Abstract
With the rapid advancement of machine learning techniques, the development and study of machine learning turbulence models have become increasingly prevalent. The constitutive relationship between the Reynolds stress tensor and the mean flow quantities is a critical part of turbulence modeling. When modeled with machine learning methods, however, it faces a significant challenge: the lack of generalizability. To address this issue, we propose a novel tensor basis normalization technique to improve the generalizability of machine learning turbulence models, grounded in the general effective-viscosity hypothesis. In this study, we utilize direct numerical simulation results of periodic hill flows as training data to develop a symbolic regression-based turbulence model based on the general effective-viscosity hypothesis. Furthermore, we construct a systematic validation dataset to evaluate the generalizability of our symbolic regression-based turbulence model. This validation set includes periodic hills with different aspect ratios from the training dataset, zero pressure gradient flat plate flows, three-dimensional incompressible flows over a National Advisory Committee for Aeronautics 0012 airfoil, T106 turbine cascade compressible flows, and National Aeronautics and Space Administration Rotor 37 transonic axial compressor rotor flows. These validation cases exhibit significant flow characteristics and geometrical variations, progressively increasing their differences from the training dataset. Such a diverse validation set is a robust benchmark to assess the generalizability of the proposed turbulence model. Finally, we demonstrate that our symbolic regression-based turbulence model performs effectively across validation cases, encompassing various separation features, geometries, and Reynolds numbers.
| Original language | English |
|---|---|
| Article number | 025105 |
| Number of pages | 20 |
| Journal | Physics of Fluids |
| Volume | 38 |
| Online published | 2 Feb 2026 |
| DOIs | |
| Publication status | Published - Feb 2026 |
Funding
This research was supported by the National Science and Technology Major Project of China (No. J2019-II-0005-0025), the National Natural Science Foundation of China (No. 52406057), Research Grants Council of Hong Kong (No. CityU 21206123), and the National Natural Science Foundation of Guangdong Province (Grant No. 2514050003981).
Publisher's Copyright Statement
- COPYRIGHT TERMS OF DEPOSITED FINAL PUBLISHED VERSION FILE: This article may be downloaded for personal use only. Any other use requires prior permission of the author and AIP Publishing. This article Ziqi Ji, Penghao Duan, Gang Du; Enhancing generalizability of machine learning general effective-viscosity turbulence model via tensor basis normalization. Physics of Fluids 1 February 2026; 38 (2): 025105 and may be found at https://doi.org/10.1063/5.0301679.
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Dive into the research topics of 'Enhancing generalizability of machine learning general effective-viscosity turbulence model via tensor basis normalization'. Together they form a unique fingerprint.Projects
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ECS: Design of Fully Cooled Turbine Blade Using Shape and Film Cooling Combined Optimization
DUAN, P. (Principal Investigator / Project Coordinator)
1/01/24 → 4/03/26
Project: Research
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