Recurrent neural networks and Koopman-based frameworks for temporal predictions in a low-order model of turbulence

被引:53
|
作者
Eivazi, Hamidreza [1 ]
Guastoni, Luca [2 ,3 ]
Schlatter, Philipp [2 ,3 ]
Azizpour, Hossein [3 ,4 ]
Vinuesa, Ricardo [2 ,3 ]
机构
[1] Univ Tehran, Fac New Sci & Technol, Tehran, Iran
[2] KTH Royal Inst Technol, SimEx FLOW, Engn Mech, SE-10044 Stockholm, Sweden
[3] Swedish E Sci Res Ctr SeRC, Stockholm, Sweden
[4] KTH Royal Inst Technol, Sch EECS, Div Robot Percept & Learning, Stockholm, Sweden
关键词
Dynamical systems; Machine learning; Data-driven modeling; Recurrent neural networks; Koopman operator; SPECTRAL PROPERTIES; DYNAMICAL-SYSTEMS; DECOMPOSITION; FLOWS;
D O I
10.1016/j.ijheatfluidflow.2021.108816
中图分类号
O414.1 [热力学];
学科分类号
摘要
The capabilities of recurrent neural networks and Koopman-based frameworks are assessed in the prediction of temporal dynamics of the low-order model of near-wall turbulence by Moehlis et al. (New J. Phys. 6, 56, 2004). Our results show that it is possible to obtain excellent reproductions of the long-term statistics and the dynamic behavior of the chaotic system with properly trained long-short-term memory (LSTM) networks, leading to relative errors in the mean and the fluctuations below 1%. Besides, a newly developed Koopman-based framework, called Koopman with nonlinear forcing (KNF), leads to the same level of accuracy in the statistics at a significantly lower computational expense. Furthermore, the KNF framework outperforms the LSTM network when it comes to short-term predictions. We also observe that using a loss function based only on the instantaneous predictions of the chaotic system can lead to suboptimal reproductions in terms of long-term statistics. Thus, we propose a model-selection criterion based on the computed statistics which allows to achieve excellent statistical reconstruction even on small datasets, with minimal loss of accuracy in the instantaneous predictions.
引用
收藏
页数:14
相关论文
共 37 条
  • [31] Adaptive sliding-mode observer for second order discrete-time MIMO nonlinear systems based on recurrent neural-networks
    Salgado, Ivan
    Ahmed, Hafiz
    Camacho, Oscar
    Chairez, Isaac
    INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS, 2019, 10 (10) : 2851 - 2866
  • [32] A Novel Identification-Based Convex Control Scheme via Recurrent High-Order Neural Networks: An Application to the Internal Combustion Engine
    Armenta, Carlos
    Laurain, Thomas
    Estrada-Manzo, Victor
    Bernal, Miguel
    NEURAL PROCESSING LETTERS, 2020, 51 (01) : 303 - 324
  • [33] A Novel Identification-Based Convex Control Scheme via Recurrent High-Order Neural Networks: An Application to the Internal Combustion Engine
    Carlos Armenta
    Thomas Laurain
    Víctor Estrada-Manzo
    Miguel Bernal
    Neural Processing Letters, 2020, 51 : 303 - 324
  • [34] Numerical Assessment of a Nonintrusive Surrogate Model Based on Recurrent Neural Networks and Proper Orthogonal Decomposition: Rayleigh-Benard Convection
    Akbari, Saeed
    Pawar, Suraj
    San, Omer
    INTERNATIONAL JOURNAL OF COMPUTATIONAL FLUID DYNAMICS, 2022, 36 (07) : 599 - 617
  • [35] Relationships between fault friction, slip time, and physical parameters explored by experiment-based friction model: A machine learning approach using recurrent neural networks (RNNs)☆
    Uhmb, Tae-Hoon
    Hamada, Yohei
    Hirose, Takehiro
    APPLIED COMPUTING AND GEOSCIENCES, 2025, 25
  • [36] Real-time flashover prediction model for multi-compartment building structures using attention based recurrent neural networks
    Tam, Wai Cheong
    Fu, Eugene Yujun
    Li, Jiajia
    Peacock, Richard
    Reneke, Paul
    Ngai, Grace
    Leong, Hong Va
    Cleary, Thomas
    Huang, Michael Xuelin
    EXPERT SYSTEMS WITH APPLICATIONS, 2023, 223
  • [37] A robust interpolated model predictive control based on recurrent neural networks for a nonholonomic differential-drive mobile robot with quasi-LPV representation: computational complexity and conservatism
    Hadian, Mohsen
    Zhang, W. J.
    Etesami, Danial
    INTERNATIONAL JOURNAL OF SYSTEMS SCIENCE, 2024, 55 (15) : 3257 - 3271