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Open Access research that pioneers intelligent infrastructure

Strathprints makes available scholarly Open Access content by researchers in the Department of Civil & Environmental Engineering, based within the Faculty of Engineering.

Civil & Environmental Engineering hosts the Centre for Intelligent Infrastructure which harnesses techniques from a variety of sciences and engineering in order to solve problems surrounding safety and resilience of structures supporting energy generation, waste storage, transportation and urban infrastructure. The wider Department also demonstrates specialisms in ground engineering and energy geosciences, as well as environmental sustainability.

Explore the Open Access research of Civil & Environmental Engineering. Or explore all of Strathclyde's Open Access research...

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Group by: Publication Date | Item type | No Grouping
Number of items: 5.

Article

Turnbull, Alan and Carroll, James and McDonald, Alasdair (2020) Combining SCADA and vibration data into a single anomaly detection model to predict wind turbine component failure. Wind Energy. ISSN 1095-4244

Mckinnon, Conor and Turnbull, Alan and Koukoura, Sofia and Carroll, James and McDonald, Alasdair (2020) Effect of time history on normal behaviour modelling using SCADA data to predict wind turbine failures. Energies, 13 (18). 4745. ISSN 1996-1073

Hart, Edward and Turnbull, Alan and Feuchtwang, Julian and McMillan, David and Golysheva, Evgenia and Elliott, Robin (2019) Wind turbine main-bearing loading and wind field characteristics. Wind Energy, 22 (11). pp. 1534-1547. ISSN 1095-4244

Hart, E and Turnbull, A and McMillan, D and Feuchtwang, J and Golysheva, E and Elliott, R (2017) Investigation of the relationship between main-bearing loads and wind field characteristics. Journal of Physics: Conference Series, 926. 012010. ISSN 1742-6588

Conference or Workshop Item

Turnbull, A. and Carroll, J. and Koukoura, S. and McDonald, A. (2018) Prediction of wind turbine generator bearing failure through analysis of high frequency vibration data and the application of support vector machine algorithms. In: The 7th International Conference on Renewable Power Generation, 2018-08-26 - 2018-09-27, DTU, Lyngby.

This list was generated on Fri Jan 15 11:42:20 2021 GMT.