Dataset concerning the vibration signals from wind turbines in northern Sweden
https://doi.org/10.5878/bcmv-wq08
In the manuscript, we investigate condition monitoring methods based on unsupervised dictionary learning.
The dataset includes the raw time-domain vibration signals from six turbines within the same wind farm (near geographical location). All the wind turbines are of the same type and possess a three-stage gearbox. All measurement data corresponds to the axial direction of an accelerometer mounted on the housing of the output shaft bearing of each turbine. The sampling rate is 12.8 kilosamples/second and each signal segment is 1.28 seconds long (16384 samples).
There are six files, which contains the vibration data from each of the six wind turbines. Within each file, each row corresponds to a different measurement. Furthermore, the first column represents the time expressed in years since the vibration data started to be recorded. The second column is the speed expressed in cycles per minute. The remaining columns are the vibration signal time series expressed in Gs.
The dataset was originally published in DiVA and moved to SND in 2024.
Data files
Data files
Citation and access
Citation and access
Data access level:
Creator/Principal investigator(s):
Research principal:
Data contains personal data:
No
Citation:
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Method and outcome
Method and outcome
Data format/data structure:
Administrative information
Administrative information
Responsible department/unit:
Institutionen för system- och rymdteknik
Topic and keywords
Topic and keywords
Standard för svensk indelning av forskningsämnen 2025:
Relations
Relations
Publications
Publications
Citation:
Martin-del-Campo, S., Sandin, F., & Strömbergsson, D. (2021). Dictionary Learning Approach to Monitoring of Wind Turbine Drivetrain Bearings. In International Journal of Computational Intelligence Systems (Vol. 14, Issue 1, pp. 106–121). https://doi.org/10.2991/ijcis.d.201105.001Opens in a new tab
Metadata
Metadata
Version 1

Luleå University of Technology