Title :
Diagnosis and identification of transformer winding faults from frequency response data by the application of ANN technique
Author :
Prameela, M. ; Murthy, G. Radhakrishna ; Nirgude, Pradeep M.
Author_Institution :
Vignan Univ., Guntur, India
Abstract :
In the present work, model transformer windings were used to obtain Sweep frequency Response Analyzer measurement data for various experimentally simulated faults. Transfer function and its corresponding parameters were computed for different types of transformer faults by subspace based identification method. An attempt was made to use these parameters for training Artificial Neural Network. The result of study on application of Artificial Neural Network algorithm for diagnosing and identifying the transformer winding faults from the Frequency Response Analysis data is presented. It was observed that, predicted fault closely follows the created fault suggesting the effectiveness of Artificial Neural Network technique for distinguishing between the normal and failed state quite satisfactorily.
Keywords :
fault diagnosis; frequency response; neural nets; power engineering computing; transfer functions; transformer windings; ANN technique; artificial neural network algorithm; fault identification; model transformer winding fault diagnosis; subspace based identification method; sweep frequency response analyzer measurement data; transfer function; Artificial neural networks; Deformable models; Displacement measurement; Transfer functions; Artificial Neural Network; Frequency Response Analysis; Subspace based system identification; Transfer Function;
Conference_Titel :
Properties and Applications of Dielectric Materials (ICPADM), 2012 IEEE 10th International Conference on the
Conference_Location :
Bangalore
Print_ISBN :
978-1-4673-2852-4
DOI :
10.1109/ICPADM.2012.6318962