DocumentCode :
841292
Title :
Neural Network Based Method for Predicting Nonlinear Load Harmonics
Author :
Mazumdar, Joy ; Harley, Ronald G. ; Lambert, Frank C. ; Venayagamoorthy, Ganesh K.
Author_Institution :
Power Conversion Div., Siemens Energy & Autom., Alpharetta, GA
Volume :
22
Issue :
3
fYear :
2007
fDate :
5/1/2007 12:00:00 AM
Firstpage :
1036
Lastpage :
1045
Abstract :
Generation of harmonics and the existence of waveform pollution in power system networks are important problems facing the power utilities. The increased use of nonlinear devices in industry has resulted in direct increase of harmonic distortion in the industrial power system in recent years. Interaction between loads and sources in a power distribution network is a complex process and often not possible to explain analytically without making assumptions. The determination of true harmonic current distortion of a load is further complicated by the fact that the supply voltage waveform at the point of common coupling (PCC) is rarely a pure sinusoid. This paper proposes a neural network based method to find a way of distinguishing between load contributed harmonics and supply harmonics, without disconnecting any load from the network. A neural network structure with memory is used to model the admittance of the nonlinear load. Once training is achieved, the neural network predicts the true harmonic current of the load if it could be supplied with a clean sine wave. The main advantage of this method is that only waveforms of voltages and currents have to be measured and is applicable for single phase as well as multiphase loads. This could be integrated into a commercially available power quality instrument or be fabricated as a standalone instrument that could be installed in substations of large customer loads, or used as a hand-held clip on instrument
Keywords :
distribution networks; electricity supply industry; harmonic distortion; industrial power systems; neural nets; power engineering computing; power supply quality; power system harmonics; harmonic current distortion; harmonic distortion; industrial power system; neural network; nonlinear load admittance; nonlinear load harmonics; point of common coupling; power distribution network; power quality; power system networks; power utilities; substations; supply harmonics; Environmentally friendly manufacturing techniques; Harmonic distortion; Industrial pollution; Industrial power systems; Instruments; Neural networks; Power generation; Power system harmonics; Power systems; Voltage; Neural network; point of common coupling (PCC);
fLanguage :
English
Journal_Title :
Power Electronics, IEEE Transactions on
Publisher :
ieee
ISSN :
0885-8993
Type :
jour
DOI :
10.1109/TPEL.2007.897109
Filename :
4182472
Link To Document :
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