Machine-Learning Strategies for Transition/Turbulence Modelling for Low-Pressure Turbines With Unsteady Inflow Conditions

TitleMachine-Learning Strategies for Transition/Turbulence Modelling for Low-Pressure Turbines With Unsteady Inflow Conditions
Publication TypeConference Proceedings
Year of PublicationSubmitted
AuthorsGu Y, Fang Y, Akolekar HD, Pacciani R, Marconcini M, Ooi ASH, Sandberg R
Conference Name17th International Symposium on Unsteady Aerodynamics Aeroacoustics and Aeroelasticity of Turbomachines ISUAAAT17
Date Published11/2025
Conference LocationMelbourne, Australia, November 16-21, 2025
Abstract

Unsteady flow behaviour induced by wake-blade interactions is crucial for the operational efficiency, aerodynamic stability, and fatigue life of low-pressure turbines (LPTs), and yet remains challenging to capture with (unsteady) Reynolds averaged Navier–Stokes (U)(RANS) calculations. This paper focuses on a more reliable estimation of unsteady wake-induced losses, arising primarily from wake mixing and boundary-layer transition under periodic disturbances. To achieve this, the CFD-driven training framework is, for the first time, tailored to LPT flow unsteadiness, enabling revisions of both the transition and turbulence models. Firstly, new physics-related features are incorporated into turbulence closure formulations for automated wake-region differentiation, and a new transition-model output is introduced to capture unsteady wake-induced transition. Secondly, model evaluation metrics are supplemented with phase-lock averaged cost functions to ensure consistent improvement throughout the entire unsteady cycle. The integration of transition and turbulence modelling components is achieved in a sequential manner. A comprehensive assessment of both transition and turbulence models is performed using metrics of time-averaged and phase-lock averaged flow features and secondary statistics, all of which demonstrate solid improvements over the baseline. Detailed model interpretation is also presented to reveal underlying physical insights. Moreover, a-posteriori validation with the machine-learnt transition–turbulence model on different incoming wake frequencies exhibits robust performance, significantly improving the prediction of both wake losses and transition behaviour not only in a mean sense but also for individual phases. This study highlights the potential of RANS-model development for unsteady multi-stage turbomachinery configurations and provides physical insights into wake-induced unsteadiness in LPTs.

Refereed DesignationRefereed