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Communication Dans Un Congrès Année : 2016

Physical-Interface-Based IoT Service Characterization

Résumé

Connected devices -- as key constituent elements of the Internet of Things (IoT) -- are exponentially flooding our real world environment, making it smarter (smart home / building / city / etc). This unprecedented digital wave paves the way for a major technological breakthrough called to deeply change our daily lives. Nevertheless, in order to make this announced revolution come true, some strong issues remain to be addressed. The most dominant one relates to our ability to leverage the whole IoT service space and more specifically to our ability to compose IoT services from multiple connected devices by cleverly selecting them with the required software functions whatever our technical skills. In such a challenging context, this paper presents a model-based approach particularly allowing an autonomous recommendation of available IoT services to end-users. To support this vision, a rich and flexible abstraction framework relying on Attributed Typed Graphs has been used. The latter formalism enables to represent how known IoT services are composed from different perspectives. Capitalizing on this modeling tool and first focusing on the way IoT services interact with the physical environment, lightweight service signatures are computed by using an innovative physical-interfaced-based algorithm. Finally, we discuss how leveraging the computed signatures can allow for autonomously recommending viable IoT services according to available connected devices.
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Dates et versions

hal-01402421 , version 1 (24-11-2016)

Identifiants

Citer

Michel Le Pallec, Mohamed Omar Mazouz, Ludovic Noirie. Physical-Interface-Based IoT Service Characterization. 6th International Conference on the Internet of Things (IoT'16), Nov 2016, Stuttgartt, Germany. pp.63-71, ⟨10.1145/2991561.2991567⟩. ⟨hal-01402421⟩
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