2023
DOI: 10.13052/dgaej2156-3306.38513
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Artificial Neural Networks-Based Fault Diagnosis Model for Distribution Network

Abstract: With many branch lines in radiant distribution networks, diagnosing faults in a distribution network is very difficult. It is of great significance to identify different types of faults quickly and accurately for the stable operation of the power grid. This research presents a fault identification model for a distribution network based on artificial neural networks. The principal component analysis first extracts features from transitory data in a distribution network. The resulting low-dimensional data is sub… Show more

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“…The hybridized neuro-fuzzy method boasts various benefits compared to the existing approaches, such as [2]:…”
Section: Advantages Of the Hybridized Neuro-fuzzy Approachmentioning
confidence: 99%
“…The hybridized neuro-fuzzy method boasts various benefits compared to the existing approaches, such as [2]:…”
Section: Advantages Of the Hybridized Neuro-fuzzy Approachmentioning
confidence: 99%