Skip to main content

Research Repository

Advanced Search

Exploring cross-domain data dependencies for smart homes to improve energy efficiency

Iram, S; Fernando, TP; Bassanino, MN

Authors

S Iram

MN Bassanino



Abstract

Over the past decade, the idea of smart homes has been conceived as a potential solution to counter energy crises or to at least mitigate its intensive destructive consequences in the residential building sector. Smart homes have emerged as one of the applications of Internet of Things (IoT) that enabled the use of technology to automate and customize home services with reference to users’ preferences. However, the concept of smart homes is still not fully matured due to the weak handling of diverse datasets that can be exploited to promote more adaptive, personalised, and context aware capabilities. Furthermore, instead of just deploying integrated automated services in the homes, the focus should be to bring the concerns of potential stakeholders into consideration. In this paper, we have exploited the concepts of ontologies to capture all sorts of data (classes and their subclasses) that belong to one domain based on stakeholders’ requirements analysis. We have also explored their significant associations with other datasets from another domain. In addition, this research work provides an insight about what sorts of interdependencies exist between different datasets across different ontological models such as Smart homes ontology model and ICT ontology model.

Citation

Iram, S., Fernando, T., & Bassanino, M. (2017, December). Exploring cross-domain data dependencies for smart homes to improve energy efficiency. Presented at 10th International Conference on Utility and Cloud Computing, Austin, Texas, USA

Presentation Conference Type Other
Conference Name 10th International Conference on Utility and Cloud Computing
Conference Location Austin, Texas, USA
Start Date Dec 5, 2017
End Date Dec 8, 2017
Publication Date Dec 8, 2017
Deposit Date Jan 18, 2018
Publisher Association for Computing Machinery (ACM)
DOI https://doi.org/10.1145/3147234.3148096
Publisher URL http://dx.doi.org/10.1145/3147234.3148096
Related Public URLs http://www.depts.ttu.edu/cac/conferences/ucc2017/
Additional Information Event Type : Conference