Inicio  /  Applied System Innovation  /  Vol: 6 Par: 3 (2023)  /  Artículo
ARTÍCULO
TITULO

Experimental Evaluation of an IoT-Based Platform for Maritime Transport Services

Sandro Noto    
Molka Gharbaoui    
Mariano Falcitelli    
Barbara Martini    
Piero Castoldi and Paolo Pagano    

Resumen

In recent years, the adoption of innovative technologies in maritime transport and logistics systems has become a key aspect towards their development and growth, especially due to the complex and heterogeneous nature of the maritime environment. On the other hand, Internet of Things (IoT) solutions are gaining importance in the shipping industry thanks to the huge number of distributed cameras and sensors in modern ships, cargoes and sea ports, which can be exploited to improve safety, costs and productivity. This paper presents an experimental evaluation of a maritime platform, which enables a wide range of 5G-based services in the context of logistics and maritime transportation. Its core is a Narrow Band (NB)-IoT framework used to run massive IoT services on top of a hybrid terrestrial?satellite network and feed a OneM2M platform with significant data on maritime transport to develop high-level and value-added logistic applications on top. Among the many different services that could be provided by the maritime platform, we focus on the cargo-ship container tracking use case through the Global Tracking System, which allows for continuous container monitoring all over the seas in a port-to-port service scenario. The results of the experimental tests illustrate the capacity of the platform in managing the high number of messages transmitted by the container tracking devices (i.e., more than 3000) and its efficiency in limiting the average maximum latency and packet loss below 5.5" role="presentation">5.55.5 5.5 s and 0.9" role="presentation">0.90.9 0.9 %, respectively.

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