Machine learning-accelerated aerodynamic inverse design

被引:8
作者
Shirvani, Ahmad [1 ]
Nili-Ahmadabadi, Mahdi [1 ]
Ha, Man Yeong [2 ]
机构
[1] Isfahan Univ Technol, Dept Mech Engn, Esfahan, Iran
[2] Pusan Natl Univ, Sch Mech Engn, Busan, South Korea
基金
新加坡国家研究基金会;
关键词
Machine learning; aerodynamic inverse design; data-driven acceleration; computational cost reduction; ARTIFICIAL NEURAL-NETWORK; SUPERRESOLUTION RECONSTRUCTION; HEAT-TRANSFER; OPTIMIZATION; MODELS;
D O I
10.1080/19942060.2023.2237611
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The computational cost of iterative design methods has been a challenge in aerodynamics. In this research, the data-driven acceleration of an iterative inverse design method was implemented to reduce its computational cost. Although iterative design methods are robust, a lot of unwanted data is generated during their intermediate stages. Inverse design methods rely on correcting an initial geometry based on a given target parameter distribution. The generated data during the early iterations of the inverse design was incorporated into two deep-learning models to accelerate target geometry attainment. The deep learning models were used to recognize the correlation between the pressure distribution and corresponding geometry as well as the meaningful changes of geometry and pressure distribution toward their targets. The deep learning models were validated in viscous and inviscid compressible flows for various benchmark aerodynamics problems. In conclusion, between 70 to 80% computational cost decrease was observed for online uses of the machine learning module with the inverse design algorithm. This approach suggests incorporating machine learning techniques into design algorithms by exploiting the intermediate data for further improvement of them. We draw a new interpretation of learning dynamic changes through consecutive iterations instead of typical time-dependent problems in the use of LSTM network.
引用
收藏
页数:30
相关论文
共 73 条
  • [1] Allender E, 1992, Kolmogorov complexity and computational complexity, P4, DOI 10.1007/978-3-642-77735-6_2
  • [2] What Size Net Gives Valid Generalization?
    Baum, Eric B.
    Haussler, David
    [J]. NEURAL COMPUTATION, 1989, 1 (01) : 151 - 160
  • [3] Bishop C M., 2006, Pattern recognition and machine learning, Vvol 4
  • [4] OCCAM RAZOR
    BLUMER, A
    EHRENFEUCHT, A
    HAUSSLER, D
    WARMUTH, MK
    [J]. INFORMATION PROCESSING LETTERS, 1987, 24 (06) : 377 - 380
  • [5] Chahine C., 2012, TURBO EXPO POWER LAN, DOI [https://doi.org/10.1115/GT2012-68358, DOI 10.1115/GT2012-68358]
  • [6] Data-driven rapid prediction model for aerodynamic force of high-speed train with arbitrary streamlined head
    Chen, Dawei
    Sun, Zhenxu
    Yao, Shuanbao
    Xu, Shengfeng
    Yin, Bo
    Guo, Dilong
    Yang, Guowei
    Ding, Sansan
    [J]. ENGINEERING APPLICATIONS OF COMPUTATIONAL FLUID MECHANICS, 2022, 16 (01) : 2190 - 2205
  • [7] Knowledge-based turbomachinery design system via a deep neural network and multi-output Gaussian process
    Chen, Junfeng
    Liu, Changxing
    Xuan, Liming
    Zhang, Zhenwei
    Zou, Zhengping
    [J]. KNOWLEDGE-BASED SYSTEMS, 2022, 252
  • [8] Inverse Design of Two-Dimensional Airfoils Using Conditional Generative Models and Surrogate Log-Likelihoods
    Chen, Qiuyi
    Wang, Jun
    Pope, Phillip
    Chen, Wei
    Fuge, Mark
    [J]. JOURNAL OF MECHANICAL DESIGN, 2022, 144 (02)
  • [9] Unstable unsteady aerodynamic modeling based on least squares support vector machines with general excitation
    Chen, Senlin
    Gao, Zhenghong
    Zhu, Xinqi
    Du, Yiming
    Pang, Chao
    [J]. CHINESE JOURNAL OF AERONAUTICS, 2020, 33 (10) : 2499 - 2509
  • [10] Artificial neural network models for heat transfer in the freeboard of a bubbling fluidised bed combustion system
    Doner, Nimeti
    Ciddi, Kerem
    Yalcin, Ibrahim Berk
    Sarivaz, Muhammed
    [J]. CASE STUDIES IN THERMAL ENGINEERING, 2023, 49