2024
DOI: 10.1038/s41598-024-77982-7
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Integrating fault detection and classification in microgrids using supervised machine learning considering fault resistance uncertainty

Morteza Barkhi,
Javad Poorhossein,
Seyed Ali Hosseini

Abstract: Microgrids (MGs) can enhance the consumers’ reliability. Nevertheless, besides significant outcomes, some challenges arise. Regarding the intermittent nature of Renewable Energy Resources (RESs), MGs are not operated radially. Accordingly, the reliable protection of MGs considering uncertainty in RESs is crucial for planners and operators. This paper uses data analysis to extract knowledge from locally available measurements using RMS values of symmetrical components. The learning-based characteristic of the s… Show more

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