Estimation of the wind turbine yaw error by support vector machines

Nida Sheibat-Othman, Sami Othman, Raoaa Tayari, Sakly Anis, Peter Fogh Odgaard, Lars Finn Sloth Larsen

Publikation: Bidrag til tidsskriftKonferenceartikel i tidsskriftForskningpeer review

10 Citationer (Scopus)

Abstract

Wind turbine yaw error information is of high importance in controlling wind turbine power and structural load. Normally used wind vanes are imprecise. In this work, the estimation of yaw error in wind turbines is studied using support vector machines for regression (SVR). As the methodology is data-based, simulated data from a high fidelity aero-elastic model is used for learning. The model simulates a variable speed horizontal-axis wind turbine composed of three blades and a full converter. Both partial load (blade angles fixed at 0 deg) and full load zones (active pitch actuators) are considered. The validation step is done under different conditions of wind shear, speed and direction, giving good estimation results.
OriginalsprogEngelsk
BogserieI F A C Workshop Series
Vol/bind48
Udgave nummer30
Sider (fra-til)339-344
ISSN1474-6670
DOI
StatusUdgivet - dec. 2015
Begivenhed9th IFAC Symposium on Control of Power and Energy Systems CPES 2015 - New Delhi, Indien
Varighed: 9 dec. 201511 dec. 2015

Konference

Konference9th IFAC Symposium on Control of Power and Energy Systems CPES 2015
Land/OmrådeIndien
ByNew Delhi
Periode09/12/201511/12/2015

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