• Title of article

    Vestas V90-3MW Wind Turbine Gearbox Health Assessment Using a Vibration-Based Condition Monitoring System

  • Author/Authors

    Romero, A. Condition and Structural Health Monitoring, TWI Ltd, Cambridge CB21 6AL, UK , Lage, Y. Condition and Structural Health Monitoring, TWI Ltd, Cambridge CB21 6AL, UK , Soua, S. Condition and Structural Health Monitoring, TWI Ltd, Cambridge CB21 6AL, UK , Wang, B. School of Engineering and Design - Brunel University, Uxbridge UB8 3PH, UK , Gan, T.H. Condition and Structural Health Monitoring, TWI Ltd, Cambridge CB21 6AL, UK

  • Pages
    19
  • From page
    1
  • To page
    19
  • Abstract
    Reliable monitoring for the early fault diagnosis of gearbox faults is of great concern for the wind industry. This paper presents a novel approach for health condition monitoring (CM) and fault diagnosis in wind turbine gearboxes using vibration analysis. This methodology is based on a machine learning algorithm that generates a baseline for the identification of deviations from the normal operation conditions of the turbine and the intrinsic characteristic-scale decomposition (ICD) method for fault type recognition. Outliers picked up during the baseline stage are decomposed by the ICD method to obtain the product components which reveal the fault information. The new methodology proposed for gear and bearing defect identification was validated by laboratory and field trials, comparing well with the methods reviewed in the literature.
  • Keywords
    ondition Monitoring System , Turbine Gearbox Health , Vestas V90-3MW Wind , Vibration-Based C
  • Journal title
    Shock and Vibration
  • Serial Year
    2016
  • Record number

    2615325