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Neural network based generation of a 1-dimensional stochastic field with turbulent velocity statistics

Published 21 Nov 2022 in eess.SP, physics.data-an, physics.flu-dyn, and stat.ML | (2211.11580v3)

Abstract: We define and study a fully-convolutional neural network stochastic model, NN-Turb, which generates a 1-dimensional field with some turbulent velocity statistics. In particular, the generated process satisfies the Kolmogorov 2/3 law for second order structure function. It also presents negative skewness across scales (i.e. Kolmogorov 4/5 law) and exhibits intermittency as characterized by skewness and flatness. Furthermore, our model is never in contact with turbulent data and only needs the desired statistical behavior of the structure functions across scales for training.

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