A deep learning framework for aerodynamic pressure prediction on general three-dimensional configurations

被引:13
|
作者
Shen, Yang [1 ]
Huang, Wei [1 ]
Wang, Zhen-guo [1 ]
Xu, Da-fu [2 ]
Liu, Chao-Yang [1 ]
机构
[1] Natl Univ Def Technol, Coll Aerosp Sci & Engn, Changsha 410073, Hunan, Peoples R China
[2] Aerosp Syst Engn Shanghai, Shanghai 201109, Peoples R China
关键词
DESIGN;
D O I
10.1063/5.0172437
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
In this paper, a deep learning framework is proposed for predicting aerodynamic pressure distributions in general three-dimensional configurations. Based on the PointNet++ structure, the proposed framework extracts shape features based on the geometric representation of point cloud, outputs pressure coefficients corresponding to locations, and is able to accept inputs of point clouds with different resolutions. By PointNet++, we mean that local and global features of three-dimensional configurations could be effectively extracted through a multi-level feature extraction structure. A parametric approach is utilized to generate 2000 different space shuttle three-dimensional shapes, and their flows at the hypersonic speed are solved by computational fluid dynamics (CFD) as a dataset to support the training of the deep learning. Within the dataset, accurate predictions of pressure and aerodynamic forces are demonstrated for 400 unseen testing shapes. Out of the dataset, geometries that are tested for generalizability include slender, waverider, spaceplane, Apollo capsule, lifting body, and rocket. Remarkably, the framework is capable of predicting pressure distributions and aerodynamic forces for the unseen, independently designed geometries of various types in near-real-time and near-CFD accuracy, proving its excellent applicability to general three-dimensional configurations.
引用
收藏
页数:17
相关论文
共 50 条
  • [41] Criminal psychology trend prediction based on deep learning algorithm and three-dimensional convolutional neural network
    Fan, Yan
    JOURNAL OF PSYCHOLOGY IN AFRICA, 2021, 31 (03) : 292 - 297
  • [42] Prediction of Three-Dimensional Dose Distributions with Deep Learning for Automatic Treatment Planning of Scanned Proton Therapy
    Montero, A. Barragan
    Huet-Dastarac, M.
    Teruel-Rivas, S.
    Souris, K.
    Nguyen, D.
    Jiang, S.
    Lee, J. A.
    Sterpin, E.
    MEDICAL PHYSICS, 2020, 47 (06) : E473 - E474
  • [43] Prediction of compressive mechanical properties of three-dimensional mesoscopic aluminium foam based on deep learning method
    Zhuang, Weimin
    Wang, Enming
    Zhang, Hailun
    MECHANICS OF MATERIALS, 2023, 182
  • [44] Prediction of three-dimensional flow characteristics for cylinders with wavy geometric disturbance using deep learning models
    Seo, Janghoon
    Yoon, Hyun Sik
    Hong, Seok Beom
    OCEAN ENGINEERING, 2024, 312
  • [45] Simulation of Supersonic Combustion in Three-Dimensional Configurations
    Keistler, P. G.
    Hassan, H. A.
    Xiao, X.
    JOURNAL OF PROPULSION AND POWER, 2009, 25 (06) : 1233 - 1239
  • [46] Particle acceleration in three-dimensional tearing configurations
    Nodes, C
    Birk, GT
    Lesch, H
    Schopper, R
    PHYSICS OF PLASMAS, 2003, 10 (03) : 835 - 844
  • [47] Automatic Transition Prediction for Three-Dimensional Aircraft Configurations Using the DLR TAU Code
    Krumbein, A.
    Krimmelbein, N.
    Schrauf, G.
    NEW RESULTS IN NUMERICAL AND EXPERIMENTAL FLUID MECHANICS VII, 2010, 112 : 101 - +
  • [48] Aspects of the Industrialization of Automatic Transition Prediction for Three-Dimensional Configurations with the eN-Method
    Krimmelbein, Normann
    Krumbein, Andreas
    Togiti, Vamshi
    NEW RESULTS IN NUMERICAL AND EXPERIMENTAL FLUID MECHANICS VIII, 2013, 121 : 533 - +
  • [49] Flow3DNet: A deep learning framework for efficient simulation of three-dimensional wing flow fields
    Zuo, Kuijun
    Ye, Zhengyin
    Yuan, Xianxu
    Zhang, Weiwei
    AEROSPACE SCIENCE AND TECHNOLOGY, 2025, 159
  • [50] A Three-Dimensional Deep Learning Framework for Human Behavior Analysis Using Range-Doppler Time Points
    Du, Hao
    Jin, Tian
    Song, Yongping
    Dai, Yongpeng
    Li, Meng
    IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2020, 17 (04) : 611 - 615