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Deep Learning for High-Impedance Fault Detection: Convolutional Autoencoders

Author

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  • Khushwant Rai

    (Department of Electrical and Computer Engneering, The University of Western Ontario, London, ON N6A 5B9, Canada)

  • Farnam Hojatpanah

    (Department of Electrical and Computer Engneering, The University of Western Ontario, London, ON N6A 5B9, Canada)

  • Firouz Badrkhani Ajaei

    (Department of Electrical and Computer Engneering, The University of Western Ontario, London, ON N6A 5B9, Canada)

  • Katarina Grolinger

    (Department of Electrical and Computer Engneering, The University of Western Ontario, London, ON N6A 5B9, Canada)

Abstract

High-impedance faults (HIF) are difficult to detect because of their low current amplitude and highly diverse characteristics. In recent years, machine learning (ML) has been gaining popularity in HIF detection because ML techniques learn patterns from data and successfully detect HIFs. However, as these methods are based on supervised learning, they fail to reliably detect any scenario, fault or non-fault, not present in the training data. Consequently, this paper takes advantage of unsupervised learning and proposes a convolutional autoencoder framework for HIF detection (CAE-HIFD). Contrary to the conventional autoencoders that learn from normal behavior, the convolutional autoencoder (CAE) in CAE-HIFD learns only from the HIF signals eliminating the need for presence of diverse non-HIF scenarios in the CAE training. CAE distinguishes HIFs from non-HIF operating conditions by employing cross-correlation. To discriminate HIFs from transient disturbances such as capacitor or load switching, CAE-HIFD uses kurtosis, a statistical measure of the probability distribution shape. The performance evaluation studies conducted using the IEEE 13-node test feeder indicate that the CAE-HIFD reliably detects HIFs, outperforms the state-of-the-art HIF detection techniques, and is robust against noise.

Suggested Citation

  • Khushwant Rai & Farnam Hojatpanah & Firouz Badrkhani Ajaei & Katarina Grolinger, 2021. "Deep Learning for High-Impedance Fault Detection: Convolutional Autoencoders," Energies, MDPI, vol. 14(12), pages 1-25, June.
  • Handle: RePEc:gam:jeners:v:14:y:2021:i:12:p:3623-:d:577091
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    References listed on IDEAS

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    Cited by:

    1. Katleho Moloi & Innocent Davidson, 2022. "High Impedance Fault Detection Protection Scheme for Power Distribution Systems," Mathematics, MDPI, vol. 10(22), pages 1-19, November.
    2. Huan Zhou & Jianyun Chen & Manyuan Ye & Qincui Fu & Song Li, 2023. "Transient Fault Signal Identification of AT Traction Network Based on Improved HHT and LSTM Neural Network Algorithm," Energies, MDPI, vol. 16(3), pages 1-21, January.
    3. Igor Simone Stievano & Riccardo Trinchero, 2023. "Advanced Techniques for the Modeling and Simulation of Energy Networks," Energies, MDPI, vol. 16(5), pages 1-3, February.

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