Synchronization and adaptive control for coupled fractional-order reaction–diffusion neural networks with multiple couplings
Published 2022 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Synchronization and adaptive control for coupled fractional-order reaction–diffusion neural networks with multiple couplings
Authors
Keywords
-
Journal
ISA TRANSACTIONS
Volume -, Issue -, Pages -
Publisher
Elsevier BV
Online
2022-11-16
DOI
10.1016/j.isatra.2022.11.009
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Exponential synchronization of fractional-order reaction-diffusion coupled neural networks with hybrid delay-dependent impulses
- (2021) Shuai Yang et al. JOURNAL OF THE FRANKLIN INSTITUTE-ENGINEERING AND APPLIED MATHEMATICS
- General decay synchronization and H∞ synchronization of spatial diffusion coupled delayed reaction–diffusion neural networks
- (2020) Jianmou Lu et al. ISA TRANSACTIONS
- Multi-weighted Complex Structure on Fractional Order Coupled Neural Networks with Linear Coupling Delay: A Robust Synchronization Problem
- (2020) A. Pratap et al. NEURAL PROCESSING LETTERS
- Passivity Analysis of Fractional-Order Neural Networks with Time-Varying Delay Based on LMI Approach
- (2020) Nguyen Huu Sau et al. CIRCUITS SYSTEMS AND SIGNAL PROCESSING
- Pinning synchronization of coupled fractional-order time-varying delayed neural networks with arbitrary fixed topology
- (2020) Peng Liu et al. NEUROCOMPUTING
- Stability analysis of delayed neural network using new delay-product based functionals
- (2020) Sharat Chandra Mahto et al. NEUROCOMPUTING
- Impulsive effects on stability and passivity analysis of memristor-based fractional-order competitive neural networks
- (2020) G. Rajchakit et al. NEUROCOMPUTING
- Global Exponential Synchronization of Coupled Delayed Memristive Neural Networks With Reaction–Diffusion Terms via Distributed Pinning Controls
- (2020) Zhenyuan Guo et al. IEEE Transactions on Neural Networks and Learning Systems
- Almost Periodicity in Impulsive Fractional-Order Reaction–Diffusion Neural Networks With Time-Varying Delays
- (2020) Jinde Cao et al. IEEE Transactions on Cybernetics
- Passivity and synchronization of coupled reaction–diffusion neural networks with multiple coupling and uncertain inner coupling matrices
- (2019) Zhen Qin et al. NEUROCOMPUTING
- New results on passivity of fractional-order uncertain neural networks
- (2019) Zhixia Ding et al. NEUROCOMPUTING
- Adaptive passivity and synchronization of coupled reaction-diffusion neural networks with multiple state couplings or spatial diffusion couplings
- (2019) Lu Wang et al. NEUROCOMPUTING
- Event-triggered passivity and synchronization of delayed multiple-weighted coupled reaction–diffusion neural networks with non-identical nodes
- (2019) Shanrong Lin et al. NEURAL NETWORKS
- Exponential passivity for uncertain neural networks with time-varying delays based on weighted integral inequalities
- (2018) S. Saravanan et al. NEUROCOMPUTING
- Synchronization stability of Riemann–Liouville fractional delay-coupled complex neural networks
- (2018) Hai Zhang et al. PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS
- Stability and Robust Stability of Stochastic Reaction-Diffusion Neural Networks With Infinite Discrete and Distributed Delays
- (2018) Yin Sheng et al. IEEE Transactions on Systems Man Cybernetics-Systems
- Passivity analysis of delayed reaction–diffusion memristor-based neural networks
- (2018) Yanyi Cao et al. NEURAL NETWORKS
- Global Synchronization of Coupled Fractional-Order Recurrent Neural Networks
- (2018) Peng Liu et al. IEEE Transactions on Neural Networks and Learning Systems
- Edge-Based Fractional-Order Adaptive Strategies for Synchronization of Fractional-Order Coupled Networks With Reaction–Diffusion Terms
- (2018) Yujiao Lv et al. IEEE Transactions on Cybernetics
- Passivity and robust passivity of stochastic reaction–diffusion neural networks with time-varying delays
- (2017) Yin Sheng et al. JOURNAL OF THE FRANKLIN INSTITUTE-ENGINEERING AND APPLIED MATHEMATICS
- Exponential Stability of Complex-Valued Memristive Recurrent Neural Networks
- (2017) Huamin Wang et al. IEEE Transactions on Neural Networks and Learning Systems
- Stability Analysis of Discrete-Time Neural Networks With Time-Varying Delay via an Extended Reciprocally Convex Matrix Inequality
- (2017) Chuan-Ke Zhang et al. IEEE Transactions on Cybernetics
- Synchronization and Robust Synchronization for Fractional-Order Coupled Neural Networks
- (2017) Shuxue Wang et al. IEEE Access
- Stability and Hopf Bifurcation of Time Fractional Cohen–Grossberg Neural Networks with Diffusion and Time Delays in Leakage Terms
- (2016) Xiaohong Tian et al. NEURAL PROCESSING LETTERS
- Synchronization of fractional-order delayed neural networks with hybrid coupling
- (2015) Haibo Bao et al. COMPLEXITY
- Existence and Uniform Stability Analysis of Fractional-Order Complex-Valued Neural Networks With Time Delays
- (2015) R. Rakkiyappan et al. IEEE Transactions on Neural Networks and Learning Systems
- Passivity of Switched Recurrent Neural Networks With Time-Varying Delays
- (2015) Jie Lian et al. IEEE Transactions on Neural Networks and Learning Systems
- Stability Analysis of Fractional-Order Neural Networks with Time Delay
- (2014) Hu Wang et al. NEURAL PROCESSING LETTERS
- Mittag–Leffler stability of fractional order nonlinear dynamic systems
- (2009) Yan Li et al. AUTOMATICA
- Global Asymptotic Stability of Reaction–Diffusion Cohen–Grossberg Neural Networks With Continuously Distributed Delays
- (2009) Zhanshan Wang et al. IEEE TRANSACTIONS ON NEURAL NETWORKS
- Global exponential stability and periodicity of reaction–diffusion delayed recurrent neural networks with Dirichlet boundary conditions
- (2007) Jun Guo Lu CHAOS SOLITONS & FRACTALS
Become a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get StartedAsk a Question. Answer a Question.
Quickly pose questions to the entire community. Debate answers and get clarity on the most important issues facing researchers.
Get Started