Superstatistical wind fields from point-wise atmospheric turbulence measurements
Jan Friedrich, Daniela Moreno, Michael Sinhuber, Matthias Waechter,, Joachim Peinke

TL;DR
This paper introduces a superstatistical wind field model extending the Mann model, accurately reproducing small-scale intermittency in atmospheric turbulence with low computational cost, based on multipoint statistical descriptions.
Contribution
The authors develop a novel superstatistical wind field model that captures higher-order statistics and intermittency, improving upon existing Gaussian models in atmospheric turbulence simulations.
Findings
Reproduces small-scale intermittency accurately
Extends the Mann model with superstatistics
Low computational cost for synthetic wind field generation
Abstract
Accurate models of turbulent wind fields have become increasingly important in the atmospheric sciences, e.g., for the determination of spatiotemporal correlations in wind parks, the estimation of individual loads on turbine rotor and blades, or for the modeling of particle-turbulence interaction in atmospheric clouds or pollutant distributions in urban settings. Due to the prohibitive task of resolving the fields across a broad range of scales, one oftentimes has to resort to stochastic wind field models that fulfill specific, empirically observed, properties. Here, we present a new model for the generation of synthetic wind fields that can be apprehended as an extension of the well-known Mann model for inflow turbulence in the wind energy sciences. Whereas such Gaussian random field models solely control second-order statistics (i.e., velocity correlation tensors or kinetic energy…
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