Modeling the building energy management system of a building using a revised approach of fuzzy cognitive maps

V. Mpelogianni, P. P. Groumpos

Аннотация


Fuzzy Cognitive Maps (FCMs) are a very simple, useful and powerful tool for modeling and analyz-ing dynamic complex systems. FCMs can structure virtual worlds that dynamically change with time. Mathe-matical models of FCMs are reviewed and a number of problems which emerged with them are briefly ana-lyzed. In order to address some of these drawbacks a revised approach is proposed. This approach is being used to analyze the behavior and control the Building Energy Management System of a building. Simulation results of the new method are presented and discussed.


Ключевые слова


Building energy management system; energy efficiency; fuzzy cognitive maps

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Литература


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(c) 2019 V. Mpelogianni, P. P. Groumpos