Reconstructing complex system dynamics from time series: a method comparison

被引:9
|
作者
Hassanibesheli, Forough [1 ,2 ]
Boers, Niklas [1 ,3 ,4 ,5 ]
Kurths, Juergen [1 ,2 ,6 ]
机构
[1] Humboldt Univ, Dept Phys, Newtonstr 15, D-12489 Berlin, Germany
[2] Potsdam Inst Climate Impact Res, Res Domain Complex Sci 4, Telegrafenberg A31, D-14473 Potsdam, Germany
[3] Free Univ Berlin, Dept Math & Comp Sci, Berlin, Germany
[4] Univ Exeter, Dept Math, Exeter, Devon, England
[5] Univ Exeter, Global Syst Inst, Exeter, Devon, England
[6] Saratov NG Chernyshevskii State Univ, 83 Astrakhanskaya Str, Saratov 410012, Russia
来源
NEW JOURNAL OF PHYSICS | 2020年 / 22卷 / 07期
基金
欧盟地平线“2020”;
关键词
complex systems; stochastic time series; Langevin equation; generalized Langevin equation; data-driven stochastic differential equation models; STRATONOVICH; PREDICTION; MODELS; NOISE; ITO;
D O I
10.1088/1367-2630/ab9ce5
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Modeling complex systems with large numbers of degrees of freedom has become a grand challenge over the past decades. In many situations, only a few variables are actually observed in terms of measured time series, while the majority of variables-which potentially interact with the observed ones-remain hidden. A typical approach is then to focus on the comparably few observed, macroscopic variables, assuming that they determine the key dynamics of the system, while the remaining ones are represented by noise. This naturally leads to an approximate, inverse modeling of such systems in terms of stochastic differential equations (SDEs), with great potential for applications from biology to finance and Earth system dynamics. A well-known approach to retrieve such SDEs from small sets of observed time series is to reconstruct the drift and diffusion terms of a Langevin equation from the data-derived Kramers-Moyal (KM) coefficients. For systems where interactions between the observed and the unobserved variables are crucial, the Mori-Zwanzig formalism (MZ) allows to derive generalized Langevin equations that contain non-Markovian terms representing these interactions. In a similar spirit, the empirical model reduction (EMR) approach has more recently been introduced. In this work we attempt to reconstruct the dynamical equations of motion of both synthetical and real-world processes, by comparing these three approaches in terms of their capability to reconstruct the dynamics and statistics of the underlying systems. Through rigorous investigation of several synthetical and real-world systems, we confirm that the performance of the three methods strongly depends on the intrinsic dynamics of the system at hand. For instance, statistical properties of systems exhibiting weak history-dependence but strong state-dependence of the noise forcing, can be approximated better by the KM method than by the MZ and EMR approaches. In such situations, the KM method is of a considerable advantage since it can directly approximate the state-dependent noise. However, limitations of the KM approximation arise in cases where non-Markovian effects are crucial in the dynamics of the system. In these situations, our numerical results indicate that methods that take into account interactions between observed and unobserved variables in terms of non-Markovian closure terms (i.e., the MZ and EMR approaches), perform comparatively better.
引用
收藏
页数:22
相关论文
共 50 条
  • [21] Uncovering in vivo biochemical patterns from time-series metabolic dynamics
    Wu, Yue
    Judge, Michael T.
    Edison, Arthur S.
    Arnold, Jonathan
    PLOS ONE, 2022, 17 (05):
  • [22] Neural network method for determining embedding dimension of a time series
    Maus, A.
    Sprott, J. C.
    COMMUNICATIONS IN NONLINEAR SCIENCE AND NUMERICAL SIMULATION, 2011, 16 (08) : 3294 - 3302
  • [23] A method of evaluating zero conditional Lyapunov exponent from time series
    Moskalenko, O. I.
    Pavlov, A. S.
    TECHNICAL PHYSICS LETTERS, 2014, 40 (06) : 526 - 528
  • [24] Lyapunov exponent corresponding to enslaved phase dynamics: Estimation from time series
    Moskalenko, Olga I.
    Koronovskii, Alexey A.
    Hramov, Alexander E.
    PHYSICAL REVIEW E, 2015, 92 (01):
  • [25] Euclidean Mirrors and Dynamics in Network Time Series
    Athreya, Avanti
    Lubberts, Zachary
    Park, Youngser
    Priebe, Carey
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2025,
  • [26] Neural network based system in evapotranspiration time series prediction
    Popovic, Predrag
    Gocic, Milan
    Petkovic, Katarina
    Trajkovic, Slavisa
    EARTH SCIENCE INFORMATICS, 2023, 16 (01) : 919 - 928
  • [27] Adaptive fuzzy system to forecast financial time series volatility
    Luna, Ivette
    Ballini, Rosangela
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2012, 23 (01) : 27 - 38
  • [28] Comparison of Eight Techniques for Reconstructing Multi-Satellite Sensor Time-Series NDVI Data Sets in the Heihe River Basin, China
    Geng, Liying
    Ma, Mingguo
    Wang, Xufeng
    Yu, Wenping
    Jia, Shuzhen
    Wang, Haibo
    REMOTE SENSING, 2014, 6 (03) : 2024 - 2049
  • [29] Imaging the Hydrothermal System of Kirishima Volcanic Complex With L-Band InSAR Time Series
    Zhang Yunjun
    Amelung, Falk
    Aoki, Yosuke
    GEOPHYSICAL RESEARCH LETTERS, 2021, 48 (11)
  • [30] Deterministic Method for the Prediction of Time Series
    Rogoza, Walery
    HARD AND SOFT COMPUTING FOR ARTIFICIAL INTELLIGENCE, MULTIMEDIA AND SECURITY, 2017, 534 : 68 - 80