Internet of Things Based on Situation-Awareness for Energy Efficiency

Autores

  • Un Hee Schiefelbein Universidade Federal de Santa Maria http://orcid.org/0000-0003-4628-2800
  • Diovane Soligo Colégio Politécnico - UFSM
  • Vinícius Maran Laboratory of Ubiquitous, Mobile and Applied Computing (LUMAC) – Universidade Federal de Santa Maria (UFSM)
  • José Palazzo M. de Oliveira Instituto de Informática – Universidade Federal do Rio Grande do Sul (UFRGS) Porto Alegre, Rio Grande do Sul – Brazil
  • João Carlos Damasceno Lima PROGRAMA DE PÓS–GRADUAÇÃO EM CIÊNCIA DA COMPUTAÇÃO - Universidade Federal de Santa Maria
  • Alencar Machado PROGRAMA DE PÓS–GRADUAÇÃO EM CIÊNCIA DA COMPUTAÇÃO - Universidade Federal de Santa Maria

Palavras-chave:

Context-awareness, nergy efficiency, pervasive application

Resumo

The reduction of electric energy consumption is considered as one of the main challenges in diverse sectors of the economy. To residential customers, the management of energy consumption can bring significant costs reduction and decreased environmental impact. This work presents a solution based on the use of situation-awareness applied in IOT that helps the users to reduce the consumption of electric energy through its own residence. The practical results obtained in the application of this proposal in a real-live scenario confirmed the option of collecting information directly of electrical appliances and inform the user of their energy expenditures in real-time, allowing the knowledge and the management of their expenses.

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Publicado

2019-04-17

Como Citar

Schiefelbein, U. H., Soligo, D., Maran, V., de Oliveira, J. P. M., Lima, J. C. D., & Machado, A. (2019). Internet of Things Based on Situation-Awareness for Energy Efficiency. ISys - Brazilian Journal of Information Systems, 12(1), 28–53. Recuperado de https://seer.unirio.br/isys/article/view/7866

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