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A methodology for performance assessment at system level—Identification of operating regimes and anomaly detection in wind turbines

Jon Urmeneta, Juan Santiago Murgui Izquierdo, Urko Leturiondo

2023Renewable Energy11 citationsDOIOpen Access PDF

Abstract

In the growing wind energy sector, as in other high investment sectors, the need to make assets profitable has put the spotlight on maintenance. Efficient solutions which leverage from condition or performance based maintenance policies have been proposed during the last decades, but the proposed methods generally focus on individual components or stand for specific application areas. This paper aims to contribute to the development of performance based maintenance strategies within the wind energy sector by providing a condition monitoring based generic methodology for wind turbine performance assessment at system level. The proposed methodology is based on the detection of critical periods in which low performance is detected repeatedly. Multiple machine learning methods and models are applied to assess the wind turbine performance. This methodology has been applied in a case study with SCADA data of eight wind turbines. An analyst could benefit from the implementation of the methodology and the easy-to-interpret results shown in the proposed control chart, especially in cases in which there is less know-how about which variables have higher impact on systems performance.

Topics & Concepts

Wind powerSCADATurbineLeverage (statistics)Reliability engineeringIdentification (biology)Computer scienceAnomaly detectionChartWind speedEnergy sectorEngineeringRisk analysis (engineering)Environmental economicsData miningBusinessMachine learningMechanical engineeringStatisticsPhysicsEconomicsBiologyBotanyElectrical engineeringMathematicsMeteorologyMachine Fault Diagnosis TechniquesReliability and Maintenance OptimizationPower System Reliability and Maintenance
A methodology for performance assessment at system level—Identification of operating regimes and anomaly detection in wind turbines | Litcius