2021
DOI: 10.48550/arxiv.2112.01113
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Probabilistic neural networks for predicting energy dissipation rates in geophysical turbulent flows

Abstract: Motivated by oceanographic observational datasets, we propose a probabilistic neural network (PNN) model for calculating turbulent energy dissipation rates from vertical columns of velocity and density gradients in density stratified turbulent flows. We train and test the model on high-resolution simulations of decaying turbulence designed to emulate geophysical conditions similar to those found in the ocean. The PNN model outperforms a baseline theoretical model widely used to compute dissipation rates from o… Show more

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