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Wind turbine condition monitoring dataset of Fraunhofer LBF. | LitMetric

AI Article Synopsis

  • The Fraunhofer wind turbine dataset includes monitoring data from a 750 W wind turbine, capturing various metrics like vibrations, rotational velocity, and environmental conditions using accelerometers and tachometers.
  • It explores different damage scenarios, such as mass and aerodynamic imbalances, as well as bearing damage, making the dataset valuable for machine learning and condition monitoring applications.
  • Collected under real-world conditions, the dataset accounts for factors like rotor speed variability and environmental noise, which enhances its utility for uncertainty quantification and signal pre-processing tasks.

Article Abstract

Fraunhofer wind turbine dataset contains monitoring data from a 750 W wind turbine, including accelerometers and tachometer, to capture structural response, bearing vibrations and rotational velocity. Additionally, temperatures, wind speed and wind direction have been measured, while weather conditions have been acquired from selected sources. Various damage scenarios, including mass imbalance, and aerodynamic imbalance as well as damages on bearings' outer race, inner race and roller element have been implemented. The availability of time series data makes the dataset well suited for both machine learning and signal processing-based condition monitoring applications. The availability of heterogeneous sensors has created a dataset particularly suited for information fusion, data fusion, multi-sensor approaches, and holistic monitoring. Experiments were conducted in real-world conditions outside of a controlled laboratory environment, thereby introducing challenges such as variable rotor speed, noise, overloads, and other environmental factors. Consequently, the dataset is qualified for tasks involving uncertainty quantification and signal pre-processing. This document will detail the test equipment, experimental procedures, simulated damage cases and measurement parameters.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11464528PMC
http://dx.doi.org/10.1038/s41597-024-03934-5DOI Listing

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