Title :
EMF Signature for Appliance Classification
Author :
Kulkarni, Anand Sunil ; Harnett, Cindy K. ; Welch, Karla Conn
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Louisville, Louisville, KY, USA
Abstract :
Various intrusive and nonintrusive appliance load monitoring and classification systems have been studied; however, most of them designed so far provide group-level energy usage feedback. We present the first phase of a system with the potential to attribute energy-related events to an individual occupant of a space and provide occupant-specific energy usage feedback in an uninstrumented space (e.g., home or office). This initial phase focuses on collecting the electromagnetic field (EMF) radiated by several common appliances to determine a unique signature for each appliance. It also implements a machine learning algorithm to classify appliances from an incoming EMF data file. The proposed approach has been prototyped with hardware realization. The results obtained on tested appliances indicate the EMF sensor´s ability and potential to develop a system for providing occupant-specific energy feedback.
Keywords :
domestic appliances; electromagnetic fields; energy consumption; learning (artificial intelligence); power engineering computing; EMF sensor ability; EMF signature; appliance classification; electromagnetic field data file; hardware realization; intrusive appliance load classification system; intrusive appliance load monitoring system; machine learning algorithm; nonintrusive appliance load classification system; nonintrusive appliance load monitoring system; Buildings; Electricity; Energy consumption; Fluorescent lamps; Home appliances; Monitoring; Sensors; Decision Trees; EMF sensor; EMF signatures; Energy consumption;
Journal_Title :
Sensors Journal, IEEE
DOI :
10.1109/JSEN.2014.2379113