SUPPORT VECTOR MACHINE BASED FAULT CLASSIFICATION AND LOCATION OF A LONG TRANSMISSION LINE

Support vector machine based fault classification and location of a long transmission line

Support vector machine based fault classification and location of a long transmission line

Blog Article

This paper investigates support vector machine 107 based fault type and distance estimation scheme in a long transmission line.The planned technique uses post fault single cycle current waveform and pre-processing of the samples is done by wavelet packet transform.Energy and entropy are obtained from the decomposed coefficients and feature matrix is prepared.Then the redundant features from the matrix are taken out by the forward feature selection method and normalized.Test and train data are developed by taking into consideration variables of a simulation situation like fault type, resistance path, inception angle, and distance.

In this paper 10 different types of short circuit fault are analyzed.The test data are examined by support vector machine whose parameters are optimized by particle swarm optimization method.The anticipated method is checked on a 400 kV, 300 km long transmission line with voltage source at both the ends.Two cases Me Easter Top were examined with the proposed method.The first one is fault very near to both the source end (front and rear) and the second one is support vector machine with and without optimized parameter.

Simulation result indicates that the anticipated method for fault classification gives high accuracy (99.21%) and least fault distance estimation error (0.29%.

Report this page