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A low-complexity non-intrusive approach to predict the energy demand of buildings over short-term horizons

Authors :
David E. Culler
Filippos Christianos
Marco Pritoni
Konstantinos Mykoniatis
Orestis P. Panagopoulos
Michail Katsigiannis
Therese Peffer
Nicholas R. Jennings
Georgios Chalkiadakis
Timothy Lipman
Athanasios Aris Panagopoulos
Source :
Advances in Building Energy Research, vol 16, iss 2
Publication Year :
2020
Publisher :
Informa UK Limited, 2020.

Abstract

Summarization: Reliable, non-intrusive, short-term (of up to 12 h ahead) prediction of a building's energy demand is a critical component of intelligent energy management applications. A number of such approaches have been proposed over time, utilizing various statistical and, more recently, machine learning techniques, such as decision trees, neural networks and support vector machines. Importantly, all of these works barely outperform simple seasonal auto-regressive integrated moving average models, while their complexity is significantly higher. In this work, we propose a novel low-complexity non-intrusive approach that improves the predictive accuracy of the state-of-the-art by up to ∼10%. The backbone of our approach is a K-nearest neighbours search method, that exploits the demand pattern of the most similar historical days, and incorporates appropriate time-series pre-processing and easing. In the context of this work, we evaluate our approach against state-of-the-art methods and provide insights on their performance. Presented on: Advances in Building Energy Research

Details

ISSN :
17562201 and 17512549
Volume :
16
Database :
OpenAIRE
Journal :
Advances in Building Energy Research
Accession number :
edsair.doi.dedup.....c6339e989a4f7e08a4d5b05d89f3c69d