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Data-Centric UML Profile for Wireless Sensors: Application to Smart Farming

Data-Centric UML Profile for Wireless Sensors: Application to Smart Farming
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Author(s): Julian Eduardo Plazas (Universidad del Cauca, GIT, Popayán, Colombia), Sandro Bimonte (Irstea, UR TSCF, Aubière, France), Gil De Sousa (Irstea, UR TSCF, Aubière, France)and Juan Carlos Corrales (Universidad del Cauca, GIT, Popayán, Colombia)
Copyright: 2019
Volume: 10
Issue: 2
Pages: 28
Source title: International Journal of Agricultural and Environmental Information Systems (IJAEIS)
Editor(s)-in-Chief: Frederic Andres (National Institute of Informatics, Japan), Chutiporn Anutariya (Asian Institute of Technology, Thailand), Teeradaj Racharak (Japan Advanced Institute of Science and Technology, Japan)and Watanee Jearanaiwongkul (National institute of Informatics, Japan)
DOI: 10.4018/IJAEIS.2019040102

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Abstract

Modelling WSN data behaviour is relevant since it would allow to evaluate the capacity of an application for supplying the user needs, moreover, it could enable a transparent integration with different data-centric information systems. Therefore, this article proposes a data-centric UML profile for the design of wireless sensor nodes from the user point-of-view capable of representing the gathered and delivered data of the node. This profile considers different characteristics and configurations of frequency, aggregation, persistence and quality at the level of the wireless sensor nodes. Furthermore, this article validates the UML profile through a computer-aided software engineering (CASE) tool implementation and one case study, centred on the data collected by a real WSN implementation for precision agriculture and smart farming.

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