MFNets: MULTI-FIDELITY DATA-DRIVEN NETWORKS FOR BAYESIAN LEARNING AND PREDICTION

被引:19
作者
Gorodetsky, Alex A. [1 ]
Jakeman, John D. [1 ]
Geraci, Gianluca [1 ]
Eldred, Michael S. [1 ]
机构
[1] Sandia Natl Labs, Optimizat & Uncertainty Quantificat, Albuquerque, NM 87123 USA
关键词
machine learning; Bayesian network; multifidelity modeling; regression; uncertainty quantification; control-variate Monte Carlo; multilevel Monte Carlo; co-kriging; STOCHASTIC COLLOCATION; OPTIMIZATION; EFFICIENCY; INFERENCE;
D O I
10.1615/Int.J.UncertaintyQuantification.2020032978
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This paper presents a Bayesian multifidelity uncertainty quantification framework, called MFNets, which can be used to overcome three of the major challenges that arise when data from different sources are used to enhance statistical estimation and prediction with quantified uncertainty. Specifically, we demonstrate that MFNets can (1) fuse hetero-geneous data sources arising from simulations with different parameterizations, e.g., simulation models with different uncertain parameters or data sets collected under different environmental conditions; (2) encode known relationships among data sources to reduce data requirements; and (3) improve the robustness of existing multifidelity approaches to corrupted data. In this paper we use MFNets to construct linear-subspace surrogates and estimate statistics using Monte Carlo sampling. In addition to numerical examples highlighting the efficacy of MFNets we also provide a number of theoretical results. Firstly we provide a mechanism to assess the quality of the posterior mean of a MFNets Monte Carlo estimator as a frequentist estimator. We then use this result to compare MFNets estimators to existing single fidelity, multilevel, and control variate Monte Carlo estimators. In this context, we show that the Monte Carlo- based control variate estimator can be derived entirely from the use of Bayes rule and linear-Gaussian models to our knowledge the first such derivation. Finally, we demonstrate the ability to work with different uncertain parameters across different models.
引用
收藏
页码:595 / 622
页数:28
相关论文
共 50 条
  • [31] Data-driven prediction of tool wear using Bayesian regularized artificial neural networks
    Truong, Tam T.
    Airao, Jay
    Hojati, Faramarz
    Ilvig, Charlotte F.
    Azarhoushang, Bahman
    Karras, Panagiotis
    Aghababaei, Ramin
    [J]. MEASUREMENT, 2024, 238
  • [32] Improving RSW nugget diameter prediction method: unleashing the power of multi-fidelity neural networks and transfer learning
    Yue, Zhong-Jie
    Chen, Qiu-Ren
    Bao, Zu-Guo
    Huang, Li
    Tan, Guo-Bi
    Hou, Ze-Hong
    Li, Mu-Shi
    Huang, Shi-Yao
    Zhao, Hai-Long
    Kong, Jing-Yu
    Wang, Jia
    Liu, Qing
    [J]. ADVANCES IN MANUFACTURING, 2024, 12 (03) : 409 - 427
  • [33] Multi-Fidelity Aerodynamic Data Fusion with a Deep Neural Network Modeling Method
    He, Lei
    Qian, Weiqi
    Zhao, Tun
    Wang, Qing
    [J]. ENTROPY, 2020, 22 (09)
  • [34] A new adaptive multi-fidelity metamodel method using meta-learning and Bayesian deep learning
    Fenfen Xiong
    Chengkun Ren
    Bo Mo
    Chao Li
    Xiao Hu
    [J]. Structural and Multidisciplinary Optimization, 2023, 66
  • [35] Bayesian uncertainty quantification for data-driven equation learning
    Martina-Perez, Simon
    Simpson, Matthew J.
    Baker, Ruth E.
    [J]. PROCEEDINGS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2021, 477 (2254):
  • [36] Combining multi-fidelity modelling and asynchronous batch Bayesian Optimization
    Folch, Jose Pablo
    Lee, Robert M.
    Shafei, Behrang
    Walz, David
    Tsay, Calvin
    van der Wilk, Mark
    Misener, Ruth
    [J]. COMPUTERS & CHEMICAL ENGINEERING, 2023, 172
  • [37] Multi-fidelity Bayesian optimization to solve the inverse Stefan problem
    Winter, J. M.
    Abaidi, R.
    Kaiser, J. W. J.
    Adami, S.
    Adams, N. A.
    [J]. COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2023, 410
  • [38] Efficient Bayesian Parameter Inversion Facilitated by Multi-Fidelity Modeling
    Liu, Yaning
    [J]. APPLIED COMPUTATIONAL ELECTROMAGNETICS SOCIETY JOURNAL, 2019, 34 (02): : 369 - 372
  • [39] A Quantitative Noise Method to Evaluate Machine Learning Algorithm on Multi-Fidelity Data
    Liu X.
    Wang Z.
    Ouyang J.
    Yang T.
    [J]. Kuei Suan Jen Hsueh Pao/Journal of the Chinese Ceramic Society, 2023, 51 (02): : 405 - 410
  • [40] Multi-fidelity information fusion based on prediction of kriging
    Dong, Huachao
    Song, Baowei
    Wang, Peng
    Huang, Shuai
    [J]. STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2015, 51 (06) : 1267 - 1280