Machine learning enhanced Hankel dynamic-mode decomposition

被引:2
|
作者
Curtis, Christopher W. [1 ]
Alford-Lago, D. Jay [1 ,2 ]
Bollt, Erik [3 ,4 ]
Tuma, Andrew [1 ]
机构
[1] San Diego State Univ, Dept Math & Stat, San Diego, CA 92182 USA
[2] Naval Informat Warfare Ctr Pacific, San Diego, CA 92152 USA
[3] Clarkson Univ, Dept Elect & Comp Engn, 8 Clarkson Ave,Potsdam, New York, NY 13699 USA
[4] Clarkson Univ, Clarkson Ctr Complex Syst Sci, 8 Clarkson Ave,Potsdam, New York, NY 13699 USA
基金
美国国家卫生研究院;
关键词
D O I
10.1063/5.0150689
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
While the acquisition of time series has become more straightforward, developing dynamical models from time series is still a challenging and evolving problem domain. Within the last several years, to address this problem, there has been a merging of machine learning tools with what is called the dynamic-mode decomposition (DMD). This general approach has been shown to be an especially promising avenue for accurate model development. Building on this prior body of work, we develop a deep learning DMD based method, which makes use of the fundamental insight of Takens' embedding theorem to build an adaptive learning scheme that better approximates higher dimensional and chaotic dynamics. We call this method the Deep Learning Hankel DMD. We likewise explore how our method learns mappings, which tend, after successful training, to significantly change the mutual information between dimensions in the dynamics. This appears to be a key feature in enhancing DMD overall, and it should help provide further insight into developing other deep learning methods for time series analysis and model generation.
引用
收藏
页数:18
相关论文
共 50 条
  • [1] Dynamic-mode decomposition and optimal prediction
    Curtis, Christopher W.
    Alford-Lago, Daniel Jay
    [J]. PHYSICAL REVIEW E, 2021, 103 (01)
  • [2] A machine learning enhanced empirical mode decomposition
    Looney, D.
    Mandic, D. P.
    [J]. 2008 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING, VOLS 1-12, 2008, : 1897 - 1900
  • [3] Deep learning enhanced dynamic mode decomposition
    Alford-Lago, D. J.
    Curtis, C. W.
    Ihler, A. T.
    Issan, O.
    [J]. CHAOS, 2022, 32 (03)
  • [4] Data-Efficient Model Learning for Control with Jacobian-Regularized Dynamic-Mode Decomposition
    Jackson, Brian E.
    Lee, Jeong Hun
    Tracy, Kevin
    Manchester, Zachary
    [J]. arXiv, 2022,
  • [5] New method for dynamic mode decomposition of flows over moving structures based on machine learning (hybrid dynamic mode decomposition)
    Naderi, Mohammad Hossein
    Eivazi, Hamidreza
    Esfahanian, Vahid
    [J]. PHYSICS OF FLUIDS, 2019, 31 (12)
  • [6] Characterizing coherent structures in Bose-Einstein condensates through dynamic-mode decomposition
    Curtis, Christopher W.
    Carretero-Gonzalez, R.
    Polimeno, Matteo
    [J]. PHYSICAL REVIEW E, 2019, 99 (06):
  • [7] Detection of functional communities in networks of randomly coupled oscillators using the dynamic-mode decomposition
    Curtis, Christopher W.
    Porter, Mason A.
    [J]. PHYSICAL REVIEW E, 2021, 104 (04)
  • [8] Enhanced photoacoustic signal processing using empirical mode decomposition and machine learning
    Balci, Zekeriya
    Mert, Ahmet
    [J]. NONDESTRUCTIVE TESTING AND EVALUATION, 2024,
  • [9] DYNAMIC-MODE LSF MEASUREMENTS FOR THE SCINTILLATION CAMERA
    KASAL, B
    POPOVIC, S
    [J]. EUROPEAN JOURNAL OF NUCLEAR MEDICINE, 1981, 6 (10): : 459 - 460
  • [10] MEASURING MILK GELIFICATION BY MEANS OF AN INSTRON UNIVERSAL TESTING MACHINE OPERATING IN DYNAMIC-MODE
    MASI, P
    ACIERNO, D
    ADDEO, F
    [J]. JOURNAL OF TEXTURE STUDIES, 1988, 19 (02) : 161 - 170