Fault diagnosis of power converters in a grid connected photovoltaic system using artificial neural networks

Autor: A. Mimouni, S. Laribi, M. Sebaa, T. Allaoui, A. A. Bengharbi
Jazyk: English<br />Russian<br />Ukrainian
Rok vydání: 2023
Předmět:
Zdroj: Electrical engineering & Electromechanics, Iss 1, Pp 25-30 (2023)
Druh dokumentu: article
ISSN: 2074-272X
2309-3404
DOI: 10.20998/2074-272X.2023.1.04
Popis: Introduction. The widespread use of photovoltaic systems in various applications has spotlighted the pressing requirement for reliability, efficiency and continuity of service. The main impediment to a more effective implementation has been the reliability of the power converters. Indeed, the presence of faults in power converters that can cause malfunctions in the photovoltaic system, which can reduce its performance. Novelty. This paper presents a technique for diagnosing open circuit failures in the switches (IGBTs) of power converters (DC-DC converters and three-phase inverters) in a grid-connected photovoltaic system. Purpose. To ensure supply continuity, a fault-diagnosis process is required throughout all phases of energy production, transfer, and conversion. Methods. The diagnostic approach is based on artificial neural networks and the extraction of features corresponding to the open circuit fault of the IGBT switch. This approach is based on the Clarke transformation of the three-phase currents of the inverter output as well as the calculation of the average value of these currents to determine the exact angle of the open circuit fault. Results. This method is able to effectively identify and localize single or multiple open circuit faults of the DC-DC converter IGBT switch or the three-phase inverter IGBT switches.
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