Intelligent fault detection and classification for a power transmission line using power system stabilizer signals

The analysis of how power system stabilizer (PSS) able to stabilize the power system efficiently during the transmission line is an important area of research in power operation and planning. One of the essential works of power system security is to operate and handle information on fault detection...

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Main Author: Mat @ Mohamed, Usamah
Format: Thesis
Language:English
Published: 2009
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Online Access:http://eprints.utm.my/id/eprint/12058/5/UsamahMatMohamedMFKE2009.pdf
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id my-utm-ep.12058
record_format uketd_dc
institution Universiti Teknologi Malaysia
collection UTM Institutional Repository
language English
topic TK Electrical engineering
Electronics Nuclear engineering
spellingShingle TK Electrical engineering
Electronics Nuclear engineering
Mat @ Mohamed, Usamah
Intelligent fault detection and classification for a power transmission line using power system stabilizer signals
description The analysis of how power system stabilizer (PSS) able to stabilize the power system efficiently during the transmission line is an important area of research in power operation and planning. One of the essential works of power system security is to operate and handle information on fault detection effectively. In the proposed thesis, the oscillation for tow machine in “one phase fault”, “Fault with and without PSS”, “Fault with and without SVC”, are recorded at various fault locations. Multi Resolution Analysis (MRA) Wave Transform is used for fault detection. The MRA analyses the signal, where the statistical features for different locations and condition of the fault are extracted efficiently. The features are fed to Probabilistic Neural Network (PNN) to act as a fault classifier. The features are set as input vectors and the locations are set as the target. Graphic User Interface is used to monitor the whole system. When the fault is classified using PNN, its location can be used to generate control signals for PSS, which will be used to improve the stability in the power system. Therefore, this work shows the new techniques in detecting, classifying, and locating faults in a transmission line based on PSS signals as compared to traditional methods.
format Thesis
qualification_level Master's degree
author Mat @ Mohamed, Usamah
author_facet Mat @ Mohamed, Usamah
author_sort Mat @ Mohamed, Usamah
title Intelligent fault detection and classification for a power transmission line using power system stabilizer signals
title_short Intelligent fault detection and classification for a power transmission line using power system stabilizer signals
title_full Intelligent fault detection and classification for a power transmission line using power system stabilizer signals
title_fullStr Intelligent fault detection and classification for a power transmission line using power system stabilizer signals
title_full_unstemmed Intelligent fault detection and classification for a power transmission line using power system stabilizer signals
title_sort intelligent fault detection and classification for a power transmission line using power system stabilizer signals
granting_institution Universiti Teknologi Malaysia, Faculty of Electrical Engineering
granting_department Faculty of Electrical Engineering
publishDate 2009
url http://eprints.utm.my/id/eprint/12058/5/UsamahMatMohamedMFKE2009.pdf
_version_ 1747814890772365312
spelling my-utm-ep.120582017-09-17T06:59:34Z Intelligent fault detection and classification for a power transmission line using power system stabilizer signals 2009-11 Mat @ Mohamed, Usamah TK Electrical engineering. Electronics Nuclear engineering The analysis of how power system stabilizer (PSS) able to stabilize the power system efficiently during the transmission line is an important area of research in power operation and planning. One of the essential works of power system security is to operate and handle information on fault detection effectively. In the proposed thesis, the oscillation for tow machine in “one phase fault”, “Fault with and without PSS”, “Fault with and without SVC”, are recorded at various fault locations. Multi Resolution Analysis (MRA) Wave Transform is used for fault detection. The MRA analyses the signal, where the statistical features for different locations and condition of the fault are extracted efficiently. The features are fed to Probabilistic Neural Network (PNN) to act as a fault classifier. The features are set as input vectors and the locations are set as the target. Graphic User Interface is used to monitor the whole system. When the fault is classified using PNN, its location can be used to generate control signals for PSS, which will be used to improve the stability in the power system. Therefore, this work shows the new techniques in detecting, classifying, and locating faults in a transmission line based on PSS signals as compared to traditional methods. 2009-11 Thesis http://eprints.utm.my/id/eprint/12058/ http://eprints.utm.my/id/eprint/12058/5/UsamahMatMohamedMFKE2009.pdf application/pdf en public masters Universiti Teknologi Malaysia, Faculty of Electrical Engineering Faculty of Electrical Engineering 1. 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A M Hemeida, G El-Saady, “Damping Power Systems Oscillations Using FACTS Combinations”, IEEE pp 732-735, 2004. 19. Z Jiang,“Design of a nonlinear power system stabilizer using synergetic control theory”, ELSEVIER, Electric Power Systems, November 2008 20. D Jovcic, G N Pillai "Analytical Modelling of TCSC Dynamics" IEEE® Transactions on Power Delivery, vol 20, Issue 2, pp. 1097-1104, April 2005. 21. IEEE recommended practice for excitation system models for power system stability studies: IEEE St. 421.5-2002(Section 9).