Machine Learning With Data Assimilation and Uncertainty Quantification for Dynamical Systems: A Review

被引:0
|
作者
Sibo Cheng [1 ]
César Quilodrán-Casas [1 ,2 ]
Said Ouala [3 ]
Alban Farchi [4 ]
Che Liu [1 ,2 ]
Pierre Tandeo [5 ,6 ]
Ronan Fablet [7 ,3 ]
Didier Lucor [8 ]
Bertrand Iooss [9 ,10 ,11 ]
Julien Brajard [12 ,13 ]
Dunhui Xiao [14 ]
Tijana Janjic [15 ]
Weiping Ding [7 ,16 ]
Yike Guo [7 ,1 ,17 ]
Alberto Carrassi [18 ]
Marc Bocquet [4 ]
Rossella Arcucci [1 ,2 ]
机构
[1] Institut de Mathématiques de Toulouse  11. France and SINCLAIR AI Lab
[2] the Sorbonne University
[3] Nansen Environmental and Remote Sensing Center (NERSC)
[4] the School of Mathematical Sciences, Tongji University
[5] the Mathematical Institute for Machine Learning and DataScience, KU Eichstaett-Ingolstadt
[6] the School of Information Science and Technology,Nantong University
[7] Department of Computer Science and Engineering, Hong Kong University of Science and Technology
[8] the Department of Physics and Astronomy “Augusto Righi”, University of Bologna
[9] Data Science Institute, Department of Computing, Imperial College London
[10] Department of Earth Science and Engineering, Imperial College London
[11] the IMT Atlantique, Lab-STICC, UMR CNRS 6285
[12] the CEREA, école des Ponts and EDF R&D
[13] the IMT Atlantique, Lab-STICC, UMR CNRS 6285,France and Odyssey
[14] RIKEN Center for Computational Science
[15] IEEE
[16] the Laboratoire Interdisciplinaire des Sciences du Numérique, CNRS, Paris-Saclay University
[17] the Electricité de France (EDF)
基金
中国国家自然科学基金; 英国工程与自然科学研究理事会; 中央高校基本科研业务费专项资金资助;
关键词
D O I
暂无
中图分类号
TP181 [自动推理、机器学习];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Data assimilation(DA) and uncertainty quantification(UQ) are extensively used in analysing and reducing error propagation in high-dimensional spatial-temporal dynamics. Typical applications span from computational fluid dynamics(CFD)t o geoscience and climate systems. Recently, much effort has been given in combining DA, UQ and machine learning(ML) techniques. These research efforts seek to address some critical challenges in high-dimensional dynamical systems, including but not limited to dynamical system identification, reduced order surrogate modelling, error covariance specification and model error correction. A large number of developed techniques and methodologies exhibit a broad applicability across numerous domains,resulting in the necessity for a comprehensive guide. This paper provides the first overview of state-of-the-art researches in this interdisciplinary field, covering a wide range of applications. This review is aimed at ML scientists who attempt to apply DA and UQ techniques to improve the accuracy and the interpretability of their models, but also at DA and UQ experts who intend to integrate cutting-edge ML approaches to their systems. Therefore,this article has a special focus on how ML methods can overcome the existing limits of DA and UQ, and vice versa. Some exciting perspectives of this rapidly developing research field are also discussed.
引用
收藏
页码:1361 / 1387
页数:27
相关论文
共 50 条
  • [31] Machine Learning in Nonlinear Dynamical Systems
    Roy, Sayan
    Rana, Debanjan
    [J]. RESONANCE-JOURNAL OF SCIENCE EDUCATION, 2021, 26 (07): : 953 - 970
  • [32] System of systems uncertainty quantification using machine learning techniques with smart grid application
    Raz, Ali K.
    Wood, Paul C.
    Mockus, Linas
    DeLaurentis, Daniel A.
    [J]. SYSTEMS ENGINEERING, 2020, 23 (06) : 770 - 782
  • [33] QUANTIFICATION MODEL UNCERTAINTY OF LABEL-FREE MACHINE LEARNING FOR MULTIDISCIPLINARY SYSTEMS ANALYSIS
    Li, Huiru
    Panchal, Jitesh H.
    Du, Xiaoping
    [J]. PROCEEDINGS OF ASME 2023 INTERNATIONAL DESIGN ENGINEERING TECHNICAL CONFERENCES AND COMPUTERS AND INFORMATION IN ENGINEERING CONFERENCE, IDETC-CIE2023, VOL 3B, 2023,
  • [34] Machine Learning in Measurement Part 2: Uncertainty Quantification
    Al Osman, Hussein
    Shirmohammadi, Shervin
    [J]. IEEE INSTRUMENTATION & MEASUREMENT MAGAZINE, 2021, 24 (03) : 23 - 27
  • [35] 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
  • [36] Uncertainty quantification of machine learning models: on conformal prediction
    Akpabio, Inimfon I.
    Savari, Serap A.
    [J]. JOURNAL OF MICRO-NANOPATTERNING MATERIALS AND METROLOGY-JM3, 2021, 20 (04):
  • [37] Machine Learning in Measurement Part 2: Uncertainty Quantification
    Al Osman, Hussein
    Shirmohammadi, Shervin
    [J]. IEEE Instrumentation and Measurement Magazine, 2021, 24 (03): : 23 - 27
  • [38] Machine learning the deuteron: new architectures and uncertainty quantification
    Sarmiento, J. Rozalen
    Keeble, J. W. T.
    Rios, A.
    [J]. EUROPEAN PHYSICAL JOURNAL PLUS, 2024, 139 (02):
  • [39] Efficient uncertainty quantification of dynamical systems with local nonlinearities and uncertainties
    Gaurav
    Wojtkiewicz, S. F.
    Johnson, E. A.
    [J]. PROBABILISTIC ENGINEERING MECHANICS, 2011, 26 (04) : 561 - 569
  • [40] Decision Support Modeling: Data Assimilation, Uncertainty Quantification, and Strategic Abstraction
    Doherty, John
    Moore, Catherine
    [J]. GROUNDWATER, 2020, 58 (03) : 327 - 337