A Novel Proposal in Wind Turbine Blade Failure Detection: An Integrated Approach to Energy Efficiency and Sustainability

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Author
Abarca-Albores, Jordan
Gutiérrez Cabrera, Danna Cristina
Salazar-Licea, Luis Antonio
Ruiz-Robles, Dante
Franco, Jesús Alejandro
Perea-Moreno, Alberto-Jesús
Muñoz-Rodríguez, David
Hernandez-Escobedo, Quetzalcoatl
Publisher
MDPIDate
2024Subject
Wind turbineArtificial intelligence
Blade failures
Energy
Sustainability
Orange Data Mining
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This paper presents a novel methodology for detecting faults in wind turbine blades using computational learning techniques. The study evaluates two models: the first employs logistic regression, which outperformed neural networks, decision trees, and the naive Bayes method, demonstrating its effectiveness in identifying fault-related patterns. The second model leverages clustering and achieves superior performance in terms of precision and data segmentation. The results indicate that clustering may better capture the underlying data characteristics compared to supervised methods. The proposed methodology offers a new approach to early fault detection in wind turbine blades, highlighting the potential of integrating different computational learning techniques to enhance system reliability. The use of accessible tools like Orange Data Mining underscores the practical application of these advanced solutions within the wind energy sector. Future work will focus on combining these methods to improve detection accuracy further and extend the application of these techniques to other critical components in energy infrastructure.