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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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 |
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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. |
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Marsadek, M. Mohamed, A. Nopiah, Z.M. |
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Marsadek, M. Mohamed, A. Nopiah, Z.M. Assessment of the risk of voltage collapse in a power system using intelligent techniques |
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Marsadek, M. Mohamed, A. Nopiah, Z.M. |
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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 |
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assessment of the risk of voltage collapse in a power system using intelligent techniques |
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2017 |
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1644493795600891904 |
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