The collected data was analyzed with MATLAB
program using the short-time Fourier transform and power spectral density
estimation methods to find the dominant harmonics of the power system. After
determination of the operational region in terms of the harmonic levels under
the full-load condition, the power spectral density algorithm was used for
determining the stationary intervals of the power system data. Identified
harmonic frequencies were used to train the artificial neural network
algorithm, which was then tested for harmonic estimation at different load
conditions. Hence, the neural network topology was used as a artificial
follower. Results demonstrate that harmonic state estimation of a power system
can be achieved by an error variation at the output of the auto-associative
neural network.
Website: http://www.arjonline.org/engineering/american-research-journal-of-electrical-engineering/
Website: http://www.arjonline.org/engineering/american-research-journal-of-electrical-engineering/
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