Title of article
Differential Protection of ISPST Using Chebyshev Neural Network
Author/Authors
Bhasker ، S. K. Department of Electrical Engineering - Faculty of Engineering Technology - University of Lucknow , Tripathy ، M. Department of Electrical Engineering - Indian Institute of Technology , Agrawal ، A. Department of Electronics and Communication Engineering - BML Munjal University , Mishra ، A. Department of Electronics and Communication Engineering - BML Munjal University
From page
123
To page
129
Abstract
An Indirect Symmetrical Phase Shift Transformer (ISPST) represents both electrically connected and magnetically coupled circuits, which makes it unique compared to a power transformer. Effective differentiation between transformer inrush current and internal fault current is necessary to avoid incorrect differential relay tripping. This research proposes a system that uses a Chebyshev Neural Network (ChNN) as a core classifier to distinguish such internal faults. For simulations, we used PSCAD/EMTDC software. Internal faults and inrush have been simulated in various ways using various ISPST parameters. A large, simulated dataset is used, and performance is recorded against different sized ISPSTs. We observed an overall accuracy greater than 99%. The ChNN classifier generated exceptionally favorable results even in case of noisy signal, CT saturation, and different ISPST parameters.
Keywords
Energization , Internal Fault , Chebyshev Neural Network (ChNN) , ISPST , PSCAD , EMTDC
Journal title
Journal of Operation and Automation in Power Engineering
Journal title
Journal of Operation and Automation in Power Engineering
Record number
2722942
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