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DC Series Arc Fault Diagnosis Scheme Based on Hybrid Time and Frequency Features Using Artificial Learning Modelsopen access

Authors
Dang, Hoang-LongKwak, SangshinChoi, Seungdeog
Issue Date
Feb-2024
Publisher
MDPI
Keywords
DC series arc; three-sigma rule; switching noise removal; feature extraction; artificial learning models
Citation
MACHINES, v.12, no.2
Journal Title
MACHINES
Volume
12
Number
2
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/72999
DOI
10.3390/machines12020102
ISSN
2075-1702
2075-1702
Abstract
DC series arc faults pose a significant threat to the reliability of DC systems, particularly in DC generation units where aging components and high voltage levels contribute to their occurrence. Recognizing the severity of this issue, this study aimed to enhance DC arc fault detection by proposing an advanced recognition procedure. The methodology involves a sophisticated combination of current filtering using the Three-Sigma Rule in the time domain and the removal of switching noise in the frequency domain. To further enhance the diagnostic capabilities, the proposed method utilizes time and frequency signals generated from power supply-side signals as a reference input. The time-frequency features extracted from the filtered signals are then combined with artificial learning models. This fusion of advanced signal processing and machine learning techniques aims to capitalize on the strengths of both domains, providing a more comprehensive and effective means of detecting arc faults. The results of this detection process validate the effectiveness and consistency of the proposed DC arc failure identification schematic. This research contributes to the advancement of fault detection methodologies in DC systems, particularly by addressing the challenges associated with distinguishing arc-related distortions, ultimately enhancing the safety and dependability of DC electrical systems.
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창의ICT공과대학 (전자전기공학부)
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