DocumentCode
3220280
Title
Neural network modeling of distribution transformers with internal short circuit winding faults
Author
Wang, H. ; Butler, K.L.
Author_Institution
Power Electron. Lab., Texas A&M Univ., College Station, TX, USA
fYear
2001
fDate
2001
Firstpage
122
Lastpage
127
Abstract
To detect and diagnose a transformer internal fault an efficient transformer model is required to characterize the faults for further research. This paper discusses the application of neural network (NN) techniques in the modeling of a distribution transformer with internal short-circuit winding faults. A transformer model can be viewed as a functional approximator constructing an input-output mapping between some specific variables and the terminal behaviors of the transformer. The complex approximating task was implemented using six small simple neural networks. Each small neural network model takes fault specification and energized voltage as the inputs and the output voltage or terminal currents as the outputs. Two kinds of neural networks, back-propagation feedforward network (BPFN) and radial basis function network (RBFN), were investigated to model the faults in distribution transformers. The NN models were trained offline using training sets generated by finite element analysis (FEA) models and field experiments. The FEA models were implemented using a commercial finite element analysis software package. The comparison between some simulation cases and corresponding experimental results shows that the well-trained, neural networks can accurately simulate the terminal behaviors of distribution transformers with internal short circuit faults
Keywords
backpropagation; finite element analysis; learning (artificial intelligence); power engineering computing; power transformers; radial basis function networks; short-circuit currents; transformer windings; back-propagation feedforward network; distribution transformer modeling; energized voltage; fault specification; finite element analysis software package; functional approximator; input-output mapping; internal short circuit faults; internal short circuit winding faults; radial basis function network; small neural network model; terminal behaviors; training sets; Automation; Circuit faults; Circuit simulation; Condition monitoring; Electrical fault detection; Finite element methods; Neural networks; Power system faults; Power system modeling; Transformers;
fLanguage
English
Publisher
ieee
Conference_Titel
Power Industry Computer Applications, 2001. PICA 2001. Innovative Computing for Power - Electric Energy Meets the Market. 22nd IEEE Power Engineering Society International Conference on
Conference_Location
Sydney, NSW
Print_ISBN
0-7803-6681-6
Type
conf
DOI
10.1109/PICA.2001.932333
Filename
932333
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