Evolving neural nets for fault diagnosis of power transformers

This paper proposes evolving neural nets (ENNs) for fault diagnosis of power transformers. Based on the proposed evolutionary algorithm, the ENNs automatically tune the network parameters (connection weights and bias terms) of the neural nets to achieve the best model. The ENNs can identify complicated relationships among dissolved gas contents in transformer oil and corresponding fault types, using the global search capabilities of the evolutionary algorithm and the highly nonlinear mapping nature of the neural nets. The proposed ENNs have been tested on the Taipower Company diagnostic records and compared with the fuzzy diagnosis system, artificial neural networks, and the conventional method. The test results confirm that the proposed ENNs are much more diagnostically accurate and require less learning time than the existing approaches.

[1]  Z. Zhou,et al.  Fault diagnosis of power transformers: application of fuzzy set theory, expert systems and artificial neural networks , 1997 .

[2]  J. J. Kelly Transformer Fault Diagnosis by Dissolved-Gas Analysis , 1980, IEEE Transactions on Industry Applications.

[3]  David B. Fogel,et al.  System Identification Through Simulated Evolution: A Machine Learning Approach to Modeling , 1991 .

[4]  David B. Fogel,et al.  An introduction to simulated evolutionary optimization , 1994, IEEE Trans. Neural Networks.

[5]  R. Rogers IEEE and IEC Codes to Interpret Incipient Faults in Transformers, Using Gas in Oil Analysis , 1978, IEEE Transactions on Electrical Insulation.

[6]  P. J. Griffin,et al.  An Artificial Neural Network Approach to Transformer Fault Diagnosis , 1996, IEEE Power Engineering Review.

[7]  M. Duval,et al.  Dissolved gas analysis: It can save your transformer , 1989, IEEE Electrical Insulation Magazine.

[8]  H. H. Wagner,et al.  Detection of Incipient Faults in Transformers by Gas Analysis , 1961, Transactions of the American Institute of Electrical Engineers Part III Power Apparatus and Systems.

[9]  Chin E. Lin,et al.  An expert system for transformer fault diagnosis using dissolved gas analysis , 1993 .

[10]  David M. Skapura,et al.  Neural networks - algorithms, applications, and programming techniques , 1991, Computation and neural systems series.

[11]  P. J. Griffin,et al.  A combined ANN and expert system tool for transformer fault diagnosis , 1998 .

[12]  Sholom M. Weiss,et al.  Computer Systems That Learn , 1990 .

[13]  Hong-Tzer Yang,et al.  Developing a new transformer fault diagnosis system through evolutionary fuzzy logic , 1997 .

[14]  Hong-Tzer Yang,et al.  Adaptive fuzzy diagnosis system for dissolved gas analysis of power transformers , 1999 .