Title :
Load identification from power recordings at meter panel in residential households
Author :
Basu, Kaustav ; Debusschere, Vincent ; Bacha, Seddik
Author_Institution :
Grenoble Electr. Eng. Lab. (G2ELab), St. Martin d´´Heres, France
Abstract :
Identification of electrical appliance usage(s) from the meter panel power reading has become an area of study on its own. Many approaches over the years have used signal processing approaches at a high sampling rate (1 second typically) to evaluate the appliance load signature and subsequently used pattern recognition techniques for identification from a previously trained classifier(s). The proposed approach tries to identify the usage of high power consuming appliance(s) by using the aggregate power consumption at 10 minutes interval from the meter panel. The novelty of the approach lies in using a time series windowing approach which gives addition information about an aggregate power state. The usage of hour of the day as input to the systems also takes into account the temporal behavior of residential users. The usage of Multi-label classification approach for identification is also new for this domain. The model is tested over the IRISE data set and the results are encouraging. Due to its low sampling rate with time stamped aggregate power at 10 minutes scale as the only input from the user, the proposed approach is both practical and affordable.
Keywords :
domestic appliances; pattern recognition; time series; IRISE data set; aggregate power consumption; aggregate power state; appliance load signature evaluation; electrical appliance usage identification; high power consuming appliance; load identification; meter panel power reading; multilabel classification approach; pattern recognition techniques; power recordings; residential households; residential user temporal behavior of; signal processing approaches; time 10 min; time series windowing approach; Accuracy; Aggregates; Data mining; Feature extraction; Home appliances; Training; Water heating; Data mining; Multi-label classification; Non intrusive load monitoring; Residential appliance usage; domestic load separation;
Conference_Titel :
Electrical Machines (ICEM), 2012 XXth International Conference on
Conference_Location :
Marseille
Print_ISBN :
978-1-4673-0143-5
Electronic_ISBN :
978-1-4673-0141-1
DOI :
10.1109/ICElMach.2012.6350172