Stability analysis of chaotic systems in latent spaces.

IF 5.2 2区 工程技术 Q1 ENGINEERING, MECHANICAL
Nonlinear Dynamics Pub Date : 2025-01-01 Epub Date: 2025-02-04 DOI:10.1007/s11071-024-10712-w
Elise Özalp, Luca Magri
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引用次数: 0

Abstract

Partial differential equations, and their chaotic solutions, are pervasive in the modelling of complex systems in engineering, science, and beyond. Data-driven methods can find solutions to partial differential equations with a divide-and-conquer strategy: The solution is sought in a latent space, on which the temporal dynamics are inferred ("latent-space" approach). This is achieved by, first, compressing the data with an autoencoder, and, second, inferring the temporal dynamics with recurrent neural networks. The overarching goal of this paper is to show that a latent-space approach can not only infer the solution of a chaotic partial differential equation, but it can also predict the stability properties of the physical system. First, we employ the convolutional autoencoder echo state network (CAE-ESN) on the chaotic Kuramoto-Sivashinsky equation for various chaotic regimes. We show that the CAE-ESN (i) finds a low-dimensional latent-space representation of the observations and (ii) accurately infers the Lyapunov exponents and covariant Lyapunov vectors (CLVs) in this low-dimensional manifold for different attractors. Second, we extend the CAE-ESN to a turbulent flow, comparing the Lyapunov spectrum to estimates obtained from Jacobian-free methods. A latent-space approach based on the CAE-ESN effectively produces a latent space that preserves the key properties of the chaotic system, such as Lyapunov exponents and CLVs, thus retaining the geometric structure of the attractor. The latent-space approach based on the CAE-ESN is a reduced-order model that accurately predicts the dynamics of the chaotic system, or, alternatively, it can be used to infer stability properties of chaotic systems from data.

潜在空间混沌系统的稳定性分析。
偏微分方程及其混沌解在工程、科学等领域的复杂系统建模中无处不在。数据驱动的方法可以通过分而治之的策略找到偏微分方程的解:在一个潜在空间中寻找解,在这个潜在空间上推断时间动态(“潜在空间”方法)。首先,用自动编码器压缩数据,其次,用循环神经网络推断时间动态。本文的总体目标是证明潜在空间方法不仅可以推断混沌偏微分方程的解,而且还可以预测物理系统的稳定性。首先,我们将卷积自编码器回声状态网络(CAE-ESN)应用于各种混沌状态下的混沌Kuramoto-Sivashinsky方程。我们证明了CAE-ESN (i)找到了观测值的低维潜在空间表示,(ii)准确地推断出了不同吸引子在这个低维流形中的Lyapunov指数和协变Lyapunov向量(clv)。其次,我们将CAE-ESN扩展到湍流中,将Lyapunov谱与由无雅可比方法获得的估计进行比较。基于CAE-ESN的潜在空间方法有效地产生了一个潜在空间,该潜在空间保留了混沌系统的关键属性,如Lyapunov指数和clv,从而保留了吸引子的几何结构。基于CAE-ESN的潜在空间方法是一种降阶模型,可以准确地预测混沌系统的动力学,或者可以从数据中推断混沌系统的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nonlinear Dynamics
Nonlinear Dynamics 工程技术-工程:机械
CiteScore
9.00
自引率
17.90%
发文量
966
审稿时长
5.9 months
期刊介绍: Nonlinear Dynamics provides a forum for the rapid publication of original research in the field. The journal’s scope encompasses all nonlinear dynamic phenomena associated with mechanical, structural, civil, aeronautical, ocean, electrical, and control systems. Review articles and original contributions are based on analytical, computational, and experimental methods. The journal examines such topics as perturbation and computational methods, symbolic manipulation, dynamic stability, local and global methods, bifurcations, chaos, and deterministic and random vibrations. The journal also investigates Lie groups, multibody dynamics, robotics, fluid-solid interactions, system modeling and identification, friction and damping models, signal analysis, and measurement techniques.
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