Machine Learning Approaches for Fault Detection in Renewable Microgrids
Amit Dutt,
M.N. Sandhya Rani,
Manbir Singh Bisht
et al.
Abstract:This paper presents a novel use of machine learning techniques for identifying faults in renewable microgrids within the field of decentralized energy systems. The study investigates the effectiveness of machine learning models in identifying abnormalities in dynamic and variable microgrid environments. It utilizes a comprehensive dataset that includes parameters such as solar, wind, and hydro power generation, energy storage status, and fault indicators. The investigation demonstrates a notable 94% precision … Show more
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