An Adaptive Multi-Fidelity Surrogate Model for Uncertainty Propagation Analysis

被引:0
|
作者
Xiao, Wei [1 ]
Shen, Yingying [1 ]
Zhao, Jiao [1 ]
Lv, Luogeng [1 ]
Chen, Jiangtao [1 ]
Zhao, Wei [1 ]
机构
[1] China Aerodynam Res & Dev Ctr, Mianyang 621000, Peoples R China
来源
APPLIED SCIENCES-BASEL | 2025年 / 15卷 / 06期
基金
中国国家自然科学基金;
关键词
adaptive sampling; multi-fidelity model; multi-dimensional correlated responses; machine learning; flow field reduction;
D O I
10.3390/app15063359
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
To quantify the uncertainties in multi-dimensional flow field correlated responses caused by uncertain model parameters, this paper presents an adaptive multi-fidelity model based on gappy proper orthogonal decomposition (Gappy-POD), which integrates the two conventional approaches for enhancing the efficiency of surrogate modeling, namely, multi-fidelity modeling and adaptive sampling algorithms. The challenges surrounding the selection of initial high-fidelity samples and the subsequent incremental augmentation of these samples are addressed. The k-means clustering algorithm is employed to identify locations within the parameter space for conducting high-fidelity simulations, leveraging insights gained from low-fidelity responses. An adaptive sampling criterion, leveraging the low-fidelity projection error derived from the Gappy-POD method, is implemented to progressively augment high-fidelity samples. The results demonstrate that the adaptive model consistently outperforms random sampling methods, highlighting its superiority in terms of accuracy and reliability, providing an efficient and reliable prediction model for uncertainty quantification.
引用
收藏
页数:19
相关论文
共 50 条
  • [41] Adaptive Objective Selection for Multi-Fidelity Optimization
    Akimoto, Youhei
    Shimizu, Takuma
    Yamaguchi, Takahiro
    PROCEEDINGS OF THE 2019 GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE (GECCO'19), 2019, : 880 - 888
  • [42] Multi-Fidelity Surrogate-Based Process Mapping with Uncertainty Quantification in Laser Directed Energy Deposition
    Menon, Nandana
    Mondal, Sudeepta
    Basak, Amrita
    MATERIALS, 2022, 15 (08)
  • [43] Leveraging deep reinforcement learning for design space exploration with multi-fidelity surrogate model
    Li, Haokun
    Wang, Ru
    Wang, Zuoxu
    Li, Guannan
    Wang, Guoxin
    Yan, Yan
    JOURNAL OF ENGINEERING DESIGN, 2024,
  • [44] MULTI-FIDELITY MODEL FUSION AND UNCERTAINTY QUANTIFICATION USING HIGH DIMENSIONAL MODEL REPRESENTATION
    Kubicek, Martin
    Mehta, Piyush M.
    Minisci, Edmondo
    Vasile, Massimiliano
    SPACEFLIGHT MECHANICS 2016, PTS I-IV, 2016, 158 : 1987 - 2002
  • [45] Multi-fidelity Co-Kriging surrogate model for ship hull form optimization
    Liu, Xinwang
    Zhao, Weiwen
    Wan, Decheng
    OCEAN ENGINEERING, 2022, 243
  • [46] A Multi-Fidelity Surrogate Optimization Method Based on Analytical Models
    Sendrea, Ricardo E.
    Zekios, Constantinos L.
    Georgakopoulos, Stavros, V
    2021 IEEE MTT-S INTERNATIONAL MICROWAVE SYMPOSIUM (IMS), 2021, : 70 - 73
  • [47] Multi-fidelity surrogate models for VPP aerodynamic input data
    Peart, Tanya
    Aubin, Nicolas
    Nava, Stefano
    Cater, John
    Norris, Stuart
    Journal of Sailing Technology, 2021, 6 (01): : 21 - 43
  • [48] A Novel Multi-Fidelity Surrogate for Efficient Turbine Design Optimization
    Wang, Qineng
    Song, Liming
    Guo, Zhendong
    Li, Jun
    Feng, Zhenping
    JOURNAL OF TURBOMACHINERY-TRANSACTIONS OF THE ASME, 2024, 146 (04):
  • [49] A BAYESIAN NEURAL NETWORK APPROACH TO MULTI-FIDELITY SURROGATE MODELING
    Kerleguer, Baptiste
    Cannamela, Claire
    Garnier, Josselin
    INTERNATIONAL JOURNAL FOR UNCERTAINTY QUANTIFICATION, 2024, 14 (01) : 43 - 60
  • [50] Multi-Fidelity Local Surrogate Model for Computationally Efficient Microwave Component Design Optimization
    Song, Yiran
    Cheng, Qingsha S.
    Koziel, Slawomir
    SENSORS, 2019, 19 (13)