4.7 Article

Synchronization of multiple mobile reservoir computing oscillators in complex networks

Related references

Note: Only part of the references are listed.
Article Mathematics, Interdisciplinary Applications

Synchronization between two linearly coupled reservoir computers

Wancheng Hu et al.

Summary: This paper introduces both the significance of reservoir computing and the achievement of complete synchronization in reservoir computers based on coupling theory. The validity of the theory is verified through numerical experiments.

CHAOS SOLITONS & FRACTALS (2022)

Review Automation & Control Systems

Searching for Best Network Topologies with Optimal Synchronizability: A Brief Review

Guanrong Chen

Summary: This article briefly reviews recent progress in the study of network synchronizability and explores the role of higher-order topologies in measuring optimal synchronizability of large-scale complex networks.

IEEE-CAA JOURNAL OF AUTOMATICA SINICA (2022)

Article Mathematics, Applied

Modeling chaotic systems: Dynamical equations vs machine learning approach

Tongfeng Weng et al.

Summary: Chaotic systems are common in the real world, but it is often difficult to obtain analytical models. We propose a machine-learning method called reservoir computing as an alternative approach to model chaotic systems, which is more feasible compared to conventional dynamical equations.

COMMUNICATIONS IN NONLINEAR SCIENCE AND NUMERICAL SIMULATION (2022)

Article Engineering, Mechanical

Experimental study on dynamics of the multi-individual clapping interacting system

Shilan Su et al.

Summary: This study uncovers the dynamics underlying interaction by observing individuals synchronizing clapping rhythms, and identifies three coupling states in the multi-individual clapping process. Statistical analysis shows that the clapping rhythms of arbitrary two individuals in the system exhibit long-range cross-correlations. A theoretical model is proposed to explain these findings and reproduce the statistical characteristics of the multi-individual clapping process.

NONLINEAR DYNAMICS (2022)

Article Mathematics, Interdisciplinary Applications

Equivalence of machine learning models in modeling chaos

Xiaolu Chen et al.

Summary: Recent advances have shown the effectiveness of machine learning models in predicting chaotic systems. This study focused on three commonly used models and found that they have almost identical long-term statistical properties as learned chaotic systems. Additionally, synchronization among machine learning models was achieved through signal sharing.

CHAOS SOLITONS & FRACTALS (2022)

Article Physics, Multidisciplinary

Predicting extreme events from data using deep machine learning: When and where

Junjie Jiang et al.

Summary: In this paper, we propose a framework based on deep convolutional neural network (DCNN) for model-free prediction of extreme events in two-dimensional nonlinear physical systems in both time and space dimensions. Through validation using synthetic data and actual wind speed data, the trade-offs between prediction horizon, spatial resolution, and accuracy are illustrated, and the detrimental effect of spatial bias on prediction accuracy is discussed.

PHYSICAL REVIEW RESEARCH (2022)

Article Multidisciplinary Sciences

Self-organization in natural swarms of Photinus carolinus synchronous fireflies

Raphael Sarfati et al.

Summary: The synchronized flashing of fireflies in collective displays is a mesmerizing example of biological synchrony. High density firefly swarms produce synchronous flashes through a relay-like process, with interactions influenced by visual occlusion from terrain and vegetation. This model highlights the importance of the environment in shaping self-organization and collective behavior.

SCIENCE ADVANCES (2021)

Article Physics, Fluids & Plasmas

Learning Hamiltonian dynamics with reservoir computing

Han Zhang et al.

Summary: The study demonstrates that machine learning approach using reservoir computing technique can reconstruct the KAM dynamics diagram of Hamiltonian system, even when the Hamiltonian equations of motion governing the system dynamics are unknown. This method can not only predict the short-term evolution of the system state, but also replicate the entire KAM dynamics diagram with high precision by tuning a control parameter externally.

PHYSICAL REVIEW E (2021)

Article Physics, Multidisciplinary

Anticipating synchronization with machine learning

Huawei Fan et al.

