In this paper artificial neural networks have been constructed to predict different transformers oil parameters. The prediction is performed through modeling the relationship between the insulation resistance measured between distribution transformers high voltage winding, low voltage winding and the ground and the breakdown strength, interfacial tension acidity and the water content of the transformers oil. The process of predicting these oil parameters statuses is carried out using various configurations of neural networks. First, a multilayer feed forward neural network with a back-propagation learning algorithm was implemented. Subsequently, a cascade of these neural networks was deemed to be more promising, and four variations of a thr...
The aim of this research is to use artificial neural networks computing technology for estimating th...
An artificial neural networks (ANN) system was developed for distribution transformer's failure diag...
Power transformers are among the most critical of assets for electric utilities, in the financial im...
In this paper artificial neural networks have been constructed to predict different transformers oil...
Abstract- In this paper different configurations of artificial neural networks are applied to predic...
Abstract: In this paper, several simple Multilayer Feed-forward network structures for transformer t...
Transformers are one of the most critical and essential components of electricity transmission and d...
In this work, the application of a feed-forward artificial neural network (FFANN) in predicting the ...
Condition assessment for critical infrastructure is a key factor for the wellbeing of the modern hum...
In this letter, the ranges of furan content in oil in power transformers are predicted using measure...
Expensive and widely used power and distribution transformers need to be monitored to ensure the rel...
Insulation resistance (IR) or Megger test has been commonly performed in both preventive and correct...
Abstract: A multi-layer neural network (NN) was developed to analyse experimental boiling data obtai...
Oil-submerged transformer is one of the inherent instruments in the South African power system. Tran...
A feedforward neural network based diagnostic model of oil-impregnated paper insulation of a current...
The aim of this research is to use artificial neural networks computing technology for estimating th...
An artificial neural networks (ANN) system was developed for distribution transformer's failure diag...
Power transformers are among the most critical of assets for electric utilities, in the financial im...
In this paper artificial neural networks have been constructed to predict different transformers oil...
Abstract- In this paper different configurations of artificial neural networks are applied to predic...
Abstract: In this paper, several simple Multilayer Feed-forward network structures for transformer t...
Transformers are one of the most critical and essential components of electricity transmission and d...
In this work, the application of a feed-forward artificial neural network (FFANN) in predicting the ...
Condition assessment for critical infrastructure is a key factor for the wellbeing of the modern hum...
In this letter, the ranges of furan content in oil in power transformers are predicted using measure...
Expensive and widely used power and distribution transformers need to be monitored to ensure the rel...
Insulation resistance (IR) or Megger test has been commonly performed in both preventive and correct...
Abstract: A multi-layer neural network (NN) was developed to analyse experimental boiling data obtai...
Oil-submerged transformer is one of the inherent instruments in the South African power system. Tran...
A feedforward neural network based diagnostic model of oil-impregnated paper insulation of a current...
The aim of this research is to use artificial neural networks computing technology for estimating th...
An artificial neural networks (ANN) system was developed for distribution transformer's failure diag...
Power transformers are among the most critical of assets for electric utilities, in the financial im...