An Ensemble-Based Deep Framework for Estimating Thermo-Chemical State Variables from Flamelet Generated Manifolds
Amol Salunkhe, Georgios Georgalis, Abani Patra, Varun, Chandola

TL;DR
This paper enhances a deep learning framework for turbulent combustion by integrating ensemble methods to quantify uncertainty in thermo-chemical state predictions, improving accuracy and variability capture.
Contribution
It introduces deep ensembles into ChemTab, enabling uncertainty quantification and comparing strategies that consider flamelet origin information versus all data.
Findings
Flamelets strategy yields lower prediction error.
Points strategy better captures variability.
Ensembles improve accuracy over previous models.
Abstract
Complete computation of turbulent combustion flow involves two separate steps: mapping reaction kinetics to low-dimensional manifolds and looking-up this approximate manifold during CFD run-time to estimate the thermo-chemical state variables. In our previous work, we showed that using a deep architecture to learn the two steps jointly, instead of separately, is 73% more accurate at estimating the source energy, a key state variable, compared to benchmarks and can be integrated within a DNS turbulent combustion framework. In their natural form, such deep architectures do not allow for uncertainty quantification of the quantities of interest: the source energy and key species source terms. In this paper, we expand on such architectures, specifically ChemTab, by introducing deep ensembles to approximate the posterior distribution of the quantities of interest. We investigate two…
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Taxonomy
TopicsCombustion and flame dynamics · Advanced Combustion Engine Technologies · Spectroscopy and Laser Applications
MethodsDeep Ensembles
