Conference Proceedings

Data-driven combustion modeling for a turbulent flame simulated with a computationally efficient solver

Mohsen Talei, Dominic Ma, Richard Sandberg

Proceedings of ASME Turbo Expo 2020 | ASME: The American Society of Mechanical Engineers | Published : 2020

Abstract

The use of machine learning (ML) for modeling is on the rise. In the age of big data, this technique has shown great potential to describe complex physical phenomena in the form of models. More recently, ML has frequently been used for turbulence modeling while the use of this technique for combustion modeling is still emerging. Gene expression programming (GEP) is one class of ML that can be used as a tool for symbolic regression and thus improve existing algebraic models using high-fidelity data. Direct numerical simulation (DNS) is a powerful candidate for producing the required data for training GEP models and validation. This paper therefore presents a highly efficient DNS solver known ..

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University of Melbourne Researchers

Grants

Awarded by National Computational Infrastructure


Funding Acknowledgements

Mohsen Talei acknowledges the support of the Australian Research Council (ARC) [grant DE180100416]. This research was undertaken with the assistance of resources and services from the National Computational Infrastructure (NCI), which is supported by the Australian Government. This work was also supported by resources provided by the Pawsey Supercomputing Centre with funding from the Australian Government and the Government of Western Australia.