2022
DOI: 10.1002/we.2720
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Retrospective de‐trending of wind site turbulence using machine learning

Abstract: This paper considers the removal of low-frequency trend contributions from turbulence intensity values at sites for which only 10-min statistics in wind speed are available. It is proposed the problem be reformulated as a direct regression task, solvable using machine learning techniques in conjunction with training data formed from measurements at sites for which underlying (non-averaged) wind data are available.Once trained, the machine learning models can de-trend sites for which only 10-min statistics have… Show more

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