Development of Intelligent Electricity Saving System Using SARIMA Algorithm

Heo, Jun;Kim, Kyung-Shin

  • Received : 2014.10.20
  • Accepted : 2014.12.05
  • Published : 2014.12.31


Many people all over the world have been conducting a great deal of research to solve the problem of global warming since the great majority consider reduction of CO2 as the only solution for that. That is why the production and conservation of energy is thought to be highly crucial. while it is important to produce energy with the high efficiency, the efficient use of the energy is also important. This paper focused on the development of devices for the reducing electricity which is a primary energy source used in homes, shops, buildings, factories and so on. Also the objective of this paper is to develop the inference mechanism as the core component of the devices. Therefore, in this paper, we propose the inference algorithm for reducing the electricity consumption using SARIMA mode and present the feasibility of the procedure.


Inference algorithm;SARIMA mode;Reducing electricity consumption;Global warming


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