Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids

The mission of the power system operator has become more complicated than before due to increasing load demand, which causes power systems to operate near their security limits. The deregulation of electricity markets, which requires independent system operation driven by economic considerations, is...

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Main Authors: Al-Masri, A.N., Ab Kadir, M.Z.A., Al-Ogaili, A.S., Hoon, Y.
Format: Article
Language:English
Published: 2020
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spelling my.uniten.dspace-133432020-07-03T04:13:27Z Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids Al-Masri, A.N. Ab Kadir, M.Z.A. Al-Ogaili, A.S. Hoon, Y. The mission of the power system operator has become more complicated than before due to increasing load demand, which causes power systems to operate near their security limits. The deregulation of electricity markets, which requires independent system operation driven by economic considerations, is still an essential requirement of modern power systems. This study presents an enhanced model of developed adaptive artificial neural network (AANN) technique for security enhancement of Malaysian power grids, inclusive of a remedial action (generation redispatch/load shedding) at any scale of system operation. Automatic data knowledge generation systems for AANN inputs and data selection and extraction methods are developed. Results show that the proposed AANN can provide the required amount of generation redispatch and load shedding accurately and promptly for computing large sample data. © 2013 IEEE. 2020-02-03T03:31:57Z 2020-02-03T03:31:57Z 2019 Article 10.1109/ACCESS.2019.2957884 en
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 English
description The mission of the power system operator has become more complicated than before due to increasing load demand, which causes power systems to operate near their security limits. The deregulation of electricity markets, which requires independent system operation driven by economic considerations, is still an essential requirement of modern power systems. This study presents an enhanced model of developed adaptive artificial neural network (AANN) technique for security enhancement of Malaysian power grids, inclusive of a remedial action (generation redispatch/load shedding) at any scale of system operation. Automatic data knowledge generation systems for AANN inputs and data selection and extraction methods are developed. Results show that the proposed AANN can provide the required amount of generation redispatch and load shedding accurately and promptly for computing large sample data. © 2013 IEEE.
format Article
author Al-Masri, A.N.
Ab Kadir, M.Z.A.
Al-Ogaili, A.S.
Hoon, Y.
spellingShingle Al-Masri, A.N.
Ab Kadir, M.Z.A.
Al-Ogaili, A.S.
Hoon, Y.
Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids
author_facet Al-Masri, A.N.
Ab Kadir, M.Z.A.
Al-Ogaili, A.S.
Hoon, Y.
author_sort Al-Masri, A.N.
title Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids
title_short Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids
title_full Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids
title_fullStr Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids
title_full_unstemmed Development of Adaptive Artificial Neural Network Security Assessment Schema for Malaysian Power Grids
title_sort development of adaptive artificial neural network security assessment schema for malaysian power grids
publishDate 2020
_version_ 1672614223539077120
score 13.160551