Using machine-learning modeling to understand macroscopic dynamics in a system of coupled maps

被引:3
|
作者
Borra, Francesco [1 ]
Baldovin, Marco [1 ]
机构
[1] Sapienza Univ Roma, Dipartimento Fis, Ple A Moro 5, I-00185 Rome, Italy
关键词
CHAOS; NETWORKS; LAW;
D O I
10.1063/5.0036809
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Machine-learning techniques not only offer efficient tools for modeling dynamical systems from data but can also be employed as frontline investigative instruments for the underlying physics. Nontrivial information about the original dynamics, which would otherwise require sophisticated ad hoc techniques, can be obtained by a careful usage of such methods. To illustrate this point, we consider as a case study the macroscopic motion emerging from a system of globally coupled maps. We build a coarse-grained Markov process for the macroscopic dynamics both with a machine-learning approach and with a direct numerical computation of the transition probability of the coarse-grained process, and we compare the outcomes of the two analyses. Our purpose is twofold: on the one hand, we want to test the ability of the stochastic machine-learning approach to describe nontrivial evolution laws as the one considered in our study. On the other hand, we aim to gain some insight into the physics of the macroscopic dynamics. By modulating the information available to the network, we are able to infer important information about the effective dimension of the attractor, the persistence of memory effects, and the multiscale structure of the dynamics.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Macroscopic Traffic Modeling Using Probe Vehicle Data: A Machine Learning Approach
    Ling Jin
    Xiaodan Xu
    Yuhan Wang
    Alina Lazar
    Kaveh Farokhi Sadabadi
    C. Anna Spurlock
    Zachary Needell
    Duleep Rathgamage Don
    Mahyar Amirgholy
    Mona Asudegi
    Data Science for Transportation, 2024, 6 (3):
  • [22] Interactive Reconstructive Student Modeling: A Machine-Learning Approach
    International Journal of Human-Computer Interaction, 7 (04):
  • [23] Twofold Machine-Learning and Molecular Dynamics: A Computational Framework
    Stavrogiannis, Christos
    Sofos, Filippos
    Sagri, Maria
    Vavougios, Denis
    Karakasidis, Theodoros E.
    COMPUTERS, 2024, 13 (01)
  • [24] Machine-Learning Modeling of Elemental Ferroelectric Bismuth Monolayer
    Zhang, Yanxing
    Ouyang, Xinjian
    Fang, Dangqi
    Hu, Shaojie
    Liu, Laijun
    Wang, Dawei
    PHYSICAL REVIEW LETTERS, 2024, 133 (26)
  • [25] Machine-Learning Modeling of Asphalt Crack Treatment Effectiveness
    Huang, Zhenhua
    Manzo, Maurizio
    Cai, Liping
    JOURNAL OF TRANSPORTATION ENGINEERING PART B-PAVEMENTS, 2021, 147 (02)
  • [26] Estimation of traffic dynamics models with machine-learning methods
    Antoniou, Constantinos
    Koutsopoulos, Haris N.
    TRAFFIC FLOW THEORY 2006, 2006, (1965): : 103 - 111
  • [27] A machine-learning based approach to estimate acoustic macroscopic parameters of porous concrete
    Pereira, Luis
    Godinho, Luis
    Branco, Fernando G.
    Oliveira, Paulo da Venda
    CONSTRUCTION AND BUILDING MATERIALS, 2024, 426
  • [28] Kinetic solubility: Experimental and machine-learning modeling perspectives
    Baybekov, Shamkhal
    Llompart, Pierre
    Marcou, Gilles
    Gizzi, Patrick
    Galzi, Jean-Luc
    Ramos, Pascal
    Saurel, Olivier
    Bourban, Claire
    Minoletti, Claire
    Varnek, Alexandre
    MOLECULAR INFORMATICS, 2024, 43 (02)
  • [29] Interactive reconstructive student modeling: A machine-learning approach
    Mitrovic, A
    DjordjevicKajan, S
    INTERNATIONAL JOURNAL OF HUMAN-COMPUTER INTERACTION, 1995, 7 (04) : 385 - 401
  • [30] An iterative machine-learning framework for RANS turbulence modeling
    Liu, Weishuo
    Fang, Jian
    Rolfo, Stefano
    Moulinec, Charles
    Emerson, David R.
    INTERNATIONAL JOURNAL OF HEAT AND FLUID FLOW, 2021, 90