基于改进傅里叶神经算子的快速跨声速翼型流场预测模型

IF 7.5 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY
Weishao Tang, Chenyu Wu, Yunjia Yang, Yufei Zhang
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引用次数: 0

摘要

传统的气动优化与计算流体力学相结合,计算成本高。基于深度学习方法的代理模型可以从网格输入中快速预测流场,但往往精度和泛化性较差。提出了一种改进的傅里叶神经算子用于流场预测。与大多数基于卷积的模型不同,傅里叶神经算子直接在函数空间中学习解算子,提高了预测精度和可泛化性。该模型结合了一个浅层特征提取器、一个边界变量微调器和几个物理先验,包括初始流场和边界条件。该模型在均匀参数化代数网格上进行训练,以加快气动优化中网格的生成。验证集和测试集对流场和力系数的预测误差比之前的卷积模型降低了70% ~ 90%。该模型能够准确预测典型工况下的超临界翼型,在验证集上的阻力系数误差约为1,并且在外推入流条件和翼型方面优于以往基于卷积的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast transonic airfoil flow field prediction model based on a modified Fourier neural operator

Traditional aerodynamic optimization coupled with computational fluid dynamics is associated with a high computational cost. Surrogate models based on deep learning methods can rapidly predict flow fields from the grid input but often suffer from poor accuracy and generalizability. This study introduces a modified Fourier neural operator for flow field prediction. Unlike most convolution-based models, the Fourier neural operator learns the solution operator directly in the function space, enhancing predictive accuracy and generalizability. The proposed model incorporates a shallow feature extractor, a boundary variable fine-tuner, and several physical priors, including the initial flow field and boundary conditions. The model is trained on uniformly parameterized algebraic grids to accelerate grid generation in aerodynamic optimization. The prediction error for the flow field and force coefficients on the validation and test sets is reduced by 70% to 90% compared with that of the previous convolutional model. The proposed model can make precise predictions for supercritical airfoils under typical working conditions, with a drag coefficient error of approximately 1 drag count on the validation set, and generalizes better than previous convolution-based methods do on extrapolative inflow conditions and airfoils.

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来源期刊
Science China Physics, Mechanics & Astronomy
Science China Physics, Mechanics & Astronomy PHYSICS, MULTIDISCIPLINARY-
CiteScore
10.30
自引率
6.20%
发文量
4047
审稿时长
3 months
期刊介绍: Science China Physics, Mechanics & Astronomy, an academic journal cosponsored by the Chinese Academy of Sciences and the National Natural Science Foundation of China, and published by Science China Press, is committed to publishing high-quality, original results in both basic and applied research. Science China Physics, Mechanics & Astronomy, is published in both print and electronic forms. It is indexed by Science Citation Index. Categories of articles: Reviews summarize representative results and achievements in a particular topic or an area, comment on the current state of research, and advise on the research directions. The author’s own opinion and related discussion is requested. Research papers report on important original results in all areas of physics, mechanics and astronomy. Brief reports present short reports in a timely manner of the latest important results.
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