Estimation of polluted insulators flashover time using artificial neural networks

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作者
Farag, AS
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TM [电工技术]; TN [电子技术、通信技术];
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0808 ; 0809 ;
摘要
Artificial neural networks (ANN) algorithms have been applied successfully on very wide range of applications in power systems. In high voltage engineering, ANN have been applied efficiently and effectively for pattern recognition of partial discharges. A major field of ANN application is function estimation, because of the useful properties of ANN such as adaptivity and non-linearity are well suited to function estimation tasks. The equation describing the function is unknown since the only prerequisite is a represent-ative experimental sample of the function's behavior. In this paper. the prerequisite training data are available from experimental studies performed on models of polluted insulators under power frequency voltages representing different pollution levels ranging from light to severe pollutions. Extensive detailed studies and tests have been carried out to determine the ANN parameters to give the best attainable results and to assess the effect of the presence of inadequate data in the training set on modeling accuracy. In this paper, a new approach using ANN as function estimator is engaged to model accurately the relationship t=f(V, L. R(p)). It is found that, when training is complete, ANN is capable of estimating the flashover time very efficiently and effectively even when the inadequate data are incorporated in the training set. The present study clearly indicates the efficacy of ANN as function estimators in the insulator flashover studies.
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页码:226 / 234
页数:9
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