Data-driven online monitoring of wind turbines

T. Kenbeek, S. Kapodistria, A. Di Bucchianico

Research output: Contribution to journalArticleAcademic

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Abstract

Condition based maintenance is a modern approach to maintenance which has been successfully used in several industrial sectors. In this paper we present a concrete statistical approach to condition based maintenance for wind turbine by applying ideas from statistical process control. A specific problem in wind turbine maintenance is that failures of a certain part may have causes that originate in other parts a long time ago. This calls for methods that can produce timely warnings by combining sensor data from different sources. Our method improves on existing methods used in wind turbine maintenance by using adaptive alarm thresholds for the monitored parameters that correct for values of other relevant parameters. We illustrate our method with a case study that shows that our method is able to predict upcoming failures much earlier than currently used methods.
Original languageEnglish
Article number1702.05047
JournalarXiv
Publication statusPublished - 2017

Keywords

  • stat.AP
  • 90B25, 62P30, 62J05, 62M10, 62L10

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