Multi-fidelity information fusion based on prediction of kriging

被引:0
|
作者
Huachao Dong
Baowei Song
Peng Wang
Shuai Huang
机构
[1] Northwestern Polytechnical University,College of Marine Science and Technology
关键词
Multi-fidelity; Kriging-based model; Surrogate model; Information fusion; Model uncertainty;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, a novel kriging-based multi-fidelity method is proposed. Firstly, the model uncertainty of low-fidelity and high-fidelity models is quantified. On the other hand, the prediction uncertainty of kriging-based surrogate models(SM) is confirmed by its mean square error. After that, the integral uncertainty is acquired by math modeling. Meanwhile, the SMs are constructed through data from low-fidelity and high-fidelity models. Eventually, the low-fidelity (LF) and high-fidelity (HF) SMs with integral uncertainty are obtained and a proposed fusion algorithm is implemented. The fusion algorithm refers to the Kalman filter’s idea of optimal estimation to utilize the independent information from different models synthetically. Through several mathematical examples implemented, the fused SM is certified that its variance is decreased and the fused results tend to the true value. In addition, an engineering example about autonomous underwater vehicles’ hull design is provided to prove the feasibility of this proposed multi-fidelity method in practice. In the future, it will be a helpful tool to deal with reliability optimization of black-box problems and potentially applied in multidisciplinary design optimization.
引用
收藏
页码:1267 / 1280
页数:13
相关论文
共 50 条
  • [41] A combined modeling method for complex multi-fidelity data fusion
    Tang, Lei
    Liu, Feng
    Wu, Anping
    Li, Yubo
    Jiang, Wanqiu
    Wang, Qingfeng
    Huang, Jun
    [J]. MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2024, 5 (03):
  • [42] TOPSIS based multi-fidelity Co-Kriging for multiple response prediction of structures with uncertainties through real-time hybrid simulation
    Chen, Cheng
    Ran, Desheng
    Yang, Yanlin
    Hou, Hetao
    Peng, Changle
    [J]. ENGINEERING STRUCTURES, 2023, 280
  • [43] Coupling multi-fidelity kriging and model-order reduction for the construction of virtual charts
    Stéphane Nachar
    Pierre-Alain Boucard
    David Néron
    Felipe Bordeu
    [J]. Computational Mechanics, 2019, 64 : 1685 - 1697
  • [44] Multi-fidelity Co-Kriging surrogate model for ship hull form optimization
    Liu, Xinwang
    Zhao, Weiwen
    Wan, Decheng
    [J]. OCEAN ENGINEERING, 2022, 243
  • [45] Enhanced multi-fidelity model for flight simulation using global exploration and the Kriging method
    Lee, Daeyeon
    Nhu Van Nguyen
    Tyan, Maxim
    Chun, Hyung-Geun
    Kim, Sangho
    Lee, Jae-Woo
    [J]. PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART G-JOURNAL OF AEROSPACE ENGINEERING, 2017, 231 (04) : 606 - 620
  • [46] A maximum cost-performance sampling strategy for multi-fidelity PC-Kriging
    Ren, Chengkun
    Xiong, Fenfen
    Wang, Fenggang
    Mo, Bo
    Hu, Zhangli
    [J]. STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2021, 64 (06) : 3381 - 3399
  • [47] A maximum cost-performance sampling strategy for multi-fidelity PC-Kriging
    Chengkun Ren
    Fenfen Xiong
    Fenggang Wang
    Bo Mo
    Zhangli Hu
    [J]. Structural and Multidisciplinary Optimization, 2021, 64 : 3381 - 3399
  • [48] Adaptive infill sampling criterion for multi-fidelity gradient-enhanced kriging model
    Peng Hao
    Shaojun Feng
    Yuwei Li
    Bo Wang
    Huihan Chen
    [J]. Structural and Multidisciplinary Optimization, 2020, 62 : 353 - 373
  • [49] Adaptive infill sampling criterion for multi-fidelity gradient-enhanced kriging model
    Hao, Peng
    Feng, Shaojun
    Li, Yuwei
    Wang, Bo
    Chen, Huihan
    [J]. STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2020, 62 (01) : 353 - 373
  • [50] Coupling multi-fidelity kriging and model-order reduction for the construction of virtual charts
    Nachar, Stephane
    Boucard, Pierre-Alain
    Neron, David
    Bordeu, Felipe
    [J]. COMPUTATIONAL MECHANICS, 2019, 64 (06) : 1685 - 1697