1. Robust Energy Disaggregation using Appliance-Specific Temporal Contextual Information
- Author
-
Pascal A. Schirmer, Akbar Sheikh-Akbari, and Iosif Mporas
- Subjects
Energy disaggregation ,Computer science ,020209 energy ,lcsh:Electronics ,lcsh:TK7800-8360 ,02 engineering and technology ,computer.software_genre ,Contextual temporal information ,lcsh:Telecommunication ,Two-stage energy disaggregation ,lcsh:TK5101-6720 ,0202 electrical engineering, electronic engineering, information engineering ,Information system ,Contextual information ,020201 artificial intelligence & image processing ,Load monitoring ,Data mining ,Total energy ,Baseline (configuration management) ,Non-intrusive ,computer ,Energy (signal processing) - Abstract
An extension of the baseline non-intrusive load monitoring approach for energy disaggregation using temporal contextual information is presented in this paper. In detail, the proposed approach uses a two-stage disaggregation methodology with appliance-specific temporal contextual information in order to capture time-varying power consumption patterns in low-frequency datasets. The proposed methodology was evaluated using datasets of different sampling frequency, number and type of appliances. When employing appliance-specific temporal contextual information, an improvement of 1.5% up to 7.3% was observed. With the two-stage disaggregation architecture and using appliance-specific temporal contextual information, the overall energy disaggregation accuracy was further improved across all evaluated datasets with the maximum observed improvement, in terms of absolute increase of accuracy, being equal to 6.8%, thus resulting in a maximum total energy disaggregation accuracy improvement equal to 10.0%.
- Published
- 2020