Abstract
AbstractResearch on smart grid technologies is expected to result in effective climate change mitigation. Non-Intrusive Load Monitoring (NILM) is seen as a key technique for enabling innovative smart-grid services. By breaking down the energy consumption of households and industrial facilities into its components, NILM techniques provide information on present appliances and can be applied to perform diagnostics. As with related Machine Learning problems, research and development requires a sufficient amount of data to train and validate new approaches. As a viable alternative to collecting datasets in buildings during expensive and time-consuming measurement campaigns, the idea of generating synthetic datasets for NILM gain momentum recently. With SynD, we present a synthetic energy dataset with focus on residential buildings. We release 180 days of synthetic power data on aggregate level (i.e. mains) and individual appliances. SynD is the result of a custom simulation process that relies on power traces of real household appliances. In addition, we present several case studies that demonstrate similarity of our dataset and four real-world energy datasets.
Publisher
Springer Science and Business Media LLC
Subject
Library and Information Sciences,Statistics, Probability and Uncertainty,Computer Science Applications,Education,Information Systems,Statistics and Probability
Reference35 articles.
1. Nalmpantis, C. & Vrakas, D. Machine learning approaches for non-intrusive load monitoring: from qualitative to quantitative comparation. Artificial Intelligence Review 52, 217–243 (2019).
2. Hart, G. W. Nonintrusive appliance load monitoring. Proceedings of the IEEE 80, 1870–1891 (1992).
3. Zoha, A., Gluhak, A., Imran, M. & Rajasegarar, S. Non-intrusive load monitoring approaches for disaggregated energy sensing: a survey. Sensors 12, 16838–16866 (2012).
4. Bonfigli, R., Squartini, S., Fagiani, M. & Piazza, F. Unsupervised algorithms for non-intrusive load monitoring: an up-to-date overview. 2015 IEEE 15th International Conference on Environment and Electrical Engineering (EEEIC) 1175–1180 (2015).
5. Pereira, L. & Nunes, N. Performance evaluation in non-intrusive load monitoring: Datasets, metrics, and tools - a review. Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery 8, 1–17 (2018).
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