Assessment of the risk of voltage collapse in a power system using intelligent techniques

This paper describes the implementation of a fast and easy-to-use, intelligence-based algorithm to assess the risk of voltage collapse when risk is defined as the product of the event likelihood and a severity function. In the event likelihood, the effect of weather is taken into account; the failur...

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Main Authors: Marsadek, M., Mohamed, A., Nopiah, Z.M.
Format: Article
Language:en_US
Published: 2017
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spelling my.uniten.dspace-58742018-01-17T04:13:26Z Assessment of the risk of voltage collapse in a power system using intelligent techniques Marsadek, M. Mohamed, A. Nopiah, Z.M. This paper describes the implementation of a fast and easy-to-use, intelligence-based algorithm to assess the risk of voltage collapse when risk is defined as the product of the event likelihood and a severity function. In the event likelihood, the effect of weather is taken into account; the failure rate of each transmission line under different weather conditions is calculated using real historical outage data. A new severity function model that utilises the voltage collapse prediction index is proposed in this paper. Two intelligent techniques, i.e., support vector machines and a generalised regression neural network are studied, and their performances are evaluated using mean absolute and mean square error. The proposed methodology has been applied in a real power system network. Simulation results show that a generalized regression neural network provides the lowest mean absolute and mean square error. 2017-12-08T07:32:25Z 2017-12-08T07:32:25Z 2011 Article 1167-1179 en_US Assessment of the risk of voltage collapse in a power system using intelligent techniques. Australian Journal of Basic and Applied Sciences
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language en_US
description This paper describes the implementation of a fast and easy-to-use, intelligence-based algorithm to assess the risk of voltage collapse when risk is defined as the product of the event likelihood and a severity function. In the event likelihood, the effect of weather is taken into account; the failure rate of each transmission line under different weather conditions is calculated using real historical outage data. A new severity function model that utilises the voltage collapse prediction index is proposed in this paper. Two intelligent techniques, i.e., support vector machines and a generalised regression neural network are studied, and their performances are evaluated using mean absolute and mean square error. The proposed methodology has been applied in a real power system network. Simulation results show that a generalized regression neural network provides the lowest mean absolute and mean square error.
format Article
author Marsadek, M.
Mohamed, A.
Nopiah, Z.M.
spellingShingle Marsadek, M.
Mohamed, A.
Nopiah, Z.M.
Assessment of the risk of voltage collapse in a power system using intelligent techniques
author_facet Marsadek, M.
Mohamed, A.
Nopiah, Z.M.
author_sort Marsadek, M.
title Assessment of the risk of voltage collapse in a power system using intelligent techniques
title_short Assessment of the risk of voltage collapse in a power system using intelligent techniques
title_full Assessment of the risk of voltage collapse in a power system using intelligent techniques
title_fullStr Assessment of the risk of voltage collapse in a power system using intelligent techniques
title_full_unstemmed Assessment of the risk of voltage collapse in a power system using intelligent techniques
title_sort assessment of the risk of voltage collapse in a power system using intelligent techniques
publishDate 2017
_version_ 1644493795600891904
score 13.214268