Journal article
Machine-learnt turbulence closures for low-pressure turbines with unsteady inflow conditions
HD Akolekar, RD Sandberg, N Hutchins, V Michelassi, G Laskowski
Journal of Turbomachinery | ASME | Published : 2019
DOI: 10.1115/1.4043907
Abstract
The design of low-pressure turbines (LPTs) must account for the losses generated by the unsteady interaction with the upstream blade row. The estimation of such unsteady wake-induced losses requires the accurate prediction of the incoming wake dynamics and decay. Existing linear turbulence closures (stress-strain relationships), however, do not offer an accurate prediction of the wake mixing. Therefore, machine-learnt, nonlinear turbulence closures (models) have been developed for LPT flows with unsteady inflow conditions using a zonal-based model development approach, with an aim to enhance the wake mixing prediction for unsteady Reynolds-averaged Navier-Stokes calculations. High-fidelity t..
View full abstractGrants
Funding Acknowledgements
This work was supported by the resources provided by the Pawsey Supercomputing Centre with funding from the Australian Government and the Government of Western Australia (Funder ID: 10.13039/501100011025). The support by the Australian Government Research Training Program Scholarship is acknowledged. The authors of University of Melbourne also acknowledge the financial support and the permission to publish by General Electric (Funder ID: 10.13039/100004313).