Litcius/Paper detail

Digital Twin Based Virtual Sensor for Online Fatigue Damage Monitoring in Offshore Wind Turbine Drivetrains

Felix C. Mehlan, Amir R. Nejad, Zhen Gao

2022Journal of Offshore Mechanics and Arctic Engineering58 citationsDOIOpen Access PDF

Abstract

Abstract In this article a virtual sensor for online load monitoring and subsequent remaining useful life (RUL) assessment of wind turbine gearbox bearings is presented. Utilizing a Digital Twin framework the virtual sensor combines data from readily available sensors of the condition monitoring (CMS) and supervisory control and data acquisition (SCADA) system with a physics-based gearbox model. Different state estimation methods including Kalman filter, Least-square estimator, and a quasi-static approach are employed for load estimation. For RUL assessment the accumulated fatigue damage is calculated with the Palmgren–Miner model. A case study using simulation measurements from a high-fidelity gearbox model is conducted to evaluate the proposed method. Estimated loads at the considered intermediate and high-speed shaft bearings show moderate to high correlation (R = 0.50 − 0.96) to measurements, as lower frequency internal dynamics are not fully captured. The estimated fatigue damage differs by 5–15% from measurements.

Topics & Concepts

TurbineDrivetrainKalman filterEngineeringComputer scienceAutomotive engineeringSimulationStructural engineeringTorqueMechanical engineeringArtificial intelligencePhysicsThermodynamicsGear and Bearing Dynamics AnalysisMachine Fault Diagnosis TechniquesMechanical stress and fatigue analysis