A multi-fidelity surrogate model based on support vector regression

被引:1
|
作者
Maolin Shi
Liye Lv
Wei Sun
Xueguan Song
机构
[1] Dalian University of Technology,School of Mechanical Engineering
关键词
Multi-fidelity surrogate; Support vector regression; Simulation;
D O I
暂无
中图分类号
学科分类号
摘要
Computational simulations with different fidelities have been widely used in engineering design and optimization. A high-fidelity (HF) model is generally more accurate but also more time-consuming than the corresponding low-fidelity (LF) model. To take advantage of both HF and LF models, a number of multi-fidelity surrogate (MFS) models based on different surrogate models (e.g., Kriging, response surface, and radial basis function) have been developed, but MFS models based on support vector regression are rarely reported. In this paper, a new MFS model based on support vector regression, which is named Co_SVR, is developed. In the proposed method, the HF and LF samples are mapped into a high-dimensional feature space through a kernel function, and then, a linear model is utilized to evaluate the relationship between inputs and outputs. The root mean square error (RMSE) of HF responses of interest is used to express the training error of Co_SVR, and a heuristic algorithm, grey wolf optimizer, is used to obtain the optimal parameters. For verification, the Co_SVR model is compared with four popular multi-fidelity surrogate models and four single-fidelity surrogate models through a number of numerical cases and a pressure relief valve design problem. The results show that Co_SVR provides competitive performance in both numerical cases and the practical case. Moreover, the effects of key factors (i.e., the correlation between HF and LF models, the cost ratio of HF to LF models, and the combination of HF and LF samples) on the performance of Co_SVR are also explored.
引用
收藏
页码:2363 / 2375
页数:12
相关论文
共 50 条
  • [31] Multi-fidelity Surrogate Modelling of Wall Mounted Cubes
    Andrew Mole
    Alex Skillen
    Alistair Revell
    [J]. Flow, Turbulence and Combustion, 2023, 110 : 835 - 853
  • [32] A NOVEL MULTI-FIDELITY SURROGATE FOR TURBOMACHINERY DESIGN OPTIMIZATION
    Wang, Qineng
    Song, Liming
    Guo, Zhendong
    Li, Jun
    Feng, Zhenping
    [J]. PROCEEDINGS OF ASME TURBO EXPO 2023: TURBOMACHINERY TECHNICAL CONFERENCE AND EXPOSITION, GT2023, VOL 13D, 2023,
  • [33] Multi-fidelity Surrogate Modelling of Wall Mounted Cubes
    Mole, Andrew
    Skillen, Alex
    Revell, Alistair
    [J]. FLOW TURBULENCE AND COMBUSTION, 2023, 110 (04) : 835 - 853
  • [34] Multi-fidelity surrogate models for flutter database generation
    Rumpfkeil, Markus P.
    Beran, Philip
    [J]. COMPUTERS & FLUIDS, 2020, 197
  • [35] Multi-fidelity surrogate model-assisted fatigue analysis of welded joints
    Lili Zhang
    Seung-Kyum Choi
    Tingli Xie
    Ping Jiang
    Jiexiang Hu
    Jasuk Koo
    [J]. Structural and Multidisciplinary Optimization, 2021, 63 : 2771 - 2787
  • [36] Multi-fidelity surrogate modeling for structural acoustics applications
    Bonomo, Anthony L.
    [J]. JOURNAL OF THE ACOUSTICAL SOCIETY OF AMERICA, 2023, 153 (03):
  • [37] Multi-fidelity deep neural network surrogate model for aerodynamic shape optimization
    Zhang, Xinshuai
    Xie, Fangfang
    Ji, Tingwei
    Zhu, Zaoxu
    Zheng, Yao
    [J]. COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 373
  • [38] Multi-fidelity surrogate model-assisted fatigue analysis of welded joints
    Zhang, Lili
    Choi, Seung-Kyum
    Xie, Tingli
    Jiang, Ping
    Hu, Jiexiang
    Koo, Jasuk
    [J]. STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2021, 63 (06) : 2771 - 2787
  • [39] Multi-fidelity reduced-order surrogate modelling
    Conti, Paolo
    Guo, Mengwu
    Manzoni, Andrea
    Frangi, Attilio
    Brunton, Steven L.
    Kutz, J. Nathan
    [J]. PROCEEDINGS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2024, 480 (2283):
  • [40] Multi-fidelity deep neural network surrogate model for aerodynamic shape optimization
    Zhang, Xinshuai
    Xie, Fangfang
    Ji, Tingwei
    Zhu, Zaoxu
    Zheng, Yao
    [J]. Computer Methods in Applied Mechanics and Engineering, 2021, 373