Prediction of the Electric Field Emissions around the High-voltage Power Lines using Neural Network Algorithms

In this study, Artificial Neural Network (ANN) Algorithms are used to estimate the electric field around the power transmission lines as an alternative approach. Firstly, electric field levels around the high voltage power transmission lines are measured, and then analytically calculated. Moreover, the field levels around these power lines have been predicted by using multilayer perceptron artificial neural network, radial basis function, and generalized regression neural network models. Electric field levels occurrence around the power transmission lines have been predicted with ANN models with high accuracy.

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