4.6 Article

Identifying DC Series and Parallel Arcs Based on Deep Learning Algorithms

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 76386-76400

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3192517

Keywords

Artificial intelligence; Circuit faults; Inverters; Fault diagnosis; Wiring; Load modeling; Voltage; Arc diagnosis; artificial intelligence; DC arc failure; identifying arc fault

Funding

  1. Technology Development Program to Solve Climate Changes through the National Research Foundation of Korea (NRF) through the Ministry of Science, ICT [2021M1A2A2060313]
  2. Korea Electric Power Corporation [R21XA01-3]
  3. National Research Foundation of Korea [2021M1A2A2060313] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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This study investigates the electrical activities of series and parallel arc faults in a network and categorizes these faults based on data such as load current and voltage. The findings contribute to enhancing the stability and reliability of arc-fault detectors.
Arc phenomena are usually related to the undesired disengagement of two electrical connections. The emission power discharge from the failure arc may damage wiring and can present a fire hazard. Numerous studies have been proposed to detect arc events and quickly isolate them from an electrical system. DC arc faults are often sorted into two types: series and parallel arcs. A series arc may be the outcome of discharging links in electrical wiring. By contrast, the parallel arc occurs between two electric wires, or between a link and a ground, owing to contamination or poor isolation. The currents in a system with an arc fault are considerably greater when the arc parallel in nature than when the arc is series in nature. In this paper, the electric activities of a network are investigated for the duration of series and parallel arc failures in both the time and frequency domains. The arcing behavior investigated is selected to allow for the identification of series and parallel arcs. The sorting of electrical arcs in an accurate and reliable manner is useful for electrical protection schemes. The identification process used here is based on data related to different domains, such as load current and voltage. In this study, eight learning techniques are investigated with the aim of detecting series and parallel arc faults. The arc behaviors were studied in the various domains. We used the load current and voltage characteristics as an statistic for categorizing a given arc failure. This study could be beneficial to enhance the stability and reliability of arc-fault detectors.

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