@inproceedings { , title = {High Fidelity Cfd-Trained Machine Learning To Inform Rans-Modelled Interfacial Turbulence}, abstract = {In aero-engine bearing chambers, two-phase shearing flows are difficult to predict as Computational Fluid Dynamics (CFD) RANS models tend to overestimate interfacial turbulence levels, leading to inaccuracies in the modelling of the flow. Turbulence damping methods have been developed to address this problem, such as Egorov's correction, however, this method is mesh dependent and results differ considerably according to the choice of turbulence damping coefficient. In addition, this approach assumes a smooth interface between the air and oil phases when in reality they are wavy. In this paper, a Machine Learning method is used to inform an unsteady RANS turbulence modelling. It is trained using high fidelity quasi-DNS simulation data and used to provide an appropriate correction to the popular Wilcox's standard RANS í µí±˜ − í µí¼” turbulence model. The correction consists of a machine learning-predicted source term which is used to adjust the energy budget in the RANS transport equations. Demonstration of the approach is presented for a range of interfacial flow regimes.}, conference = {GPPS Chania22}, doi = {10.33737/gpps22-tc-30}, note = {Proceedings of Global Power and Propulsion Society ISSN-Nr: 2504-4400 GPPS Chania22 September 12 -14, 2022 www.gpps.global This work is licensed under Attribution 4.0 International (CC BY 4.0) See: https://creativecommons.org/licenses/by/4.0/legalcode}, publicationstatus = {Published}, publisher = {GPPS}, url = {https://nottingham-repository.worktribe.com/output/13177361}, year = {2022}, author = {Bertolotti, Luc and Jefferson-Loveday, Richard and Ambrose, Stephen and Korsukova, Evgenia} }