SCADA Data-Driven Wind Turbine Main Bearing Fault Prognosis Based on One-Class Support Vector Machines

Authors

  • A. Insuasty Author
  • C. Tutiven Author
  • Y. Vidal Author

DOI:

https://doi.org/10.24084/repqj19.290

Keywords:

wind turbine, fault prognosis, main bearing, SCADA data

Abstract

This work proposes a fault prognosis methodology to predict the main bearing fault several months in advance and let turbine operators plan ahead. Reducing downtime is of paramount importance in wind energy industry to address its energy loss impact. The main advantages of the proposed methodology are the following ones. It is an unsupervised approach, thus it does not require faulty data to be trained; ii) it is based only on exogenous data and one representative temperature close to the subsystem to diagnose, thus avoiding data contamination; iii) it accomplishes the prognosis (various months in advance) of the main bearing fault; and iv) the validity and performance of the established methodology is demonstrated on a real underproduction wind turbine.

Author Biographies

  • A. Insuasty

    Electronic Engineering Faculty of Engineering Universidad de Nariño.

    Colombia

  • C. Tutiven

    Mechatronics Engineering Faculty of Mechanical Engineering and Production

    Science Escuela Superior Politecnica del Litoral, Guayaquil. Ecuador

    Universidad ECOTEC Guayaquil. Ecuador

    Control, Modeling, Identification and Applications Department of Mathematics

        Escola d’Enginyeria de Barcelona Est Universitat Politecnica de Catalunya,

        Barcelona. Spain

  • Y. Vidal

    Control, Modeling, Identification and Applications Department of Mathematics

    Escola d’Enginyeria de Barcelona Est Universitat Politecnica de Catalunya,

    Barcelona. Spain  

    Institute of Mathematics (IMTech) Universitat Politècnica de Catalunya,

    Barcelona. Spain

Published

2024-01-03

Issue

Section

Articles