Machine-learned flow estimation with sparse data—Exemplified for the rooftop of an unmanned aerial vehicle vertiport
Chang Hou,
Luigi Marra,
Guy Y. Cornejo Maceda
et al.
Abstract:We propose a physics-informed data-driven framework for urban wind estimation. This framework validates and incorporates the Reynolds number independence for flows under various working conditions, thus allowing the extrapolation for wind conditions far beyond the training data. Another key enabler is a machine-learned non-dimensionalized manifold from snapshot data. The velocity field is modeled using a double encoder–decoder approach. The first encoder normalizes data using the oncoming wind speed, while the… Show more
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