Impacts of building load dispersion level on its load forecasting accuracy : data or algorithms? Importance of reliability and interpretability in machine learning
Hu, Maomao and Stephen, Bruce and Browell, Jethro and Haben, Stephen and Wallom, David C.H. (2023) Impacts of building load dispersion level on its load forecasting accuracy : data or algorithms? Importance of reliability and interpretability in machine learning. Energy and Buildings, 285. 112896. ISSN 0378-7788 (https://doi.org/10.1016/j.enbuild.2023.112896)
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Abstract
Data-driven forecasting techniques have been widely used for building load forecasting due to their accuracy and wide availability of operational data. Recent advances have been underpinned by the increased capability of machine learning (ML) algorithms; however, most studies only tested ML techniques on a single or a small number of buildings over short periods, lacking reliable tests. Moreover, few studies focused on the effects of characteristics of building load profiles on forecast accuracy, lacking the interpretation of ML-based prediction results. In this study, we investigate the impacts of building load dispersion level on its best load forecasting accuracy, which is obtained by comparing the forecasting performances of 11 prediction models over 9 weeks for 56 British non-domestic buildings. We find that conventional shallow ML models still outperform the increasingly popular deep learning models for time-series load forecasting, and ensemble learning can help improve forecast accuracy by integrating diverse individual models. We demonstrate that each building’s best forecasting performance is largely influenced by the load dispersion level. In practice, the proposed dispersion metrics are recommended to quantify load dispersion levels before model development. For a building with a low dispersion level, the simple persistence model has satisfactory performance and could be directly used for design, control, and fault diagnosis of building energy systems for energy efficiency and energy flexibility.
ORCID iDs
Hu, Maomao, Stephen, Bruce ORCID: https://orcid.org/0000-0001-7502-8129, Browell, Jethro, Haben, Stephen and Wallom, David C.H.;-
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Item type: Article ID code: 84296 Dates: DateEvent15 April 2023Published15 February 2023Published Online12 February 2023AcceptedSubjects: Technology > Engineering (General). Civil engineering (General) Department: Faculty of Engineering > Electronic and Electrical Engineering Depositing user: Pure Administrator Date deposited: 20 Feb 2023 14:09 Last modified: 21 Nov 2024 03:30 URI: https://strathprints.strath.ac.uk/id/eprint/84296