Predicting extreme events in a data-driven model of turbulent shear flow using an atlas of charts

被引:2
|
作者
Fox A.J. [1 ]
Ricardo Constante-Amores C. [1 ]
Graham M.D. [1 ]
机构
[1] Department of Chemical and Biological Engineering, University of Wisconsin-Madison, Madison, 53706, WI
关键词
Dynamic mode decomposition - Forecasting - Graphic methods - Learning systems - Shear flow;
D O I
10.1103/PhysRevFluids.8.094401
中图分类号
O35 [流体力学];
学科分类号
080103 ; 080704 ;
摘要
Dynamical systems with extreme events are difficult to capture with data-driven modeling due to the relative scarcity of data within extreme events compared to the typical dynamics of the system and the strong dependence of the long-time occurrence of extreme events on short-time conditions. A recently developed technique [D. Floryan and M. D. Graham, Nat. Mach. Intell. 4, 1113 (2022)2522-583910.1038/s42256-022-00575-4], here denoted as Charts and Atlases for Nonlinear Data-Driven Dynamics on Manifolds, or CANDyMan, overcomes these difficulties by decomposing the time series into separate charts based on data similarity, learning dynamical models on each chart via individual time-mapping neural networks, then stitching the charts together to create a single atlas to yield a global dynamical model. We apply CANDyMan to a nine-dimensional model of turbulent shear flow between infinite parallel free-slip walls under a sinusoidal body force [J. Moehlis, H. Faisst, and B. Eckhardt, New J. Phys. 6, 56 (2004)1367-263010.1088/1367-2630/6/1/056], which undergoes extreme events in the form of intermittent quasi-laminarization and long-time full laminarization. The multichart model created by the CANDyMan technique is compared with both a standard data-driven model (i.e., the "single-chart"limit of the CANDyMan method) and a Koopman-based model created through extended dynamic mode decomposition-dictionary learning. We demonstrate that the CANDyMan method allows the trained dynamical models to more accurately forecast the evolution of the model coefficients than both a single-chart model and a Koopman model, reducing the error in the predictions as the model evolves forward in time. The technique exhibits more accurate predictions of extreme events than either a single-chart model or Koopman model, capturing the frequency of quasi-laminarization events and predicting the time until full laminarization more accurately than a single neural network. © 2023 American Physical Society.
引用
收藏
相关论文
共 50 条
  • [21] A data-driven quasi-linear approximation for turbulent channel flow
    Holford, Jacob J.
    Lee, Myoungkyu
    Hwang, Yongyun
    JOURNAL OF FLUID MECHANICS, 2024, 980
  • [22] Data-driven estimations of Standard Model backgrounds to SUSY searches in ATLAS
    Legger, F.
    SUPERSYMMETRY AND THE UNIFICATION OF FUNDAMENTAL INTERACTIONS, 2008, 1078 : 283 - 285
  • [23] A data-driven Reynolds-number-dependent model for turbulent mean flow prediction in circular jets
    Li, Zhiyang
    He, Chuangxin
    Liu, Yingzheng
    PHYSICS OF FLUIDS, 2023, 35 (08)
  • [24] Data-driven digital twin model for predicting grinding force
    Qi, B.
    Park, H-S
    MODTECH INTERNATIONAL CONFERENCE - MODERN TECHNOLOGIES IN INDUSTRIAL ENGINEERING VIII, 2020, 916
  • [25] Data-driven model for predicting production periods in the SAGD process
    Huang, Ziteng
    Yang, Min
    Yang, Bo
    Liu, Wei
    Chen, Zhangxin
    PETROLEUM, 2022, 8 (03) : 363 - 374
  • [26] Data-driven model for predicting production periods in the SAGD process
    Ziteng Huang
    Min Yang
    Bo Yang
    Wei Liu
    Zhangxin Chen
    Petroleum, 2022, (03) : 363 - 374
  • [27] A data-driven statistical model for predicting the critical temperature of a superconductor
    Hamidieh, Kam
    COMPUTATIONAL MATERIALS SCIENCE, 2018, 154 : 346 - 354
  • [28] Data-driven turbulence model for unsteady cavitating flow
    Zhang, Zhen
    Wang, Jingzhu
    Huang, Renfang
    Qiu, Rundi
    Chu, Xuesen
    Ye, Shuran
    Wang, Yiwei
    Liu, Qingkuan
    PHYSICS OF FLUIDS, 2023, 35 (01)
  • [29] Optimizing elderly care: a data-driven AI model for predicting polypharmacy risk using SHARE data
    Elsayed, A. Elhosseiny
    Eldawlatly, S.
    Ramadan, E.
    Boersch-Supan, A.
    Salama, M.
    EUROPEAN JOURNAL OF PUBLIC HEALTH, 2024, 34
  • [30] Uncertainty quantification of wall shear stress in intracranial aneurysms using a data-driven statistical model of systemic blood flow variability
    Sarrami-Foroushani, Ali
    Lassila, Toni
    Gooya, Ali
    Geers, Arjan J.
    Frangi, Alejandro F.
    JOURNAL OF BIOMECHANICS, 2016, 49 (16) : 3815 - 3823