Statistical Evaluation of SCADA data for Wind Turbine Condition Monitoring and Farm Assessment

Journal Article (2018)
Author(s)

E. González (Universidad de Zaragoza)

Jannis Tautz-Weinert (Loughborough University, Universidad de Zaragoza)

E Melero (Universidad de Zaragoza)

S.J. Watson (TU Delft - Wind Energy)

Research Group
Wind Energy
Copyright
© 2018 E. Gonzalez, J. Tautz-Weinert, J. J. Melero, S.J. Watson
DOI related publication
https://doi.org/10.1088/1742-6596/1037/3/032038
More Info
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Publication Year
2018
Language
English
Copyright
© 2018 E. Gonzalez, J. Tautz-Weinert, J. J. Melero, S.J. Watson
Research Group
Wind Energy
Issue number
3
Volume number
1037
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Abstract

Operational data from wind farms is crucial for wind turbine condition monitoring and performance assessment. In this paper, we analyse three wind farms with the aim to monitor environmental and operational conditions that might result in underperformance or failures. The assessment includes a simple wind speed characterisation and wake analysis. The evolution of statistical parameters is used to identify anomalous turbine behaviour. In total, 88 turbines and 12 failures are analysed, covering different component failures. Notwithstanding the short period of data available, several operational parameters are found to deviate from the farm trend in some turbines affected by failures. As a result, some parameters show better monitoring capabilities than others, for the detection of certain failures. However, the limitations of SCADA statistics are also shown as not all failures showed anomalies in the observed parameters.