Artificial Neural Network Based Method to Mitigate Temporary Over-voltages

  1. University of Kashan
  2. Unknown

Published in Issue 2024-02-25

How to Cite

Sadeghkhani, I., Ketabi, A., & Feuillet, R. (2024). Artificial Neural Network Based Method to Mitigate Temporary Over-voltages. Majlesi Journal of Electrical Engineering, 5(3). https://oiccpress.com/mjee/article/view/5176

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Abstract

Uncontrolled energization of large power transformers may result in magnetizing inrush current of high amplitude and switching over-voltages. The most effective method for the limitation of the switching over-voltages is controlled switching since the magnitudes of the produced transients are strongly dependent on the closing instants of the switch.â We introduce a harmonic index that itâs minimum value is corresponding to the best case switching time.â Also, this paper âpresents an Artificial Neural Network (ANN)-based approach to âestimate the optimum switching instants for real time applications. In the proposed ANN, LevenbergâMarquardt âsecond order method is used to train the multilayer perceptron. ANN training is performed based on equivalent circuit parameters of the network. Thus, trained ANN is applicable to every studied system. To verify the effectiveness of the proposed index and accuracy of the ANN-based approach, two case studies are presented and demonstrated.

Keywords

  • Artificial Neural Networks,
  • Equivalent circuit,
  • harmonic index,
  • Power system restoration,
  • temporary overvoltages. inrush currents