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Journal ArticleOpen Access

Microgrid Fault Detection and Classification: Machine Learning Based Approach, Comparison, and Reviews

Author Affiliations
Rajshahi University of Engineering and Technology, Varendra University, Curtin University
Published InEnergies
Year2020
Citations119

Abstract

Accurate fault classification and detection for the microgrid (MG) becomes a concern among the researchers from the state-of-art of fault diagnosis as it increases the chance to increase the transient response. The MG frequently experiences a number of shunt faults during the distribution of power from the generation end to user premises, which affects the system reliability, damages the load, and increases the fault line restoration cost. Therefore, a noise-immune and precise fault diagnosis model is required to perform the fast recovery of the unhealthy phases. This paper presents a review on the MG fault diagnosis techniques with their limitations and proposes a novel discrete-wavelet transform (DWT) based probabilistic generative model to explore the precise solution for fault diagnosis of…
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