Luo Haibo, Du Yao, Fan Huawei, Wang Xuan, Guo Jianzhong, Wang Xingang
School of Physics and Information Technology, Shaanxi Normal University, Xi'an 710062, China.
School of Science, Xi'an University of Posts and Telecommunications, Xi'an 710121, China.
Phys Rev E. 2024 Feb;109(2-1):024210. doi: 10.1103/PhysRevE.109.024210.
Model-free reconstruction of bifurcation diagrams of Chua's circuits using the technique of parameter-aware reservoir computing is investigated. We demonstrate that (1) reservoir computer can be utilized as a noise filter to restore the system dynamics from noisy signals; (2) for a single Chua circuit, a machine trained by the noisy time series measured at several sampling states is capable of reconstructing the whole bifurcation diagram of the circuit with a high precision; and (3) for two coupled chaotic Chua circuits with mismatched parameters, the machine trained by the noisy time series measured at several coupling strengths is able to anticipate the variation of the synchronization degree of the coupled circuits with respect to the coupling strength over a wide range. Our studies verify the capability of the technique of parameter-aware reservoir computing in learning the dynamics of chaotic circuits from noisy signals, signifying the potential application of this technique in reconstructing the bifurcation diagram of real-world chaotic systems.
研究了使用参数感知储层计算技术对蔡氏电路分岔图进行无模型重建。我们证明:(1)储层计算机可作为噪声滤波器,从噪声信号中恢复系统动力学;(2)对于单个蔡氏电路,由在几个采样状态下测量的噪声时间序列训练的机器能够高精度地重建电路的整个分岔图;(3)对于两个参数不匹配的耦合混沌蔡氏电路,由在几个耦合强度下测量的噪声时间序列训练的机器能够在很宽的范围内预测耦合电路同步程度随耦合强度的变化。我们的研究验证了参数感知储层计算技术从噪声信号中学习混沌电路动力学的能力,表明该技术在重建实际混沌系统分岔图方面的潜在应用。