DocumentCode :
718171
Title :
Acoustic based appliance state identifications for fine-grained energy analytics
Author :
Pathak, Nilavra ; Abdullah Al Hafiz Khan, Md. ; Roy, Nirmalya
Author_Institution :
Inf. Syst., Univ. of Maryland Baltimore County, Baltimore, MD, USA
fYear :
2015
fDate :
23-27 March 2015
Firstpage :
63
Lastpage :
70
Abstract :
Fine-grained monitoring of everyday appliances can provide better feedback to the consumers and motivate them to change behavior in order to reduce their energy usage. It also helps to detect abnormal power consumption events, long-term appliance malfunctions and potential safety concerns. Commercially available plug meters can be used for individual appliance monitoring but for an entire house, each such individual plug meters are expensive and tedious to setup. Alternative methods relying on Non-Intrusive Load Monitoring techniques help disaggregate electricity consumption data and learn about the individual appliance´s power states and signatures. However fine-grained events (e.g., appliance malfunctions, abnormal power consumption, etc.) remain undetected and thus inferred contexts (such as safety hazards etc.) become invisible. In this work, we correlate an appliance´s inherent acoustic noise with its energy consumption pattern individually and in presence of multiple appliances. We initially investigate classification techniques to establish the relationship between appliance power and acoustic states for efficient energy disaggregation and abnormal events detection. While promising, this approach fails when there are multiple appliances simultaneously in `ON´ state. To further improve the accuracy of our energy disaggregation algorithm, we propose a probabilistic graphical model, based on a variation of Factorial Hidden Markov Model (FHMM) for multiple appliances energy disaggregation. We combine our probabilistic model with the appliances acoustic analytics and postulate a hybrid model for energy disaggregation. Our approach helps to improve the performance of energy disaggregation algorithms and provide critical insights on appliance longevity, abnormal power consumption, consumer behavior and their everyday lifestyle activities. We evaluate the performance of our proposed algorithms on real data traces and show that the fusion of acoustic and power sig- atures can successfully detect a number of appliances with 95% accuracy.
Keywords :
acoustic noise; consumer behaviour; domestic appliances; hidden Markov models; power consumption; FHMM; abnormal power consumption event detection; acoustic based appliance state identification; acoustic noise; appliance fine-grained monitoring; consumer behavior; electricity consumption; energy consumption pattern; energy usage reduction; factorial hidden Markov model; fine-grained energy analytic; multiple appliance energy disaggregation algorithm; nonintrusive load monitoring technique; plug meter; probabilistic graphical model; Acoustics; Energy consumption; Hidden Markov models; Home appliances; Plugs; Power demand; Sensors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pervasive Computing and Communications (PerCom), 2015 IEEE International Conference on
Conference_Location :
St. Louis, MO
Type :
conf
DOI :
10.1109/PERCOM.2015.7146510
Filename :
7146510
Link To Document :
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