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Título
Learning and training techniques in fuzzy control for energy efficiency in buildings
Autor
Publicado en
Logic Journal of the IGPL. 2012, V. 20, n. 4, p. 757-769
Editorial
Oxford University Press
Fecha de publicación
2011-02
ISSN
1367-0751
DOI
10.1093/jigpal/jzr022
Resumen
A novel procedure for learning Fuzzy Controllers (FC) is proposed that concerns with energy efficiency issues in distributing electrical energy to heaters in an electrical energy heating system. Energy rationalization together with temperature control can significantly improve energy efficiency, by efficiently controlling electrical heating systems and electrical energy consumption. The novel procedure, which improves the training process, is designed to train the FC, as well as to run the control algorithm and to carry out energy distribution. Firstly, the dynamic thermal performance of different variables is mathematically modelled for each specific building type and climate zone. Secondly, an exploratory projection pursuit method is used to extract the relevant features. Finally, a supervised dynamic neural network model and identification techniques are applied to FC learning and training. The FC rule-set and parameter-set learning process is a multi-objective problem that minimizes both the indoor temperature error and the energy deficit in the house. The reliability of the proposed procedure is validated for a city in a winter zone in Spain.
Palabras clave
Computational Intelligence
Soft computing Systems
Mathematical and Identification Systems
Artificial Neural Networks
Non-linear Systems
Materia
Informática
Computer science
Matemáticas
Mathematics
Versión del editor
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