翼型
跨音速
可压缩流
计算机科学
休克(循环)
算法
人工智能
物理
机械
空气动力学
压缩性
医学
内科学
作者
Zhiwen Deng,Jing Wang,Hongsheng Liu,Hairun Xie,BoKai Li,Miao Zhang,Tingmeng Jia,Yi Zhang,Zidong Wang,Bin Dong
出处
期刊:Physics of Fluids
[American Institute of Physics]
日期:2023-07-01
卷期号:35 (7)
被引量:23
摘要
The Reynolds-averaged Navier-Stokes equation for compressible flow over supercritical airfoils under various flow conditions must be rapidly and accurately solved to shorten design cycles for such airfoils. Although deep-learning methods can effectively predict flow fields, the accuracy of these predictions near sensitive regions and their generalizability to large-scale datasets in engineering applications must be enhanced. In this study, a modified vision transformer-based encoder-decoder network is designed for the prediction of transonic flow over supercritical airfoils. In addition, four methods are designed to encode the geometric input with various information points and the performances of these methods are compared. The statistical results show that these methods generate accurate predictions over the complete flow field, with a mean absolute error on the order of 1e-4. To increase accuracy near the shock area, multilevel wavelet transformation and gradient distribution losses are introduced into the loss function. This results in the maximum error that is typically observed near the shock area decreasing by 50%. Furthermore, the models are pretrained through transfer learning on large-scale datasets and finetuned on small datasets to improve their generalizability in engineering applications. The results generated by various pretrained models demonstrate that transfer learning yields a comparable accuracy from a reduced training time.
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