Conference Proceedings

MACHINE LEARNING FOR THE DEVELOPMENT OF DATA DRIVEN TURBULENCE CLOSURES IN COOLANT SYSTEMS

James Hammond, Francesco Montomoli, Marco Pietropaoli, Richard Sandberg, Vittorio Michelassi

Proceedings of ASME Turbo Expo 2020 Turbomachinery Technical Conference and Exposition | ASME: The American Society of Mechanical Engineers | Published : 2020

Abstract

This work shows the application of Gene &pression Pro­gramming to augment RANS turbulence closure modelling for flows through complex geometries, designed for additive manu­facturing. Specifically, for the design of optimised internal cool­ing channels in turbine blades. One of the challenges in internal coolant design is the heat transfer accuracy of the RANS formu­lation in comparison to higher fidelity methods, which are still not used in design on account of their computational cost. How­ever, high fidelity data can be extremely valuable for improving cu"ent lower fidelity models and this work shows the application of data driven approaches to develop turbulence closures for an internall..

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University of Melbourne Researchers