Bulletin of the American Physical Society
71st Annual Meeting of the APS Division of Fluid Dynamics
Volume 63, Number 13
Sunday–Tuesday, November 18–20, 2018; Atlanta, Georgia
Session M01: Reacting Flows: Computational & Analytical Methods
8:00 AM–10:10 AM,
Tuesday, November 20, 2018
Georgia World Congress Center
Room: B201
Chair: Shashank Yellapantula, National Renewable Energy Lab
Abstract ID: BAPS.2018.DFD.M01.2
Abstract: M01.00002 : A-priori analysis of joint PDF of mixture fraction and progress variable trained using machine learning techniques*
8:13 AM–8:26 AM
Presenter:
Marc Henry de Frahan
(National Renewable Energy Laboratory)
Authors:
Marc Henry de Frahan
(National Renewable Energy Laboratory)
Shashank Yellapantula
(National Renewable Energy Laboratory)
Ryan King
(National Renewable Energy Laboratory)
Ray Grout
(National Renewable Energy Laboratory)
Marc Day
(Lawrence Berkeley National Laboratory)
In this study, we use supervised machine learning (ML) techniques to investigate models in the context of presumed PDF based LES techniques. A key modeling uncertainty associated with the presumed PDF methods is the shape of the joint PDF. In the current study, data from reacting DNS of the Low-Swirl burner (LSB) with methane as fuel (Day et al. Combust Flame. 2012) are used to develop models using ML techniques for joint PDF shape prediction. DNS data in the form of the joint PDF of moments of passive and reacting scalars, namely mixture fraction and progress variable, are used as the training set. Using a-priori analysis, we demonstrate the performance of traditional ML models and recent deep learning (DL) methods. Joint PDF predictions are convoluted with conditional means of the progress variable source term to help comparing various PDF shapes. Comparisons of random forest regression, a traditional ML technique, with two different types of deep neural networks, a fully-connected feed forward neural network and a generative adversarial network, indicate that the DL techniques produce more accurate joint PDFs.
*This work was funded by the U.S. Department of Energy, Exascale Computing Project, under Contract No. DE-AC36-08-GO28308 with the National Renewable Energy Laboratory.
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2018.DFD.M01.2
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