Session: 36-07 Machine Learning & Artificial Intelligence Methods - Part 2
Submission Number: 176759
Meta-PINNs: Meta-Learning Enhanced Physics-Informed Machine Learning Framework for Turbomachinery Flow Predictions Under Varying Operation Conditions
Coupling physics with machine learning models has shown great potential for solving fluid dynamics problems governed by partial differential equations. However, conventional methods, such as physics-informed neural networks, often suffer from slow convergence, unstable training, and limited generalization across different flow conditions. To overcome these challenges, this study proposes a novel meta-learning enhanced physics-informed neural networks (Meta-PINNs) framework, which integrates a meta-optimization strategy into the training process. The approach allows the model to automatically adapt its learning process to varying physical regimes, thereby substantially improving both training efficiency and predictive robustness. The proposed Meta-PINNs is evaluated on two representative flow problems: (1) unsteady flow around a circular cylinder at multiple inlet Reynolds numbers, and (2) unsteady flow within a compressor cascade passage at various angles of attack. In both cases, the extrapolation performance of the developed framework is comprehensively tested by predicting the flow fields at Reynolds numbers and angles of attack that are not included in the training set. The results demonstrate that Meta-PINNs achieve up to 90% improvement in accuracy over vanilla physics-informed neural networks and 93% over standard neural networks, while reducing computational cost by 96% and 78%, respectively. It successfully captures the sequential patterns of key flow features such as pressure and velocity distributions under unseen conditions. Thus, the findings confirm that the Meta-PINNs framework offers a notable improvement in convergence and generalization over existing machine learning approaches, providing a promising pathway toward smart simulations of complex turbomachinery flows.
Presenting Author: Yuling Han University of Liverpool
Presenting Author Biography: Yuling is a PhD student in the Department of Mechanical and Aerospace Engineering, School of Engineering, at the University of Liverpool. Her research focuses on developing advanced machine learning techniques to enhance numerical simulations of turbomachinery flows.
Authors:
Yuling Han University of LiverpoolZhihui Li University of Liverpool
Zhibin Yu University of Liverpool
Meta-PINNs: Meta-Learning Enhanced Physics-Informed Machine Learning Framework for Turbomachinery Flow Predictions Under Varying Operation Conditions
Paper Type
Technical Paper Publication