The transformer fault diagnosis combing KPCA with PNN

The probabilistic neural network (PNN) can detect the complex relationships and be used to develop its basis for the interpretation of dissolved gas-in-oil data that can identify the fault types. An efficient algorithm known as the kernel principle component analysis (KPCA) is applied to increase features in order to get higher detection accuracy. KPCA reflects the nonlinear or high order features that permit to represent and classify the varying states. More features can be obtained by the nonlinear transformation of KPCA, which can realize the biggest between-class margin of the classifiers. In this paper, we apply the method of combining KPCA with PNN in transformer fault diagnosis. The method has more superior performance than traditional PNN alone method. The property of the nonlinear extension of original data of KPCA can obtain the higher diagnosis accuracy, which can achieve better classification and diagnosis.

[1]  Paul Honeine,et al.  Online Kernel Principal Component Analysis: A Reduced-Order Model , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[2]  Haixia Xu,et al.  Adaptive kernel principal component analysis , 2010, Signal Process..

[3]  Athula D. Rajapakse,et al.  Recognition of fault transients using a probabilistic neural-network classifier , 2011 .

[4]  Venizelos Efthymiou,et al.  Feature extraction of partial discharge signals using the wavelet packet transform and classification with a probabilistic neural network , 2010 .

[5]  Li Song,et al.  Fault Diagnosis of Transformer Based on Probabilistic Neural Network , 2011, 2011 Fourth International Conference on Intelligent Computation Technology and Automation.

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

[7]  A. P. S. Braga,et al.  Application of an artificial neural network in the use of physicochemical properties as a low cost proxy of power transformers DGA data , 2012, IEEE Transactions on Dielectrics and Electrical Insulation.

[8]  P. Purkait,et al.  Time and frequency domain analyses based expert system for impulse fault diagnosis in transformers , 2002 .

[9]  Chao-Ming Huang,et al.  A Review of Dissolved Gas Analysis in Power Transformers , 2012 .

[10]  L. L. Lai,et al.  A fuzzy dissolved gas analysis method for the diagnosis of multiple incipient faults in a transformer , 2000 .

[11]  G. Cherry,et al.  Introducing a Unified PCA Algorithm for Model Size Reduction , 2010, IEEE Transactions on Semiconductor Manufacturing.

[12]  J. Rolim,et al.  A hybrid tool for detection of incipient faults in transformers based on the dissolved gas analysis of insulating oil , 2006, 2006 IEEE Power Engineering Society General Meeting.

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