FAST ESTIMATION OF VOLTAGE AND CURRENT PHASORS IN POWER NETWORKS USING AN ADAPTIVE NEURAL-NETWORK

Citation
Pk. Dash et al., FAST ESTIMATION OF VOLTAGE AND CURRENT PHASORS IN POWER NETWORKS USING AN ADAPTIVE NEURAL-NETWORK, IEEE transactions on power systems, 12(4), 1997, pp. 1494-1499
Citations number
8
Categorie Soggetti
Engineering, Eletrical & Electronic
ISSN journal
08858950
Volume
12
Issue
4
Year of publication
1997
Pages
1494 - 1499
Database
ISI
SICI code
0885-8950(1997)12:4<1494:FEOVAC>2.0.ZU;2-X
Abstract
A new algorithm for the estimation of parameters of voltage or current waveform of power networks contaminated by noise is proposed. The pro blem of estimation-is formulated by using an adaptive neural network c onsisting of linear adaptive neurons called adaline. The learning para meters of the adaline are adjusted to force the error between the actu al and desired outputs to satisfy a stable difference error equation, rather than to minimize an error function. Illustrative computer simul ation results confirm the validity and accurate performance of the pro posed method. Laboratory test results are also presented in this paper to support the effectiveness of the proposed approach in tracking the waveforms in real-time.