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Main Authors: Dedovic, Maja Muftic, Avdakovic, Samir, Mujezinovic, Adnan, Dautbasic, Nedis
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.18308
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author Dedovic, Maja Muftic
Avdakovic, Samir
Mujezinovic, Adnan
Dautbasic, Nedis
author_facet Dedovic, Maja Muftic
Avdakovic, Samir
Mujezinovic, Adnan
Dautbasic, Nedis
contents This paper introduces and compares the various techniques for identification and analysis of low frequency oscillations in a power system. Inter-area electromechanical oscillations are the focus of this paper. After multiresolution decomposition of characteristic signals, physical characteristics of system oscillations in signal components are identified and presented using the Fourier transform, Prony method, Matrix Pencil Analysis Method, S-transform, Global Wavelet Spectrum and Hilbert Huang transform (Hilbert Marginal Spectrum) in time-frequency domain representation. The analyses were performed on real frequency signals obtained from FNET GridEye system during the earthquake that triggered the shutdown of the North Anna Nuclear Generating Station in the east coast of the United States. In addition, according to the obtained results the proposed methods have proven to be reliable for identification of the model parameters of low-frequency oscillation in power systems. The relevant analyses are carried out in MATLAB coding environment.
format Preprint
id arxiv_https___arxiv_org_abs_2403_18308
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Comparison of different methods for identification of dominant oscillation mode
Dedovic, Maja Muftic
Avdakovic, Samir
Mujezinovic, Adnan
Dautbasic, Nedis
Computational Engineering, Finance, and Science
This paper introduces and compares the various techniques for identification and analysis of low frequency oscillations in a power system. Inter-area electromechanical oscillations are the focus of this paper. After multiresolution decomposition of characteristic signals, physical characteristics of system oscillations in signal components are identified and presented using the Fourier transform, Prony method, Matrix Pencil Analysis Method, S-transform, Global Wavelet Spectrum and Hilbert Huang transform (Hilbert Marginal Spectrum) in time-frequency domain representation. The analyses were performed on real frequency signals obtained from FNET GridEye system during the earthquake that triggered the shutdown of the North Anna Nuclear Generating Station in the east coast of the United States. In addition, according to the obtained results the proposed methods have proven to be reliable for identification of the model parameters of low-frequency oscillation in power systems. The relevant analyses are carried out in MATLAB coding environment.
title Comparison of different methods for identification of dominant oscillation mode
topic Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2403.18308