Chen Xiaolu, Weng Tongfeng, Yang Huijie, Gu Changgui, Zhang Jie, Small Michael
Business School, University of Shanghai for Science and Technology, Shanghai 200093, People's Republic of China.
Alibaba Research Center for Complexity Sciences, Hangzhou Normal University, Hangzhou 311121, People's Republic of China.
Phys Rev E. 2020 Sep;102(3-1):033314. doi: 10.1103/PhysRevE.102.033314.
Significant advances have recently been made in modeling chaotic systems with the reservoir computing approach, especially for prediction. We find that although state prediction of the trained reservoir computer will gradually deviate from the actual trajectory of the original system, the associated geometric features remain invariant. Specifically, we show that the typical geometric metrics including the correlation dimension, the multiscale entropy, and the memory effect are nearly identical between the trained reservoir computer and its learned chaotic systems. We further demonstrate this fact on a broad range of chaotic systems ranging from discrete and continuous chaotic systems to hyperchaotic systems. Our findings suggest that the successfully reservoir computer may be topologically conjugate to an observed dynamical system.
最近,利用储层计算方法对混沌系统进行建模取得了重大进展,特别是在预测方面。我们发现,尽管经过训练的储层计算机的状态预测会逐渐偏离原始系统的实际轨迹,但其相关的几何特征保持不变。具体而言,我们表明,经过训练的储层计算机与其学习到的混沌系统之间,包括关联维数、多尺度熵和记忆效应在内的典型几何度量几乎相同。我们在从离散和连续混沌系统到超混沌系统的广泛混沌系统上进一步证明了这一事实。我们的研究结果表明,成功的储层计算机可能与观测到的动力系统在拓扑上共轭。