IET Renewable Power Generation (Nov 2024)

Impact of using text classifiers for standardising maintenance data of wind turbines on reliability calculations

  • Julia Walgern,
  • Katharina Beckh,
  • Neele Hannes,
  • Martin Horn,
  • Marc‐Alexander Lutz,
  • Katharina Fischer,
  • Athanasios Kolios

DOI
https://doi.org/10.1049/rpg2.13151
Journal volume & issue
Vol. 18, no. 15
pp. 3463 – 3479

Abstract

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Abstract This study delves into the challenge of efficiently digitalising wind turbine maintenance data, traditionally hindered by non‐standardised formats necessitating manual, expert intervention. Highlighting the discrepancies in past reliability studies based on different key performance indicators (KPIs), the paper underscores the importance of consistent standards, like RDS‐PP, for maintenance data categorisation. Leveraging on established digitalisation workflows, we investigate the efficacy of text classifiers in automating the categorisation process against conventional manual labelling. Results indicate that while classifiers exhibit high performance for specific datasets, their general applicability across diverse wind farms is limited at the present stage. Furthermore, differences in failure rate KPIs derived from manual versus classifier‐processed data reveal uncertainties in both methods. The study suggests that enhanced clarity in maintenance reporting and refined designation systems can lead to more accurate KPIs.

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