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Advisor(s)
Abstract(s)
The last few years have been marked by the insertion of
renewable technologies in the global energy matrix, such as wind and
solar energy, which are considered clean energies with low environmental
impact. Wind turbines, responsible for the energy conversion process,
are complex equipment that are expensive and susceptible to numerous
failures. Monitoring turbine components can help detect failures before
they occur, reducing equipment maintenance costs. This work compares
the training time of different techniques for tuning hyperparameters in
supervised machine-learning models for fault detection in wind turbines.
Results show the importance of data optimization during model training.
Description
Keywords
Wind turbine Machine learning Fault classification
Pedagogical Context
Citation
Pinna, Danielle; Toso, Rodrigo; Semaan, Gustavo; Sá, Fernando de; Pereira, Ana I.; Ferreira, Ângela; Soares, Jorge; Brandão, Diego (2024). Fault Classification of Wind Turbine: A Comparison of Hyperparameter Optimization Methods. In 3rd International Conference on Optimization, Learning Algorithms and Applications (OL2A 2023). Cham: Springer Nature, Vol. 2, p. 229–243. ISBN 978-3-031-53035-7
Publisher
Springer Nature
