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WindTurbineHighSpeedBearingPrognosis-Data

Dataset for "Wind Turbine High-Speed Bearing Prognosis" example in Predictive Maintenance Toolbox.

The data is sourced from http://data-acoustics.com/measurements/bearing-faults/bearing-3/.

The data is provided under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License. Mathworks Inc. has obtained permission from the data owner Eric Bechhoefer to use the data for commercial purpose. Please contact the owner Eric Bechhoefer for any other commercial uses.

Instructions

  • Click 'Clone or download' button of the repository and select 'Download Zip'. Save the zip file in the same directory as the example live script. Then run the live script.
  • Alternatively, if you have git installed, at the command line go to the folder containing the example live script and type git clone https://github.com/mathworks/WindTurbineHighSpeedBearingPrognosis-Data.git. Rename the folder to WindTurbineHighSpeedBearingPrognosis-Data-master. Run the live script starting from the 'Data Import' section.

Modification of the original data

The original data is in the format of sensor-[timestamp].mat and tach-[timestamp].mat. This repository has merged the two pieces of data with the same timestamp into a single mat file named in the format of data-[timestamp].mat.

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windturbinehighspeedbearingprognosis-data's Issues

Can the 'tach' data be explained?

The paper 'Processing for Improved Spectral Analysis' and' Wind turbine high-speed shaft bearings health prognosis through a spectral Kurtosis-derived indices and SVR 'clearly pointed out that the axial velocity variation waveform within 6s time fluctuated around 30Hz with time variation. I find it strange that in the data given, the 'tach' data in the 50 days are all constant acceleration data, I think this tach data may not be the shaft speed, looking forward to your reply on this issue, thank you!!

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