Title :
Transfomer fault diagnosis based on rough sets theory and artificial neural networks
Author :
Yu, XiaoDong ; Zang, Hongzhi
Author_Institution :
Shandong Inst. of Light Ind., Jinan
Abstract :
Transformer fault diagnosis based on artificial neural networks (ANN) is widely used, because ANN has essential nonlinear character, parallel processing ability and the ability of self organize and self learning. But there exist problems if we use traditional ANN method alone to diagnose transformer fault, the large input vector dimension and complex training database will cause the computation complexity and the space increase greatly, lead to long training time, slow convergence and low judgement accuracy. In this paper, a hybrid fault diagnosis method combining rough set (RS) theory and ANN (RS-ANN) is presented. Taking advantage of the strong ability of RS theory in processing large data and eliminating redundant information, this method can remove irrelevant factors from the original data and reduce the amount of training data which helps to overcome ANN´s defect when process large database. A number of simulation results show that RS-ANN simplifies the networks´ structure, reduces the networks´ training epochs, improves the judgement accuracy.
Keywords :
artificial intelligence; computational complexity; electrical faults; fault diagnosis; neural nets; power engineering computing; rough set theory; transformers; artificial neural networks; computation complexity; rough set theory; transformer fault diagnosis; Artificial neural networks; Cables; Costs; Crystalline materials; Current transformers; Fault diagnosis; Frequency response; Partial discharges; Permeability; Rough sets; Accuracy; Artificial Neural Networks; BP algorithm; Decision Table; Fault Diagnosis; MATLAB; Reduction; Rough Set; Simulation; Transformer;
Conference_Titel :
Condition Monitoring and Diagnosis, 2008. CMD 2008. International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4244-1621-9
Electronic_ISBN :
978-1-4244-1622-6
DOI :
10.1109/CMD.2008.4580517