Home
Scholarly Works
Sensor Data Visualisation: A Composition-Based...
Chapter

Sensor Data Visualisation: A Composition-Based Approach to Support Domain Variability

Abstract

In the context of the Internet of Things, sensors are surrounding our environment. These small pieces of electronics are inserted in everyday life’s elements (e.g., cars, doors, radiators, smartphones) and continuously collect information about their environment. One of the biggest challenges is to support the development of accurate monitoring dashboard to visualise such data. The one-size-fits-all paradigm does not apply in this context, as user’s roles are variable and impact the way data should be visualised: a building manager does not need to work on the same data as classical users. This paper presents an approach based on model composition techniques to support the development of such monitoring dashboards, taking into account the domain variability. This variability is supported at both implementation and modelling levels. The results are validated on a case study named SmartCampus, involving sensors deployed in a real academic campus.

Authors

Logre I; Mosser S; Collet P; Riveill M

Book title

Modelling Foundations and Applications

Series

Lecture Notes in Computer Science

Volume

8569

Pagination

pp. 101-116

Publisher

Springer Nature

Publication Date

January 1, 2014

DOI

10.1007/978-3-319-09195-2_7
View published work (Non-McMaster Users)

Contact the Experts team