Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network

Electrical power system lines sometimes pass along the coastal regions and transverse through the industrial areas of the Peninsular Malaysia. The phenomenon of salt blown from the sea to the land at the coastal area was causing salt deposition to the transformer bushing which contaminating the bush...

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Main Authors: Dahlan N.Y., Kasuan N., Ahmad A.S.
Other Authors: 24483200900
Format: Conference paper
Published: 2023
Subjects:
ANN
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Institution: Universiti Tenaga Nasional
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spelling my.uniten.dspace-306432023-12-29T15:50:45Z Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network Dahlan N.Y. Kasuan N. Ahmad A.S. 24483200900 35423888200 7202040740 ANN HMLP Insulators Leakage current MRPE Regression analysis Bushings Coastal zones Industrial electronics Leakage currents Metal analysis Neural networks Regression analysis Statistics ANN Coastal area Coastal regions Electrical power system High voltage insulators HMLP Hybrid multilayered perceptron network Industrial area Insulator flashover Malaysia Meteorological effects Meteorological parameters Power station Real measured data Recursive prediction Salt deposition Suspension types Transformer bushings Learning algorithms Electrical power system lines sometimes pass along the coastal regions and transverse through the industrial areas of the Peninsular Malaysia. The phenomenon of salt blown from the sea to the land at the coastal area was causing salt deposition to the transformer bushing which contaminating the bushing surfaces and produced leakage current. Hence, it triggering to insulator flashover and finally the hot power arc will damage the bushing. This paper estimates leakage current level by modeling it as a function of various meteorological parameters using Hybrid Multilayered Perceptron Networks (HMLP) with Modified Recursive Prediction Error (MRPE) learning algorithms. The results are also compared with the regression analysis done previously. Meteorological parameters and leakage current data are based on the real measured data collected at YTL Paka Power Station in Terengganu. � 2009 IEEE. Final 2023-12-29T07:50:45Z 2023-12-29T07:50:45Z 2009 Conference paper 10.1109/ISIEA.2009.5356498 2-s2.0-76449086772 https://www.scopus.com/inward/record.uri?eid=2-s2.0-76449086772&doi=10.1109%2fISIEA.2009.5356498&partnerID=40&md5=af7b0c4312ef0afffb4b3990d7ea6d47 https://irepository.uniten.edu.my/handle/123456789/30643 1 5356498 35 40 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 ANN
HMLP
Insulators
Leakage current
MRPE
Regression analysis
Bushings
Coastal zones
Industrial electronics
Leakage currents
Metal analysis
Neural networks
Regression analysis
Statistics
ANN
Coastal area
Coastal regions
Electrical power system
High voltage insulators
HMLP
Hybrid multilayered perceptron network
Industrial area
Insulator flashover
Malaysia
Meteorological effects
Meteorological parameters
Power station
Real measured data
Recursive prediction
Salt deposition
Suspension types
Transformer bushings
Learning algorithms
spellingShingle ANN
HMLP
Insulators
Leakage current
MRPE
Regression analysis
Bushings
Coastal zones
Industrial electronics
Leakage currents
Metal analysis
Neural networks
Regression analysis
Statistics
ANN
Coastal area
Coastal regions
Electrical power system
High voltage insulators
HMLP
Hybrid multilayered perceptron network
Industrial area
Insulator flashover
Malaysia
Meteorological effects
Meteorological parameters
Power station
Real measured data
Recursive prediction
Salt deposition
Suspension types
Transformer bushings
Learning algorithms
Dahlan N.Y.
Kasuan N.
Ahmad A.S.
Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network
description Electrical power system lines sometimes pass along the coastal regions and transverse through the industrial areas of the Peninsular Malaysia. The phenomenon of salt blown from the sea to the land at the coastal area was causing salt deposition to the transformer bushing which contaminating the bushing surfaces and produced leakage current. Hence, it triggering to insulator flashover and finally the hot power arc will damage the bushing. This paper estimates leakage current level by modeling it as a function of various meteorological parameters using Hybrid Multilayered Perceptron Networks (HMLP) with Modified Recursive Prediction Error (MRPE) learning algorithms. The results are also compared with the regression analysis done previously. Meteorological parameters and leakage current data are based on the real measured data collected at YTL Paka Power Station in Terengganu. � 2009 IEEE.
author2 24483200900
author_facet 24483200900
Dahlan N.Y.
Kasuan N.
Ahmad A.S.
format Conference paper
author Dahlan N.Y.
Kasuan N.
Ahmad A.S.
author_sort Dahlan N.Y.
title Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network
title_short Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network
title_full Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network
title_fullStr Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network
title_full_unstemmed Modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using HMLP neural network
title_sort modelling of various meteorological effects on leakage current level for suspension type of high voltage insulators using hmlp neural network
publishDate 2023
_version_ 1806428452572626944