MOSELM approach for Voltage Stability Indicator using phasor measurement units

Voltage stability assessment is important in order to ensure a stable power system. Two algorithms were discussed in this paper which looks into estimating voltage stability based upon Thevenin Equivalent values in a system using Voltage and Current Phasors for different loading values. The first al...

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Main Authors: Abidin I.Z., Yap K.S., Saadun N., Abdullah S.K.S., Mohd Sarmin M.K.N.
Other Authors: 35606640500
Format: Conference paper
Published: 2023
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spelling my.uniten.dspace-295102023-12-28T14:30:17Z MOSELM approach for Voltage Stability Indicator using phasor measurement units Abidin I.Z. Yap K.S. Saadun N. Abdullah S.K.S. Mohd Sarmin M.K.N. 35606640500 24448864400 55612145600 56926947000 54412554100 Artificial Intelligence Kalman Filter Online Sequential Extreme Learning Machine Phasor Measurement Units Voltage Stability Algorithms Artificial intelligence Electric power system interconnection Kalman filters Knowledge acquisition Learning systems Loading Phasor measurement units Voltage control Current phasors Extreme learning machine Filter approach Loading values Online learning Online sequential extreme learning machine Thevenin equivalent Voltage stability assessment Voltage stability indicators Voltage stabilizing circuits Voltage stability assessment is important in order to ensure a stable power system. Two algorithms were discussed in this paper which looks into estimating voltage stability based upon Thevenin Equivalent values in a system using Voltage and Current Phasors for different loading values. The first algorithm uses a Kalman filter based formulation. The second method uses an Online Learning approach known as the Modified Online Sequence Extreme Learning Machine (MOSELM). Results show that the Kalman Filter approach is capable of analyzing voltage stability but it requires some user specified information for tuning. On the other hand, the MOSELM approach show that it is capable of producing the same result as the Kalman Filter approach but require less amount of user specified information. � 2012 IEEE. Final 2023-12-28T06:30:17Z 2023-12-28T06:30:17Z 2012 Conference paper 10.1109/PECon.2012.6450267 2-s2.0-84874499995 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84874499995&doi=10.1109%2fPECon.2012.6450267&partnerID=40&md5=9cc9a915e587dcc8c3f13ebf663d629b https://irepository.uniten.edu.my/handle/123456789/29510 6450267 510 514 Scopus
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/
topic Artificial Intelligence
Kalman Filter
Online Sequential Extreme Learning Machine
Phasor Measurement Units
Voltage Stability
Algorithms
Artificial intelligence
Electric power system interconnection
Kalman filters
Knowledge acquisition
Learning systems
Loading
Phasor measurement units
Voltage control
Current phasors
Extreme learning machine
Filter approach
Loading values
Online learning
Online sequential extreme learning machine
Thevenin equivalent
Voltage stability assessment
Voltage stability indicators
Voltage stabilizing circuits
spellingShingle Artificial Intelligence
Kalman Filter
Online Sequential Extreme Learning Machine
Phasor Measurement Units
Voltage Stability
Algorithms
Artificial intelligence
Electric power system interconnection
Kalman filters
Knowledge acquisition
Learning systems
Loading
Phasor measurement units
Voltage control
Current phasors
Extreme learning machine
Filter approach
Loading values
Online learning
Online sequential extreme learning machine
Thevenin equivalent
Voltage stability assessment
Voltage stability indicators
Voltage stabilizing circuits
Abidin I.Z.
Yap K.S.
Saadun N.
Abdullah S.K.S.
Mohd Sarmin M.K.N.
MOSELM approach for Voltage Stability Indicator using phasor measurement units
description Voltage stability assessment is important in order to ensure a stable power system. Two algorithms were discussed in this paper which looks into estimating voltage stability based upon Thevenin Equivalent values in a system using Voltage and Current Phasors for different loading values. The first algorithm uses a Kalman filter based formulation. The second method uses an Online Learning approach known as the Modified Online Sequence Extreme Learning Machine (MOSELM). Results show that the Kalman Filter approach is capable of analyzing voltage stability but it requires some user specified information for tuning. On the other hand, the MOSELM approach show that it is capable of producing the same result as the Kalman Filter approach but require less amount of user specified information. � 2012 IEEE.
author2 35606640500
author_facet 35606640500
Abidin I.Z.
Yap K.S.
Saadun N.
Abdullah S.K.S.
Mohd Sarmin M.K.N.
format Conference paper
author Abidin I.Z.
Yap K.S.
Saadun N.
Abdullah S.K.S.
Mohd Sarmin M.K.N.
author_sort Abidin I.Z.
title MOSELM approach for Voltage Stability Indicator using phasor measurement units
title_short MOSELM approach for Voltage Stability Indicator using phasor measurement units
title_full MOSELM approach for Voltage Stability Indicator using phasor measurement units
title_fullStr MOSELM approach for Voltage Stability Indicator using phasor measurement units
title_full_unstemmed MOSELM approach for Voltage Stability Indicator using phasor measurement units
title_sort moselm approach for voltage stability indicator using phasor measurement units
publishDate 2023
_version_ 1806425757921050624
score 13.232389