Anticipating Lag Synchronization Based on Machine Learning
Mathematical Theory and Applications ›› 2025, Vol. 45 ›› Issue (1): 115-126.doi: 10.3969/j.issn.1006-8074.2025.01.008
Previous Articles
WU Yongqing1,2,*; BAO Xingxing2
Online:
Published:
Contact:
Supported by:
Abstract:
This paper propose a comprehensive data-driven prediction framework based on machine learning methods to investigate the lag synchronization phenomenon in coupled chaotic systems, particularly in cases where accurate mathematical models are challenging to establish or where system equations remain unknown. The Long Short-Term Memory (LSTM) neural network is trained using time series acquired from the desynchronization system states, subsequently predicting the lag synchronization transition. In the experiments, we focus on the Lorenz system with time-varying delayed coupling, studying the effects of coupling coefficients and time delays on lag synchronization, respectively. The results indicate that with appropriate training, the machine learning model can adeptly predict the lag synchronization occurrence and transition. This study not only enhances our comprehension of complex network synchronization behaviors but also underscores the potential and practical applications of machine learning in exploring nonlinear dynamic systems.
Key words: Coupled chaotic system, LSTM neural network, Anticipating synchronization, Lag synchronization
WU Yongqing, BAO Xingxing.
Anticipating Lag Synchronization Based on Machine Learning [J]. Mathematical Theory and Applications, 2025, 45(1): 115-126.
0 / / Recommend
Add to citation manager EndNote|Ris|BibTeX
URL: https://mta.csu.edu.cn/EN/10.3969/j.issn.1006-8074.2025.01.008
https://mta.csu.edu.cn/EN/Y2025/V45/I1/115