Classification and computation of extreme events in turbulent combustion

M Hassanaly, V Raman - Progress in Energy and Combustion Science, 2021 - Elsevier
In the design of practical combustion systems, ensuring safety and reliability is an important
requirement. For instance, reliably avoiding lean blowout, flame flashback or inlet unstart is …

Challenges for turbulent combustion

AR Masri - Proceedings of the Combustion Institute, 2021 - Elsevier
Turbulent combustion will remain central to the next generation of combustion devices that
are likely to employ blends of renewable and fossil fuels, transitioning eventually to …

Multiscale graph neural network autoencoders for interpretable scientific machine learning

S Barwey, V Shankar, V Viswanathan… - Journal of Computational …, 2023 - Elsevier
The goal of this work is to address two limitations in autoencoder-based models: latent
space interpretability and compatibility with unstructured meshes. This is accomplished here …

Data-driven classification and modeling of combustion regimes in detonation waves

S Barwey, S Prakash, M Hassanaly… - Flow, Turbulence and …, 2021 - Springer
A data-driven approach to classify combustion regimes in detonation waves is implemented,
and a procedure for domain-localized source term modeling based on these classifications …

A generative adversarial network (GAN) approach to creating synthetic flame images from experimental data

A Carreon, S Barwey, V Raman - Energy and AI, 2023 - Elsevier
Modern diagnostic tools in turbulent combustion allow for highly-resolved measurements of
reacting flows; however, they tend to generate massive data-sets, rendering conventional …

[HTML][HTML] 3d convolutional selective autoencoder for instability detection in combustion systems

T Gangopadhyay, V Ramanan, A Akintayo, PK Boor… - Energy and AI, 2021 - Elsevier
While analytical solutions of critical (phase) transitions in dynamical systems are abundant
for simple nonlinear systems, such analysis remains intractable for real-life dynamical …

Using machine learning to construct velocity fields from OH-PLIF images

S Barwey, M Hassanaly, V Raman… - … Science and Technology, 2022 - Taylor & Francis
This work utilizes data-driven methods to morph a series of time-resolved experimental OH-
PLIF images into corresponding three-component planar PIV fields in the closed domain of a …

Influence of operating conditions on flow field dynamics and soot formation in an aero-engine model combustor

M Grader, P Gerlinger - Combustion and Flame, 2023 - Elsevier
Large-eddy simulations of a sooting aero-engine model combustor are performed for three
operating points. They are analyzed to investigate the influence of secondary air injection …

Data-driven reduction and decomposition with time-axis clustering

S Barwey, V Raman - Proceedings of the Royal Society …, 2023 - royalsocietypublishing.org
A new approach for modal decomposition through re-interpretation of unsteady dynamics,
termed time-axis clustering, is developed in this work and is demonstrated on an …

Data-based analysis of multimodal partial cavity shedding dynamics

S Barwey, H Ganesh, M Hassanaly, V Raman… - Experiments in …, 2020 - Springer
Time-resolved X-ray densitometry void fraction measurements and accompanying acoustic
emissions have revealed that partial cavity shedding on a hydrofoil can be multimodal, with …