Automated classification of simulated wind field patterns from multiphysics ensemble forecasts |
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Authors: | Pablo Durn Sukanta Basu Cathrine Meißner Muyiwa S Adaramola |
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Affiliation: | Pablo Durán,Sukanta Basu,Cathérine Meißner,Muyiwa S. Adaramola |
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Abstract: | In this study, we have proposed an automated classification approach to identify meaningful patterns in wind field data. Utilizing an extensive simulated wind database, we have demonstrated that the proposed approach can identify low‐level jets, near‐uniform profiles, and other patterns in a reliable manner. We have studied the dependence of these wind profile patterns on locations (eg, offshore vs onshore), seasons, and diurnal cycles. Furthermore, we have found that the probability distributions of some of the patterns depend on the underlying planetary boundary layer schemes in a significant way. The future potential of the proposed approach in wind resource assessment and, more generally, in mesoscale model parameterization improvement is touched upon in this paper. |
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Keywords: | low‐level jets mesoscale modeling neural networks planetary boundary layer self‐organizing maps vertical wind profile |
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