Affiliation:
1. National Key Laboratory of Helicopter Aeromechanics, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China
Abstract
Conventional methods for solving Navier–Stokes (NS) equations to analyze flow fields and aerodynamic forces of airfoils with trailing edge flaps (TEFs) are known for their significant time cost. This study presents a Multi-Task Swin Transformer (MT-Swin-T) deep learning framework tailored for swift prediction of velocity fields and aerodynamic coefficients of TEF-equipped airfoils. The proposed model combines a Swin Transformer (Swin-T) for flow field prediction with a multi-layer perceptron (MLP) dedicated to lift coefficient prediction. Both networks undergo gradient updates through the shared encoder component of the Swin Transformer. Such a trained network model for computational fluid dynamics simulations is both effective and robust, significantly improving the efficiency of complex aerodynamic shape design optimization and flow control. The study further investigates the impact of integrating multi-task learning loss functions, skip connections, and the network’s structural design on prediction accuracy. Additionally, the effectiveness of deep learning in improving the aerodynamic simulation efficiency of airfoils with TEF is examined. Results demonstrate that the multi-task deep learning approach provides accurate predictions for TEF airfoil flow fields and lift coefficients. The strategic combination of these tasks during network training, along with the optimal selection of loss functions, significantly enhances prediction accuracy compared with the single-task network. In a specific case study, the MT-Swin-T model demonstrated a prediction time that was 1/7214 of the time necessitated by CFD simulation.
Funder
Priority Academic Program Development of Jiangsu Higher Education Institutions (PAPD), National Key Laboratory Foundation
Reference30 articles.
1. Deep Neural Networks for Acoustic Modeling in Speech Recognition: The Shared Views of Four Research Groups;Hinton;IEEE Signal Process. Mag.,2012
2. Shafiq, M., and Gu, Z. (2022). Deep Residual Learning for Image Recognition: A Survey. Appl. Sci., 12.
3. Recent Advances in Natural Language Processing via Large Pre-Trained Language Models: A Survey;Min;ACM Comput. Surv.,2023
4. Ribeiro, M.D., Rehman, A., Ahmed, S., and Dengel, A. (2020). DeepCFD: Efficient Steady-State Laminar Flow Approximation with Deep Convolutional Neural Networks. arXiv.
5. Guo, X., Li, W., and Iorio, F. (2016, January 13–17). Convolutional Neural Networks for Steady Flow Approximation. Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, San Francisco, CA, USA.