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 RD
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