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使用卷积神经网络学习噪声中的动力系统。

Learning dynamical systems in noise using convolutional neural networks.

机构信息

Electrical Engineering and Computer Science, York University, 4700 Keele St, Toronto M3J 1P3, Canada.

Department of Mathematical Sciences, Politecnico di Torino, Corso Duca degli Abruzzi, 24, Torino 10129, Italy.

出版信息

Chaos. 2020 Oct;30(10):103125. doi: 10.1063/5.0009326.

DOI:10.1063/5.0009326
PMID:33138462
Abstract

The problem of distinguishing deterministic chaos from non-chaotic dynamics has been an area of active research in time series analysis. Since noise contamination is unavoidable, it renders deterministic chaotic dynamics corrupted by noise to appear in close resemblance to stochastic dynamics. As a result, the problem of distinguishing noise-corrupted chaotic dynamics from randomness based on observations without access to the measurements of the state variables is difficult. We propose a new angle to tackle this problem by formulating it as a multi-class classification task. The task of classification involves allocating the observations/measurements to the unknown state variables in order to find the nature of these unobserved internal state variables. We employ signal and image processing based methods to characterize the different system dynamics. A deep learning technique using a state-of-the-art image classifier known as the Convolutional Neural Network (CNN) is designed to learn the dynamics. The time series are transformed into textured images of spectrogram and unthresholded recurrence plot (UTRP) for learning stochastic and deterministic chaotic dynamical systems in noise. We have designed a CNN that learns the dynamics of systems from the joint representation of the textured patterns from these images, thereby solving the problem as a pattern recognition task. The robustness and scalability of our approach is evaluated at different noise levels. Our approach demonstrates the advantage of applying the dynamical properties of chaotic systems in the form of joint representation of UTRP images along with spectrogram to improve learning dynamical systems in colored noise.

摘要

区分确定性混沌和非混沌动力学的问题一直是时间序列分析领域的一个活跃研究领域。由于噪声污染是不可避免的,它使得确定性混沌动力学受到噪声的污染,使其看起来与随机动力学非常相似。因此,基于没有状态变量测量值的观测来区分噪声污染的混沌动力学和随机性的问题是困难的。我们提出了一个新的角度来解决这个问题,将其表述为一个多类分类任务。分类任务涉及将观测值/测量值分配给未知的状态变量,以便找到这些未观测到的内部状态变量的性质。我们采用基于信号和图像处理的方法来描述不同的系统动力学。使用一种称为卷积神经网络(CNN)的最先进的图像分类器的深度学习技术来学习动力学。将时间序列转换为声谱图和无阈值递归图(UTRP)的纹理图像,以便在噪声中学习随机和确定性混沌动力系统。我们设计了一个 CNN,它从这些图像的纹理模式的联合表示中学习系统的动力学,从而将该问题作为模式识别任务来解决。我们的方法在不同的噪声水平下评估了其鲁棒性和可扩展性。我们的方法证明了在有色噪声中学习动力系统时,应用混沌系统动力学的联合表示形式的 UTRP 图像与声谱图的优势。

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