Abstract: In this paper a neural network based framework is developed for predicting core losses of wound core distribution transformers at the early stages of transformer construction. The proposed framework is also used to improve the grouping process of the individual cores so as to reduce the variation in core loss of assembled transformer. Several neural network structures and the respective training sets have been stored in a database, corresponding to the various magnetic materials. Selection of the most appropriate network from the database is relied on the satisfaction of customers ’ requirements and several technical and economical criteria. In case that the network performance is not satisfactory, a small adaptation of the retrie...
In designing and building of transformers, the core destruction factor is the superposition of all e...
In this paper artificial neural networks have been constructed to predict different transformers oil...
The work presented in this thesis can be utilised by electrical steel manufacturers and transformer ...
This paper presents an artificial neural network (ANN) approach to predicting and classifying distri...
A mathematical model for core losses was improved for frequency and geometrical effects using experi...
Abstract- In this paper, a novel computer based learning framework that bas been developed and appli...
Abstract—This paper presents an effective method to reduce the iron losses of wound core distributio...
The paper describes a novel neural model to estimate electrical losses in transformer during the man...
In this paper, a combined neural network and an evolutionary programming scheme is proposed to impro...
This paper presents an analysis of use of artificial neural network algorithm for prediction of powe...
Although magnetic wound cores have simple geometries, their magnetic properties vary in a complex ma...
Abstract. The selection of the winding material in power transformers is an important task, since it...
Power transformers are among the most critical of assets for electric utilities, in the financial im...
Experimental data from a sample of 42 cores made from grain oriented 0.27 mm thick 3 % SiFe electric...
The purpose of this research is the evaluation of artificial neural network models in the prediction...
In designing and building of transformers, the core destruction factor is the superposition of all e...
In this paper artificial neural networks have been constructed to predict different transformers oil...
The work presented in this thesis can be utilised by electrical steel manufacturers and transformer ...
This paper presents an artificial neural network (ANN) approach to predicting and classifying distri...
A mathematical model for core losses was improved for frequency and geometrical effects using experi...
Abstract- In this paper, a novel computer based learning framework that bas been developed and appli...
Abstract—This paper presents an effective method to reduce the iron losses of wound core distributio...
The paper describes a novel neural model to estimate electrical losses in transformer during the man...
In this paper, a combined neural network and an evolutionary programming scheme is proposed to impro...
This paper presents an analysis of use of artificial neural network algorithm for prediction of powe...
Although magnetic wound cores have simple geometries, their magnetic properties vary in a complex ma...
Abstract. The selection of the winding material in power transformers is an important task, since it...
Power transformers are among the most critical of assets for electric utilities, in the financial im...
Experimental data from a sample of 42 cores made from grain oriented 0.27 mm thick 3 % SiFe electric...
The purpose of this research is the evaluation of artificial neural network models in the prediction...
In designing and building of transformers, the core destruction factor is the superposition of all e...
In this paper artificial neural networks have been constructed to predict different transformers oil...
The work presented in this thesis can be utilised by electrical steel manufacturers and transformer ...