Summary: In realistic systems of coupled oscillators, the onset of synchronization can be predicted through machine learning, specifically reservoir computing or echo state networks. Trained neural machines can accurately predict synchronization transitions by tuning control parameters, covering various synchronization behaviors and transition scenarios in coupled systems. The remarkable feature is the ability to predict transition points and hysteresis for systems exhibiting explosive transitions.

PHYSICAL REVIEW RESEARCH (2021)

Article Physics, Multidisciplinary

Machine learning prediction of critical transition and system collapse

Ling-Wei Kong et al.

Summary: This study presents a model-free solution based on machine learning and reservoir computing for predicting critical transitions caused by parameter drift and the transient state of a system before its collapse. The accuracy of this method reveals important physical properties of transient chaos.

PHYSICAL REVIEW RESEARCH (2021)

Article Physics, Multidisciplinary

Long-term prediction of chaotic systems with machine learning

Huawei Fan et al.

PHYSICAL REVIEW RESEARCH (2020)

Article Physics, Fluids & Plasmas

Synchronization of chaotic systems and their machine-learning models

Tongfeng Weng et al.

PHYSICAL REVIEW E (2019)

Article Mathematics, Applied

Observing spatio-temporal dynamics of excitable media using reservoir computing

Roland S. Zimmermann et al.

CHAOS (2018)

Article Physics, Multidisciplinary

Model-Free Prediction of Large Spatiotemporally Chaotic Systems from Data: A Reservoir Computing Approach

Jaideep Pathak et al.

PHYSICAL REVIEW LETTERS (2018)

Article Computer Science, Artificial Intelligence

Echo state networks are universal

Lyudmila Grigoryeva et al.

NEURAL NETWORKS (2018)

Article Multidisciplinary Sciences

Oscillators that sync and swarm

Kevin P. O'Keeffe et al.

NATURE COMMUNICATIONS (2017)

Article Mathematics, Applied

Small-world networks exhibit pronounced intermittent synchronization

Anshul Choudhary et al.

CHAOS (2017)

Article Physics, Fluids & Plasmas

Multiple random walks on complex networks: A harmonic law predicts search time

Tongfeng Weng et al.

PHYSICAL REVIEW E (2017)

Review Biology

Understanding how animal groups achieve coordinated movement

J. E. Herbert-Read

JOURNAL OF EXPERIMENTAL BIOLOGY (2016)

Review Physics, Multidisciplinary

The Kuramoto model in complex networks

Francisco A. Rodrigues et al.

PHYSICS REPORTS-REVIEW SECTION OF PHYSICS LETTERS (2016)

Article Physics, Multidisciplinary

Explosive Synchronization in Adaptive and Multilayer Networks

Xiyun Zhang et al.

PHYSICAL REVIEW LETTERS (2015)

Article Physics, Fluids & Plasmas

Time-series analysis of networks: Exploring the structure with random walks

Tongfeng Weng et al.

PHYSICAL REVIEW E (2014)

Article Physics, Multidisciplinary

Chimera and phase-cluster states in populations of coupled chemical oscillators

Mark R. Tinsley et al.

NATURE PHYSICS (2012)

Article Physics, Multidisciplinary

Self-Organized Synchronization in Decentralized Power Grids

Martin Rohden et al.

PHYSICAL REVIEW LETTERS (2012)

Article Physics, Fluids & Plasmas

Generalized synchronization of complex networks

Yun Shang et al.

PHYSICAL REVIEW E (2009)

Article Physics, Multidisciplinary

Synchronization of moving chaotic agents

Mattia Frasca et al.

PHYSICAL REVIEW LETTERS (2008)

Review Physics, Multidisciplinary

Synchronization in complex networks

Alex Arenas et al.

PHYSICS REPORTS-REVIEW SECTION OF PHYSICS LETTERS (2008)

Article Multidisciplinary Sciences

Interaction ruling animal collective behavior depends on topological rather than metric distance: Evidence from a field study

M. Ballerini et al.

PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA (2008)

Review Multidisciplinary Sciences

Synchronization and rhythmic processes in physiology

L Glass

NATURE (2001)