Rough-granular approach for impulse fault classification of transformers using cross-wavelet transform
D Dey, B Chatterjee, S Chakravorti… - IEEE Transactions on …, 2008 - ieeexplore.ieee.org
IEEE Transactions on Dielectrics and Electrical Insulation, 2008•ieeexplore.ieee.org
A novel approach based on information granulation using Rough sets for impulse fault
identification of transformers has been proposed. It is found that the location and type of fault
within a transformer winding can be classified efficiently by the features extracted from cross-
wavelet spectra of current waveforms, obtained from impulse test. Results show that the
proposed methodology can localize the fault within 5% of the winding length with a high
degree of accuracy. The basic concepts of feature extraction using cross-wavelet transform …
identification of transformers has been proposed. It is found that the location and type of fault
within a transformer winding can be classified efficiently by the features extracted from cross-
wavelet spectra of current waveforms, obtained from impulse test. Results show that the
proposed methodology can localize the fault within 5% of the winding length with a high
degree of accuracy. The basic concepts of feature extraction using cross-wavelet transform …
A novel approach based on information granulation using Rough sets for impulse fault identification of transformers has been proposed. It is found that the location and type of fault within a transformer winding can be classified efficiently by the features extracted from cross-wavelet spectra of current waveforms, obtained from impulse test. Results show that the proposed methodology can localize the fault within 5% of the winding length with a high degree of accuracy. The basic concepts of feature extraction using cross-wavelet transform and the method of classification of those features by rough-granular method are also explained.
ieeexplore.ieee.org
以上显示的是最相近的搜索结果。 查看全部搜索结果