An Efficient Machine-Learning Approach for PDF Tabulation in Turbulent Combustion Closure
Rishikesh Ranade, Genong Li, Shaoping Li, Tarek Echekki

TL;DR
This paper introduces an adaptive machine-learning method combining self-organizing maps and neural networks to efficiently tabulate multi-dimensional PDFs in turbulent combustion modeling, reducing memory and training time.
Contribution
It presents a novel adaptive algorithm using SOM clustering and MLP neural networks for efficient PDF tabulation in turbulent combustion simulations.
Findings
Good agreement with standard interpolation methods
Significant reduction in memory usage
Faster training times for PDF tabulation
Abstract
Probability density function (PDF) based turbulent combustion modelling is limited by the need to store multi-dimensional PDF tables that can take up large amounts of memory. A significant saving in storage can be achieved by using various machine-learning techniques that represent the thermo-chemical quantities of a PDF table using mathematical functions. These functions can be computationally more expensive than the existing interpolation methods used for thermo-chemical quantities. More importantly, the training time can amount to a considerable portion of the simulation time. In this work, we address these issues by introducing an adaptive training algorithm that relies on multi-layer perception (MLP) neural networks for regression and self-organizing maps (SOMs) for clustering data to tabulate using different networks. The algorithm is designed to address both the…
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Taxonomy
MethodsSelf-Organizing Map
