6533b7dbfe1ef96bd126f793

RESEARCH PRODUCT

Global and Local Clustering-Based Regression Models to Forecast Power Consumption in Buildings

José A. GámezEmilio Soria-olivasJesus Martínez-gómezGonzalo VergaraJuan J CarrascoManuel Domínguez

subject

Power consumptionEconomicsEconometricsRegression analysisCluster analysis

description

The study of energy efficiency in buildings is an active field of research. Modeling and predicting energy related magnitudes leads to analyze electric power consumption and can achieve economical benefits. In this study, classical time series analysis and machine learning techniques, introducing clustering in some models, are applied to predict active power in buildings. The real data acquired corresponds to time, environmental and electrical data of 30 buildings belonging to the University of León (Spain). Firstly, we segmented buildings in terms of their energy consumption using principal component analysis. Afterwards, we applied state of the art machine learning methods and compare between them. Finally, we predicted daily electric power consumption profiles and compare them with actual data for different buildings. Our analysis shows that multilayer perceptrons have the lowest error followed by support vector regression and clustered extreme learning machines. We also analyze daily load profiles on weekdays and weekends for different buildings.

https://doi.org/10.4018/978-1-4666-9911-3.ch011