Faults are the primary cause of economic losses, equipment damage, and blackouts in distribution networks. These faults are categorized into various types and induce rapid fluctuations in voltage and current signals. In this paper, a machine learning-based fault detection method is considered. The proposed methodology effectively addresses the challenges of identifying fault types and locations in distribution power systems. By applying the Wavelet Packet Transform feature extraction method to superimposed three-phase voltage signals, the approach achieves high accuracy and robustness, even under noisy conditions and varying disturbances. The uncertainties associated with Renewable Energy Sources are considered, and the optimal locations of Monitoring Units are determined using a Voltage Stability Index-based optimization framework. Simulation results on a detailed IEEE 33-bus network validate the method's reliability, demonstrating its potential to enhance the efficiency and resilience of modern distribution networks.

(2025). Learning-based Detection of Fault Type and Location in Electrical Distribution Networks . Retrieved from https://hdl.handle.net/10446/316339

Learning-based Detection of Fault Type and Location in Electrical Distribution Networks

Russo, Antonio;
2025-01-01

Abstract

Faults are the primary cause of economic losses, equipment damage, and blackouts in distribution networks. These faults are categorized into various types and induce rapid fluctuations in voltage and current signals. In this paper, a machine learning-based fault detection method is considered. The proposed methodology effectively addresses the challenges of identifying fault types and locations in distribution power systems. By applying the Wavelet Packet Transform feature extraction method to superimposed three-phase voltage signals, the approach achieves high accuracy and robustness, even under noisy conditions and varying disturbances. The uncertainties associated with Renewable Energy Sources are considered, and the optimal locations of Monitoring Units are determined using a Voltage Stability Index-based optimization framework. Simulation results on a detailed IEEE 33-bus network validate the method's reliability, demonstrating its potential to enhance the efficiency and resilience of modern distribution networks.
2025
Inglese
1st IFAC Workshop on Smart Energy System for efficient and sustainable smart grids and smart cities - SENSYS 2025 Bari, Italy, June 18 – 20, 2025. Proceedings
Volta, Marialuisa
59
9
43
48
online
Netherlands
Amsterdam
Elsevier
SENSYS 2025: 1st IFAC Workshop on Smart Energy System for efficient and sustainable smart grids and smart cities, Bari, Italy, 18-20 June 2025
1st
Bari, Italy
18-20 June 2025
Settore IINF-04/A - Automatica
Decentralized Control; Decision Support Systems; Distributed; Fault Detection; Intelligent Control in Smart Grid; Management; Safety; Smart Grids; Supervision
   Hybrid ElectriC regional Aircraft distribution TEchnologies
   HECATE
   European Commission
info:eu-repo/semantics/conferenceObject
4
Jalalat, Sajjad Miralizadeh; Cavallo, Alberto; Russo, Antonio; Tucci, Francesco
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
open
Non definito
273
(2025). Learning-based Detection of Fault Type and Location in Electrical Distribution Networks . Retrieved from https://hdl.handle.net/10446/316339
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/316339
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