Scientific Data | 2021

DEDDIAG, a domestic electricity demand dataset of individual appliances in Germany

 
 
 

Abstract


Real-world domestic electricity demand datasets are the key enabler for developing and evaluating machine learning algorithms that facilitate the analysis of demand attribution and usage behavior. Breaking down the electricity demand of domestic households is seen as the key technology for intelligent smart-grid management systems that seek an equilibrium of electricity supply and demand. For the purpose of comparable research, we publish DEDDIAG, a domestic electricity demand dataset of individual appliances in Germany. The dataset contains recordings of 15 homes over a period of up to 3.5 years, wherein total 50 appliances have been recorded at a frequency of 1\u2009Hz. Recorded appliances are of significance for load-shifting purposes such as dishwashers, washing machines and refrigerators. One home also includes three-phase mains readings that can be used for disaggregation tasks. Additionally, DEDDIAG contains manual ground truth event annotations for 14 appliances, that provide precise start and stop timestamps. Such annotations have not been published for any long-term electricity dataset we are aware of. Measurement(s) domestic appliance electricity usage • whole-house mains reading • ground truth event annotations Technology Type(s) energy measurement system • Annotation Sample Characteristic - Environment house Sample Characteristic - Location Germany Machine-accessible metadata file describing the reported data: https://doi.org/10.6084/m9.figshare.14753556

Volume 8
Pages None
DOI 10.1038/s41597-021-00963-2
Language English
Journal Scientific Data

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