Title of article :
Applications of wavelets and neural networks for classification of power system dynamics events
Author/Authors :
AVDAKOVIC, Samir EPC Elektroprivreda Bosnia and Herzegovina D.D. Sarajevo - Department for Development, Bosnia and Herzegovina , NUHANOVIC, Amir University of Tuzla - Faculty of Electrical Engineering - Department of Power Systems Analysis, Bosnia and Herzegovina , KUSLJUGIC, Mirza University of Tuzla - Faculty of Electrical Engineering - Department of Power Systems Analysis, Bosnia and Herzegovina , BECIROVIC, Elvisa EPC Elektroprivreda Bosnia and Herzegovina D.D. Sarajevo - Department for Development, Bosnia and Herzegovina
Abstract :
This paper investigates the possibility of classifying power system dynamics events using discrete wavelet transform (DWT) and a neural network (NN) by analyzing one variable at a single network bus. Following a disturbance in the power system, it will propagate through the system in the form of low-frequency electromechanical oscillations (LFEOs) in a frequency range of up to 5 Hz. DWT allows the identification of components of the LFEO, their frequencies, and magnitudes. After determining the energy components share of the analyzed signal using DWT and Parseval s theorem, the input data for the classification process using a NN are obtained. A total of 5 classes of disturbances, 3 different wavelet functions, and 2 different variables are tested. Simulation results show that the proposed approach can classify different power disturbance types efficiently, regardless of the choice of variable or wavelet function.
Keywords :
Power system dynamics , low , frequency electromechanical oscillations , wavelet transform , neural network , disturbance
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences