Title | Exploiting a Transformer Architecture to Simultaneous Development of Transition and Turbulence Models for Turbine Flow Predictions |
Publication Type | Conference Proceedings |
Year of Publication | 2024 |
Authors | Fang Y, Reissmann M, Pacciani R, Zhao Y, Ooi A, Marconcini M, Akolekar H, Sandberg R |
Conference Name | ASME Turbo Expo 2024 Turbomachinery Technical Conference and Exposition |
Volume | Volume 12C: Turbomachinery |
Pagination | V12CT32A023 |
Date Published | 08/2024 |
Publisher | ASME |
Conference Location | London, UK, June 24 – 28, 2024 |
ISBN Number | 978-0-7918-8807-0 |
Other Numbers | Scopus 2-s2.0-85204699226 |
Abstract | Accurate prediction of the detailed boundary layer behavior of turbine blades subject to laminar-turbulent transition remains a challenge in Reynolds Averaged Navier-Stokes (RANS) calculations. Previous studies have focused on enhancing the transition model near the wall in RANS, for example through a symbolic regression (SR) machine learning method known as gene expression programming (GEP)[1, 2] (Akolekar et al., GT2022-81091; Fang et al., GT2023-102902). However, better transition prediction alone does not guarantee the improvement of the results for the fully turbulent boundary layer state. It is crucial to also revise the Boussinesq approximation in the turbulence model, as it assumes the anisotropy stress is solely aligned with the mean strain rate. This assumption has been shown to be inaccurate for flows featuring sudden changes in mean strain rate, such as flow over curved surface, like those found in gas turbines. In this paper, instead of only revising the transition model, a nonlinear constitutive relation is also trained to supplement the Boussinesq approximation. Consequently, the transition and turbulence models near the wall, for the first time, are simultaneously trained in a fully coupled manner using GEP. To ensure References |
Notes | GT2024-125550 |
URL | https://asmedigitalcollection.asme.org/GT/proceedings-abstract/GT2024/88070/V12CT32A023/1204723 |
DOI | 10.1115/GT2024-125550 |
Refereed Designation | Refereed |