A machine learning based analysis of bearing vibrations for predictive maintenance in a hydropower plant
Paper in proceeding, 2024

This study employs machine learning techniques to model bearing vibrations for predictive maintenance within a hydropower plant, utilizing over three years of full-scale vibration measurement data. Operational parameters, including turbine speed, guide vane opening, and generator active power, serve as input features to predict vibrations in both upper guide and turbine guide bearings. The models, developed from datasets across different periods, aim to predict and analyze discrepancies in future monitoring data to evaluate potential performance degradation. When the statistical distribution of the future monitoring data closely aligns with the training data, the models demonstrate a capacity to predict gradual bearing performance degradation effectively. However, when future monitoring data diverge significantly from the training set, traditional machine learning models produce irrational predictions, leading to unreasonable trends. To overcome these challenges, the adoption of more sophisticated machine learning approaches is recommended to enhance the reliability of predictive maintenance in the face of unseen data scenarios.

Author

Xiao Lang

Chalmers, Mechanics and Maritime Sciences (M2), Fluid Dynamics

Håkan Nilsson

Chalmers, Mechanics and Maritime Sciences (M2), Fluid Dynamics

Wengang Mao

Chalmers, Mechanics and Maritime Sciences (M2), Marine Technology

IOP Conference Series: Earth and Environmental Science

17551307 (ISSN) 17551315 (eISSN)

Vol. 1411 012046

32nd IAHR Symposium on Hydraulic Machinery and Systems
Roorkee, India,

Hydropower operation and lifetime analysis

Energiforsk AB (VKU33021), 2023-01-01 -- 2027-06-30.

Swedish Energy Agency (VKU33021), 2023-01-01 -- 2027-06-30.

Driving Forces

Sustainable development

Subject Categories (SSIF 2011)

Energy Engineering

Computer Science

Areas of Advance

Energy

DOI

10.1088/1755-1315/1411/1/012046

More information

Latest update

1/10/2025