SVM-Algorithm for Supervision, Monitoring and Detection Vibration in Wind Turbines

  • Vives J
  • Palací J
  • Heart J
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Abstract

With the implementation of supervised machine learning techniques, wind turbine maintenance has been transformed. A wind turbine’s electrical and mechanical components can be automatically identified, monitored, and detected to predict, detect, and anticipate their degeneration using this method of automatic and autonomous learning. Two different failure states are simulated due to bearing vibrations and compared with machine learning classifier and frequency analysis. A wind turbine can be monitored, monitored, and faulted efficiently by implementing SVM. With these technologies, downtime can be reduced, breakdowns can be anticipated, and aspects can be imported if they are offshore.

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Vives, J., Palací, J., & Heart, J. (2022). SVM-Algorithm for Supervision, Monitoring and Detection Vibration in Wind Turbines. Journal of Computer and Communications, 10(11), 44–55. https://doi.org/10.4236/jcc.2022.1011004

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