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
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