Title :
Power-Spectrum-Based Wavelet Transform for Nonintrusive Demand Monitoring and Load Identification
Author :
Hsueh-Hsien Chang ; Kuo-Lung Lian ; Yi-Ching Su ; Wei-Jen Lee
Author_Institution :
JinWen Univ. of Sci. & Technol., New Taipei, Taiwan
Abstract :
Though the wavelet transform coefficients (WTCs) contain plenty of information needed for turn-on/off transient signal identification of load events, adopting the WTCs directly requires longer computation time and larger memory requirements for the nonintrusive load monitoring identification process. To effectively reduce the number of WTCs representing load turn-on/off transient signals without degrading performance, a power spectrum of the WTCs in different scales calculated by Parseval´s theorem is proposed and presented in this paper. The back-propagation classification system is then used for artificial neural network construction and load identification. The high success rates of load event recognition from both experiments and simulations have proved that the proposed algorithm is applicable in multiple load operations of nonintrusive demand monitoring applications.
Keywords :
backpropagation; load (electric); power engineering computing; power system identification; power system measurement; wavelet transforms; Parseval´s theorem; WTC; artificial neural network construction; backpropagation classification system; load event recognition; load events; multiple load operations; nonintrusive load monitoring identification process; power spectrum; turn-on-off transient signal identification; wavelet transform coefficients; Artificial neural networks; Discrete wavelet transforms; Feature extraction; Monitoring; Transient analysis; Artificial neural networks (ANNs); Parseval’s Theorem; Parseval´s theorem; load identification; non-intrusive load monitoring (NILM); nonintrusive load monitoring (NILM); wavelet transform; wavelet transform (WT);
Journal_Title :
Industry Applications, IEEE Transactions on
DOI :
10.1109/TIA.2013.2283318