AutoTurb: Using Large Language Models for Automatic Algebraic Model Discovery of Turbulence Closure
Yu Zhang, Kefeng Zheng, Fei Liu, Qingfu Zhang, Zhenkun Wang

TL;DR
This paper introduces AutoTurb, a novel framework leveraging large language models to automatically discover algebraic turbulence models that improve RANS predictions, demonstrating better accuracy and generalization over existing methods.
Contribution
The work presents a new LLM-based approach for automatic turbulence model discovery, integrating CFD data and evolutionary search to enhance turbulence closure modeling.
Findings
Discovered models improve Reynolds stress and velocity predictions.
Models generalize well across different flow configurations.
Outperforms existing algebraic models in accuracy and robustness.
Abstract
Symbolic regression (SR) methods have been extensively investigated to explore explicit algebraic Reynolds stress models (EARSM) for turbulence closure of Reynolds-averaged Navier-Stokes (RANS) equations. The deduced EARSM can be readily implemented in existing computational fluid dynamic (CFD) codes and promotes the identification of physically interpretable turbulence models. The existing SR methods, such as genetic programming, sparse regression, or artificial neural networks, require user-defined functional operators, a library of candidates, or complex optimization algorithms. In this work, a novel framework using LLMs to automatically discover algebraic expressions for correcting the RSM is proposed. The direct observation of Reynolds stress and the indirect output of the CFD simulation are both involved in the training process to guarantee data consistency and avoid numerical…
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Taxonomy
TopicsModeling, Simulation, and Optimization · Simulation Techniques and Applications · Reservoir Engineering and Simulation Methods
MethodsLib · Response Surface Methodology · Sparse Evolutionary Training
