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利用机器学习从数据中复制混沌吸引子并计算李雅普诺夫指数。

Using machine learning to replicate chaotic attractors and calculate Lyapunov exponents from data.

作者信息

Pathak Jaideep, Lu Zhixin, Hunt Brian R, Girvan Michelle, Ott Edward

机构信息

Institute for Research in Electronics and Applied Physics, University of Maryland, College Park, Maryland 20742, USA.

Institute for Physical Science and Technology, University of Maryland, College Park, Maryland 20742, USA.

出版信息

Chaos. 2017 Dec;27(12):121102. doi: 10.1063/1.5010300.

DOI:10.1063/1.5010300
PMID:29289043
Abstract

We use recent advances in the machine learning area known as "reservoir computing" to formulate a method for model-free estimation from data of the Lyapunov exponents of a chaotic process. The technique uses a limited time series of measurements as input to a high-dimensional dynamical system called a "reservoir." After the reservoir's response to the data is recorded, linear regression is used to learn a large set of parameters, called the "output weights." The learned output weights are then used to form a modified autonomous reservoir designed to be capable of producing an arbitrarily long time series whose ergodic properties approximate those of the input signal. When successful, we say that the autonomous reservoir reproduces the attractor's "climate." Since the reservoir equations and output weights are known, we can compute the derivatives needed to determine the Lyapunov exponents of the autonomous reservoir, which we then use as estimates of the Lyapunov exponents for the original input generating system. We illustrate the effectiveness of our technique with two examples, the Lorenz system and the Kuramoto-Sivashinsky (KS) equation. In the case of the KS equation, we note that the high dimensional nature of the system and the large number of Lyapunov exponents yield a challenging test of our method, which we find the method successfully passes.

摘要

我们利用机器学习领域中被称为“储层计算”的最新进展,制定了一种从混沌过程的数据中进行无模型估计李雅普诺夫指数的方法。该技术将有限时间序列的测量值作为输入,输入到一个称为“储层”的高维动力系统中。在记录储层对数据的响应后,使用线性回归来学习一大组参数,称为“输出权重”。然后,利用学习到的输出权重来构建一个经过修改的自治储层,该自治储层能够产生一个任意长的时间序列,其遍历性质近似于输入信号的遍历性质。如果成功,我们就说自治储层再现了吸引子的“气候”。由于储层方程和输出权重是已知的,我们可以计算出确定自治储层李雅普诺夫指数所需的导数,然后将其用作原始输入生成系统李雅普诺夫指数的估计值。我们用两个例子,即洛伦兹系统和Kuramoto-Sivashinsky(KS)方程,来说明我们技术的有效性。在KS方程的情况下,我们注意到系统的高维性质和大量的李雅普诺夫指数对我们的方法进行了具有挑战性的测试,我们发现该方法成功通过了测试。

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