Recurrent neural networks for dynamical systems: Applications to ordinary differential equations, collective motion, and hydrological modeling

被引:9
|
作者
Gajamannage, K. [1 ]
Jayathilake, D. I. [2 ]
Park, Y. [1 ]
Bollt, E. M. [3 ,4 ]
机构
[1] Texas A&M Univ Corpus Christi, Dept Math & Stat, Corpus Christi, TX 78412 USA
[2] Texas A&M Univ Corpus Christi, Dept Phys & Environm Sci, Corpus Christi, TX 78412 USA
[3] Clarkson Univ, Dept Elect & Comp Engn, Potsdam, NY 13699 USA
[4] Clarkson Univ, Clarkson Ctr Complex Syst, Potsdam, NY 13699 USA
基金
美国国家卫生研究院;
关键词
DIMENSIONALITY REDUCTION; BACKPROPAGATION; TIME;
D O I
10.1063/5.0088748
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Classical methods of solving spatiotemporal dynamical systems include statistical approaches such as autoregressive integrated moving aver-age, which assume linear and stationary relationships between systems' previous outputs. Development and implementation of linear methods are relatively simple, but they often do not capture non-linear relationships in the data. Thus, artificial neural networks (ANNs) are receiving attention from researchers in analyzing and forecasting dynamical systems. Recurrent neural networks (RNNs), derived from feed-forward ANNs, use internal memory to process variable-length sequences of inputs. This allows RNNs to be applicable for finding solutions for a vast variety of problems in spatiotemporal dynamical systems. Thus, in this paper, we utilize RNNs to treat some specific issues associated with dynamical systems. Specifically, we analyze the performance of RNNs applied to three tasks: reconstruction of correct Lorenz solutions for a system with a formulation error, reconstruction of corrupted collective motion trajectories, and forecasting of streamflow time series possess-ing spikes, representing three fields, namely, ordinary differential equations, collective motion, and hydrological modeling, respectively. We train and test RNNs uniquely in each task to demonstrate the broad applicability of RNNs in the reconstruction and forecasting the dynamics of dynamical systems.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Artificial neural networks for solving ordinary and partial differential equations
    Lagaris, IE
    Likas, A
    Fotiadis, DI
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 1998, 9 (05): : 987 - 1000
  • [22] Solving Nonlinear Ordinary Differential Equations Using Neural Networks
    Parapari, Hamed Fathalizadeh
    Menhaj, MohammadBagher
    2016 4TH INTERNATIONAL CONFERENCE ON CONTROL, INSTRUMENTATION, AND AUTOMATION (ICCIA), 2016, : 351 - 355
  • [23] Solving Ordinary Differential Equations Using Wavelet Neural Networks
    Tan, Lee Sen
    Zainuddin, Zarita
    Ong, Pauline
    PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON MATHEMATICAL SCIENCES AND TECHNOLOGY 2018 (MATHTECH 2018): INNOVATIVE TECHNOLOGIES FOR MATHEMATICS & MATHEMATICS FOR TECHNOLOGICAL INNOVATION, 2019, 2184
  • [24] On the applications of neural ordinary differential equations in medical image analysis
    Niu, Hao
    Zhou, Yuxiang
    Yan, Xiaohao
    Wu, Jun
    Shen, Yuncheng
    Yi, Zhang
    Hu, Junjie
    ARTIFICIAL INTELLIGENCE REVIEW, 2024, 57 (09)
  • [25] Input-to-State Stable Neural Ordinary Differential Equations with Applications to Transient Modeling of Circuits
    Yang, Alan
    Xiong, Jie
    Raginsky, Maxim
    Rosenbaum, Elyse
    LEARNING FOR DYNAMICS AND CONTROL CONFERENCE, VOL 168, 2022, 168
  • [26] Incremental data modeling based on neural ordinary differential equations
    Chen, Zhang
    Bian, Hanlin
    Zhu, Wei
    COMPLEX & INTELLIGENT SYSTEMS, 2025, 11 (03)
  • [27] A set of ordinary differential equations of motion for constrained mechanical systems
    S. Natsiavas
    E. Paraskevopoulos
    Nonlinear Dynamics, 2015, 79 : 1911 - 1938
  • [28] A set of ordinary differential equations of motion for constrained mechanical systems
    Natsiavas, S.
    Paraskevopoulos, E.
    NONLINEAR DYNAMICS, 2015, 79 (03) : 1911 - 1938
  • [29] Neural modal ordinary differential equations: Integrating physics-based modeling with neural ordinary differential equations for modeling high-dimensional monitored structures
    Lai, Zhilu
    Liu, Wei
    Jian, Xudong
    Bacsa, Kiran
    Sun, Limin
    Chatzi, Eleni
    DATA-CENTRIC ENGINEERING, 2022, 3 (01):
  • [30] Transition to chaos in nonlinear dynamical systems described by ordinary differential equations
    N. A. Magnitskii
    S. V. Sidorov
    Computational Mathematics and Modeling, 2007, 18 (2) : 128 - 147