Title of article :
Classification of Static Security Status Using Multi-Class Support Vector Machines
Author/Authors :
Kalyani, S. Kamaraj College of Engineering Technology - Department of Electrical and Electronics Engineering, India , Swarup, K.S. Indian Institute of Technology Madras - Department of Electrical Engineering, India
Abstract :
This paper presents a Multi-class Support Vector Machine (SVM) based Pattern Recognition (PR) approach for static security assessment in power systems. The multi-class SVM classifier design is based on the calculation of a numeric index called the static security index. The proposed multi-class SVM based pattern recognition approach is tested on IEEE 57 Bus, 118 Bus and 300 Bus benchmark systems. The simulation results of the SVM classifier are compared to a Multilayer Perceptron (MLP) network and the Method of Least Squares (MLS). The SVM classifier was found to give high classification accuracy and a smaller misclassification rate compared to the other classifier techniques.
Keywords :
Static security , Classifier , Multi , class SVM , Pattern recognition
Journal title :
The Journal of Engineering Research (TJER)
Journal title :
The Journal of Engineering Research (TJER)