Towards an integrated machine-learning framework for model evaluation and uncertainty quantification

被引:7
|
作者
Buisson, Bertrand [1 ]
Lakehal, Djamel [1 ]
机构
[1] Poyry, Adv Modelling & Simulat, Zurich, Switzerland
关键词
Fluid flow simulation; Wall boiling; Data analytics; Digital Twin; Machine-learning; Data-driven models (DDM);
D O I
10.1016/j.nucengdes.2019.110197
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
We introduce a new paradigm for treating and exploiting simulation data, serving in parallel as an alternative workflow for model evaluation and uncertainty quantification. Instead of reporting simulations of base-case and specific variations scenarios, databases covering a wide spectrum of operational conditions are built by means of machine-learning using sophisticated mathematical algorithms. While the approach works for all sorts of computer-aided engineering applications, the present contribution addresses the CFD/CMFD sub-branch, with application to a widely used benchmark of convective flow boiling. In addition to comparing simulation and experimental results on a case-by-case basis, machine-learning is used to create their respective (CFD and experiment) data-driven models (DDM), which will in a later stage serve for assessing the predictive performance of the CFD models over a wider range of experimental conditions, hence providing a high-level classification of their range of applicability.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] An integrated machine-learning model to predict nucleosome architecture
    Sala, Alba
    Labrador, Mireia
    Buitrago, Diana
    De Jorge, Pau
    Battistini, Federica
    Heath, Isabelle Brun
    Orozco, Modesto
    [J]. NUCLEIC ACIDS RESEARCH, 2024, 52 (17) : 10132 - 10143
  • [2] Evaluation of machine learning techniques for forecast uncertainty quantification
    Sacco, Maximiliano A.
    Ruiz, Juan J.
    Pulido, Manuel
    Tandeo, Pierre
    [J]. QUARTERLY JOURNAL OF THE ROYAL METEOROLOGICAL SOCIETY, 2022, 148 (749) : 3470 - 3490
  • [3] AutonoML: Towards an Integrated Framework for Autonomous Machine Learning
    Kedziora, David Jacob
    Musial, Katarzyna
    Gabrys, Bogdan
    [J]. FOUNDATIONS AND TRENDS IN THEORETICAL COMPUTER SCIENCE, 2024, 17 (04): : 590 - 766
  • [4] Development of an integrated machine-learning and data assimilation framework for NOx emission inversion
    Chen, Yiang
    Fung, Jimmy C. H.
    Yuan, Dehao
    Chen, Wanying
    Fung, Tung
    Lu, Xingcheng
    [J]. SCIENCE OF THE TOTAL ENVIRONMENT, 2023, 871
  • [5] Addressing uncertainty in the safety assurance of machine-learning
    Burton, Simon
    Herd, Benjamin
    [J]. FRONTIERS IN COMPUTER SCIENCE, 2023, 5
  • [6] Uncertainty quantification in the machine-learning inference from neutron star probability distribution to the equation of state
    Fujimoto, Yuki
    Fukushima, Kenji
    Kamata, Syo
    Murase, Koichi
    [J]. PHYSICAL REVIEW D, 2024, 110 (03)
  • [7] An integrated machine-learning model for soil category classification based on CPT
    Bai, Ruihan
    Shen, Feng
    Zhang, Zhiping
    [J]. MULTISCALE AND MULTIDISCIPLINARY MODELING EXPERIMENTS AND DESIGN, 2024, 7 (03) : 2121 - 2146
  • [8] Machine Learning for Aerodynamic Uncertainty Quantification
    Liu, Dishi
    Maruyama, Daigo
    Goert, Stefan
    [J]. ERCIM NEWS, 2020, (122): : 20 - 21
  • [9] A machine-learning framework for isogeometric topology optimization
    Zhaohui Xia
    Haobo Zhang
    Ziao Zhuang
    Chen Yu
    Jingui Yu
    Liang Gao
    [J]. Structural and Multidisciplinary Optimization, 2023, 66
  • [10] A machine-learning framework for isogeometric topology optimization
    Xia, Zhaohui
    Zhang, Haobo
    Zhuang, Ziao
    Yu, Chen
    Yu, Jingui
    Gao, Liang
    [J]. STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2023, 66 (04)