Investigation of Deep Learning-Based Filtered Density Function for Large Eddy Simulation of Turbulent Scalar Mixing
Shubhangi Bansude, Reza Sheikhi

TL;DR
This paper introduces a deep neural network-based filtered density function model for large eddy simulation of turbulent scalar mixing, demonstrating improved accuracy over traditional models, especially for complex, non-linear scalar distributions.
Contribution
The study develops and evaluates DNN-FDF models for LES of turbulent flows, including a novel approach to training data selection and validation against DNS and transported FDF methods.
Findings
DNN-FDF models outperform presumed-FDF models for multi-modal distributions
Models accurately predict higher variance scalar moments
Approach effectively captures non-linear scalar functions in turbulent flows
Abstract
A filtered density function (FDF) model based on deep neural network (DNN), termed DNN-FDF, is introduced for large eddy simulation (LES) of turbulent flows involving conserved scalar transport. The primary objectives of this study are to develop the DNN-FDF models and evaluate their predictive capability in accounting for various filtered moments, including that of non-linear source terms. A systematic approach is proposed to select DNN training sample size and architecture via learning curves to minimize bias and variance. Two DNN-FDF models are developed, one utilizing FDF data from Direct Numerical Simulations (DNS) of constant-density temporal mixing layer, and the other from zero-dimensional pairwise mixing stirred reactor simulations. The latter is particularly intended for cases where generating DNS data is computationally infeasible. DNN-FDF models are applied for LES of a…
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Taxonomy
TopicsNuclear reactor physics and engineering · Fluid Dynamics and Turbulent Flows · Nuclear Engineering Thermal-Hydraulics
