, Nils  
Landsiedel, Olaf  
Networked Cyber-Physical Systems E-17  
TORE-URI
https://hdl.handle.net/11420/58351
Start Page
1
End Page
5
Citation
101st IEEE Vehicular Technology Conference, VTC 2025
Contribution to Conference
101st IEEE Vehicular Technology Conference, VTC 2025  
Publisher DOI
10.1109/VTC2025-Spring65109.2025.11174898
Scopus ID
2-s2.0-105019051836
Publisher
IEEE
ISBN
979-8-3315-3148-5
979-8-3315-3147-8
In recent years, the use of machine learning (ML) in cellular networking has increased significantly, enabled by the availability of new ML algorithms and cellular datasets. However, existing 5G datasets focus mainly on land-based vehicular networks, which do not capture the unique challenges of the coastal maritime domain. This includes large distances from base stations, dynamic sea states, such as waves and tides, and varying interference from water surface reflections and nearby vessels. This paper introduces the Fjord5G<sup>1</sup><sup>1</sup>https://github.com/ds-kiel/Fjord5G, a 5G dataset for coastal maritime connectivity research. We conduct an extensive measurement campaign aboard research and public ferries in the Kiel Fjord, Germany, collecting GPS-located cellular data along maritime routes. These measurements cover the network conditions encountered in coastal and near-shore regions and provide insights into metrics such as signal strength, modulation, and bandwidth. The resulting dataset includes cellular measurements at a sampling rate of 1 Hz from two mobile network operators, four 5G routers, and two ferries for up to 12 months per router. Initial data analysis reveals key challenges for ML, such as dealing with varying bandwidth and handover events, while highlighting potential features, such as signal strength metrics, that can be exploited to improve coastal maritime connectivity.
Subjects
5G
autonomous ferry
coastal
Dataset
LTE
machine learning
maritime
QoS prediction
remote control
DDC Class
600: Technology
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