Title :
Appliance and state recognition using Hidden Markov Models
Author :
Ridi, Antonio ; Gisler, Christophe ; Hennebert, Jean
Author_Institution :
IcoSys Inst., Univ. of Appl. Sci. Western Switzerland, Fribourg, Switzerland
Abstract :
We asset about the analysis of electrical appliance consumption signatures for the identification task. We apply Hidden Markov Models to appliance signatures for the identification of their category and of the most probable sequence of states. The electrical signatures are measured at low frequency (10-1 Hz) and are sourced from a specific database. We follow two predefined protocols for providing comparable results. Recovering information on the actual appliance state permits to potentially adopt energy saving measures, as switching off stand-by appliances or, generally speaking, changing their state. Moreover, in most of the cases appliance states are related to user activities: the user interaction usually involves a transition of the appliance state. Information about the state transition could be useful in Smart Home / Building Systems to reduce energy consumption and increase human comfort.We report the results of the classification tasks in terms of confusion matrices and accuracy rates. Finally, we present our application for a real-time data visualization and the recognition of the appliance category with its actual state.
Keywords :
data visualisation; domestic appliances; energy conservation; hidden Markov models; home automation; appliance category recognition; appliance recognition; appliance states; confusion matrices; electrical appliance consumption signatures; electrical signatures; energy consumption reduction; energy saving measures; hidden Markov models; human comfort; identification task; real-time data visualization; smart home-building systems; stand-by appliances; state recognition; user activities; user interaction; Accuracy; Computational modeling; Databases; Hidden Markov models; Home appliances; Monitoring; Protocols; Appliance Identification; Appliance State Recognition; Intrusive Load Monitoring (ILM);
Conference_Titel :
Data Science and Advanced Analytics (DSAA), 2014 International Conference on
DOI :
10.1109/DSAA.2014.7058084