Title :
ANN-based appliance recognition from low-frequency energy monitoring data
Author :
Paradiso, Francesca ; Paganelli, Federica ; Luchetta, Antonio ; Giuli, Dino ; Castrogiovanni, P.
Author_Institution :
CNIT, Univ. of Florence, Florence, Italy
Abstract :
The rational use and management of energy is a key objective for the evolution towards the smart grid. In particular in the private home domain the adoption of wide-scale energy consumption monitoring techniques can help end users in optimizing energy consumption behaviors. While most existing approaches for load disaggregation and classification requires high-frequency monitoring data, in this paper we propose an approach for detecting and identifying the appliances in use by analysing low-frequency monitoring data gathered by meters (i.e. smart plugs) distributed in the home. Our approach implements a supervised classification algorithm with artificial neural networks and has been tested with a dataset of power traces collected in real-world home settings.
Keywords :
domestic appliances; energy consumption; energy management systems; neural nets; pattern classification; power engineering computing; power system measurement; smart power grids; ANN-based appliance recognition; artificial neural network; energy management; high-frequency monitoring data; load classification; load disaggregation; low-frequency energy monitoring data; power trace dataset; private home domain; smart grid; supervised classification algorithm; wide-scale energy consumption monitoring technique; Artificial neural networks; Energy consumption; Logic gates; Monitoring; Plugs; Washing machines; artificial neural network; energy; home energy management system; home gateway; metering; smart grid;
Conference_Titel :
World of Wireless, Mobile and Multimedia Networks (WoWMoM), 2013 IEEE 14th International Symposium and Workshops on a
Conference_Location :
Madrid
Print_ISBN :
978-1-4673-5827-9
DOI :
10.1109/WoWMoM.2013.6583496