A Novel Model for Prediction of Flashover 150kV Polluted Insulator Based on Nonlinear Autoregressive External Input Neural Network

Authors

  • Mardini Hasanah Universitas Andalas
  • Novizon Novizon Universitas Andalas
  • Rusvaira Qatrunnada Univrersitas Andalas
  • Yusreni Warmi Institut Teknologi Padang
  • Sitti Amalia Institut Teknologi Padang
  • Herris Yamashika Universitas Muhammadiyah Sumatera Barat

DOI:

https://doi.org/10.33387/protk.v11i3.7344

Keywords:

Flashover, Prediction, Contamination, Insulator, Neural Network, ESDD, NSDD.

Abstract

This study aims to use an artificial neural network to forecast the flashover voltage of a polluted high-voltage insulator. Practical tests were conducted on a high-voltage insulator to gather data for the neural network. These tests were carried out with varying levels of real contaminants from used insulators, with each level of contamination measured in milliliters. The collected data provides flashover voltage values corresponding to different pollution amounts and their conductivity in each insulator zone. The Nonlinear Autoregressive External Input Neural Network (NarxNet) is employed to predict the flashover voltage and assess the pollution state of the insulator. The results demonstrate that the NarxNet method achieves a 93.74% accuracy rate in predicting the flashover voltage of high-voltage insulators, compared to the results from practical tests.

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Author Biographies

Mardini Hasanah, Universitas Andalas

Electrical Engineering

Novizon Novizon, Universitas Andalas

Electrical Engineering

Rusvaira Qatrunnada, Univrersitas Andalas

Electrical Engineering

Yusreni Warmi, Institut Teknologi Padang

Electrical Engineering

Sitti Amalia, Institut Teknologi Padang

Electrical Engineering

Herris Yamashika, Universitas Muhammadiyah Sumatera Barat

Electrical Engineering

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Published

2024-09-09

How to Cite

Hasanah, M., Novizon, N., Qatrunnada, R., Warmi, Y., Amalia, S., & Yamashika, H. (2024). A Novel Model for Prediction of Flashover 150kV Polluted Insulator Based on Nonlinear Autoregressive External Input Neural Network. Protek : Jurnal Ilmiah Teknik Elektro, 11(3), 156–161. https://doi.org/10.33387/protk.v11i3.7344

Issue

Section

Electrical, Power and Energy