DocumentCode
73692
Title
An Empirical Investigation of V-I Trajectory Based Load Signatures for Non-Intrusive Load Monitoring
Author
Hassan, Thomas ; Javed, Fahad ; Arshad, Naveed
Author_Institution
Dept. of Comput. Sci., Lahore Univ. of Manage. Sci., Lahore, Pakistan
Volume
5
Issue
2
fYear
2014
fDate
Mar-14
Firstpage
870
Lastpage
878
Abstract
Choice of load signature or feature space is one of the most fundamental design choices for non-intrusive load monitoring or energy disaggregation problem. Electrical power quantities, harmonic load characteristics, canonical transient and steady-state waveforms are some of the typical choices of load signature or load signature basis for current research addressing appliance classification and prediction. This paper expands and evaluates appliance load signatures based on V-I trajectory-the mutual locus of instantaneous voltage and current waveforms-for precision and robustness of prediction in classification algorithms used to disaggregate residential overall energy use and predict constituent appliance profiles. We also demonstrate the use of variants of differential evolution as a novel strategy for selection of optimal load models in context of energy disaggregation. A publicly available benchmark dataset REDD is employed for evaluation purposes. Our experimental evaluations indicate that these load signatures, in conjunction with a number of popular classification algorithms, offer better or generally comparable overall precision of prediction, robustness and reliability against dynamic, noisy and highly similar load signatures with reference to electrical power quantities and harmonic content. Herein, wave-shape features are found to be an effective new basis of classification and prediction for semi-automated energy disaggregation and monitoring.
Keywords
domestic appliances; power system harmonics; power system measurement; V-I trajectory based load signatures; appliance classification; electrical power quantities; energy disaggregation; energy monitoring; harmonic load characteristics; nonintrusive load monitoring; Home appliances; Prediction algorithms; Sociology; Statistics; Switches; Training; Trajectory; Feedforward neural networks; load monitoring; load signature; optimization; smart grids; supervised learning; support vector machines;
fLanguage
English
Journal_Title
Smart Grid, IEEE Transactions on
Publisher
ieee
ISSN
1949-3053
Type
jour
DOI
10.1109/TSG.2013.2271282
Filename
6575197
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