Recent developments in DNS of turbulent combustion

P Domingo, L Vervisch - Proceedings of the Combustion Institute, 2023 - Elsevier
The simulation of turbulent flames fully resolving the smallest flow scales and the thinnest
reaction zones goes along with specific requirements, which are discussed from …

Review of machine learning for hydrodynamics, transport, and reactions in multiphase flows and reactors

LT Zhu, XZ Chen, B Ouyang, WC Yan… - Industrial & …, 2022 - ACS Publications
Artificial intelligence (AI), machine learning (ML), and data science are leading to a
promising transformative paradigm. ML, especially deep learning and physics-informed ML …

[HTML][HTML] The reactor-based perspective on finite-rate chemistry in turbulent reacting flows: A review from traditional to low-emission combustion

A Péquin, MJ Evans, A Chinnici, PR Medwell… - Applications in Energy …, 2023 - Elsevier
In flames, turbulence can either limit or enhance combustion efficiency by means of strain
and mixing. The interactions between turbulent motions and chemistry are crucial to the …

A multi-scale sampling method for accurate and robust deep neural network to predict combustion chemical kinetics

T Zhang, Y Yi, Y Xu, ZX Chen, Y Zhang, E Weinan… - Combustion and …, 2022 - Elsevier
Abstract Machine learning has long been considered a black box for predicting combustion
chemical kinetics due to the extremely large number of parameters and the lack of …

Model identification in reactor-based combustion closures using sparse symbolic regression

RSM Freitas, A Péquin, RM Galassi, A Attili… - Combustion and …, 2023 - Elsevier
Abstract In Large Eddy Simulations (LES) of combustion, the accuracy of predictions might
be heavily affected by deficiencies in traditional/simplified closure models, especially when …

Laminar flame speed modeling for low carbon fuels using methods of machine learning

S Shahpouri, A Norouzi, C Hayduk, A Fandakov… - Fuel, 2023 - Elsevier
Abstract Artificial Neural Network (ANN) and Support Vector Machine (SVM) methods are
designed to accurately predict Laminar Flame Speed (LFS) over the entire engine operating …

BLASTNet: A call for community-involved big data in combustion machine learning

WT Chung, KS Jung, JH Chen, M Ihme - Applications in Energy and …, 2022 - Elsevier
Many state-of-the-art machine learning (ML) fields rely on large datasets and massive deep
learning models (with O (10 9) trainable parameters) to predict target variables accurately …

A hybrid physical data informed DNN in axial displacement prediction of immersed tunnel joint

W Yan, Y Yan, P Shen, WH Zhou - Georisk: Assessment and …, 2023 - Taylor & Francis
Due to complex interactions between immersed tunnel and surrounding environment, it is
difficult to apply theoretical analysis for axial displacement (DIS) of immersion joints. To …

Data-driven discovery of heat release rate markers for premixed NH3/H2/air flames using physics-informed machine learning

C Chi, S Sreekumar, D Thévenin - Fuel, 2022 - Elsevier
The spatial distribution of heat release rate (HRR) is important for flame front identification.
However, direct measurement of HRR is impossible using the current experimental …

[HTML][HTML] SGS Reaction rate modelling for MILD combustion based on machine-learning combustion mode classification: Development and a priori study

K Jigjid, Y Minamoto, NAK Doan… - Proceedings of the …, 2023 - Elsevier
A neural network (NN) aided model is proposed for the filtered reaction rate in moderate or
intense low-oxygen dilution (MILD) combustion. The framework of the present model is …