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Application of Artificial Neural Network for High Impedance Fault Detection in Power System

Konferenz: PCIM Asia New Delhi - The Agent of Change for the Indian Power Electronics Industry
09.12.2025-10.12.2025 in Dr. Ambedkar International Centre, New Delhi, India

doi:10.30420/566677002

Tagungsband: PCIM Asia New Delhi

Seiten: 7Sprache: EnglischTyp: PDF

Autoren:
Petkar, Vaishnavi; Hasabe, Ramchandra; Dhamangaonkar, Amaraja

Inhalt:
The High impedance fault (HIF) occurs when an energized conductor comes in contact with surfaces having relatively high resistance, such as concrete, tree limbs, etc, and results in low magnitude fault currents than conventional relaying systems’ threshold. As a result, HIF remains undetected by the conventional relaying system. This paper presents an HIF detection method using artificial neural networks (ANN). The power system and fault scenarios are modelled using MATLAB software R2024b. RMS voltages and currents of three phases are used to train the ANN. A trained ANN-based detection model is tested under various fault conditions. A microcontroller-based hardware prototype is implemented to validate the performance and accuracy of the implemented HIF detection logic. The ANN-based detection algorithm and prototype accurately detect high impedance faults.