School of Physics and Information Technology, Shaanxi Normal University, Xi'an 710062, China.
School of Electrical, Computer and Energy Engineering, Arizona State University, Tempe, Arizona 85287, USA.
Chaos. 2020 Aug;30(8):083114. doi: 10.1063/5.0006304.
Recent interest in exploiting machine learning for model-free prediction of chaotic systems focused on the time evolution of the dynamical variables of the system as a whole, which include both amplitude and phase. In particular, in the framework based on reservoir computing, the prediction horizon as determined by the largest Lyapunov exponent is often short, typically about five or six Lyapunov times that contain approximately equal number of oscillation cycles of the system. There are situations in the real world where the phase information is important, such as the ups and downs of species populations in ecology, the polarity of a voltage variable in an electronic circuit, and the concentration of certain chemical above or below the average. Using classic chaotic oscillators and a chaotic food-web system from ecology as examples, we demonstrate that reservoir computing can be exploited for long-term prediction of the phase of chaotic oscillators. The typical prediction horizon can be orders of magnitude longer than that with predicting the entire variable, for which we provide a physical understanding. We also demonstrate that a properly designed reservoir computing machine can reliably sense phase synchronization between a pair of coupled chaotic oscillators with implications to the design of the parallel reservoir scheme for predicting large chaotic systems.
最近,人们对利用机器学习对混沌系统进行无模型预测产生了浓厚的兴趣,其重点是研究系统整体的动力学变量的时间演化,这其中包括振幅和相位。具体来说,在基于储层计算的框架中,由最大李雅普诺夫指数确定的预测范围通常较短,通常约为五到六个李雅普诺夫时间,其中包含大约相等数量的系统振荡周期。在现实世界中,存在相位信息很重要的情况,例如生态学中物种数量的起伏、电子电路中电压变量的极性,以及某些化学物质浓度高于或低于平均值的情况。我们使用经典混沌振荡器和生态混沌食物网系统作为示例,证明了储层计算可以用于长期预测混沌振荡器的相位。典型的预测范围可以比预测整个变量的预测范围长几个数量级,我们为其提供了物理理解。我们还证明了,设计合理的储层计算机会可靠地感知一对耦合混沌振荡器之间的相位同步,这对预测大型混沌系统的并行储层方案的设计具有重要意义。