Electrotechnical and Computer Engineering
Vol. 35 No. 03 (2020): Proceedings of the Faculty of Technical Sciences
FUZZY ENERGY MANAGEMENT CONTROLLER FOR SMART HOME
Abstract
The study is based on analyzing the electricity consumption that is most reflected through the use of HVAC systems and lighting.
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