4.4 Article

The influence of synaptic pathways on the synchronization patterns of regularly structured mChialvo map network

Related references

Note: Only part of the references are listed.
Article Computer Science, Information Systems

Dynamical Analysis and Synchronization of a New Memristive Chialvo Neuron Model

Gayathri Vivekanandhan et al.

Summary: In this paper, a memristor is added to the two-dimensional neural model Chialvo to consider the effects of electromagnetic induction. The dynamics of the system are analyzed by obtaining bifurcation diagrams and Lyapunov spectra. The study shows that the magnetic strength and injected current are the most effective parameters on the dynamics. The memristive Chialvo can exhibit different neural behaviors and has coexisting attractors, similar to the primary Chialvo model. Furthermore, it is found that electrical coupling is essential for synchronization in the network of memristive Chialvo, while chemical coupling alone does not lead to synchronization.

ELECTRONICS (2023)

Article Engineering, Electrical & Electronic

Synchronization of coupled memristive Hindmarsh-Rose maps under different coupling conditions

Shan Wang et al.

Summary: This paper investigates the synchronization of memristive Hindmarsh-Rose neuron maps under different coupling conditions, including electrical synapses, chemical synapses, inner linking functions, and hybrid synapses. The study found that synchronization is achieved when the neurons are coupled through electrical and hybrid synapses, but not through chemical synapses. Moreover, it shows that a slightly lower coupling value is needed for synchronization through inner linking functions compared to electrical synapses.

AEU-INTERNATIONAL JOURNAL OF ELECTRONICS AND COMMUNICATIONS (2023)

Article Multidisciplinary Sciences

A multiresolution framework for the analysis of community structure in international trade networks

Wonguk Cho et al.

Summary: International trade networks are complex systems consisting of overlapping trade blocs. However, the existing community detection structures in trade networks do not accurately represent the complexity of international trade. To address this, we propose a multiresolution framework that considers trade communities of different sizes and reveals the hierarchical structure of trade networks. Additionally, we introduce a measure called multiresolution membership inconsistency, which shows the correlation between a country's structural inconsistency and its vulnerability to external intervention.

SCIENTIFIC REPORTS (2023)

Article Mathematics

The Impact of Higher-Order Interactions on the Synchronization of Hindmarsh-Rose Neuron Maps under Different Coupling Functions

Mahtab Mehrabbeik et al.

Summary: In network analysis, pairwise connections often overlook the higher-order connections among network nodes. However, these higher-order connections become more important in neuronal network synchronization, where simplicial complexes can represent non-pairwise connections. Map-based models offer a solution by reducing computational costs and increasing efficiency. This paper investigates the impact of pairwise and non-pairwise neuronal interactions on synchronization using memristive Hindmarsh-Rose neuron maps, showing that neurons can achieve synchrony with weak coupling strengths through chemical pairwise and non-pairwise synapses.

MATHEMATICS (2023)

Article Mathematics, Applied

Noise-induced complex dynamics and synchronization in the map-based Chialvo neuron model

Irina Bashkirtseva et al.

Summary: This paper considers a stochastic version of the Chialvo model of neural activity, focusing on its mono- and bistability and the phenomenon of oscillatory spiking attractors forming closed invariant curves. The stochastic effects of excitement and bursting generation are studied numerically and analytically. The paper also discusses the noise-induced transition to chaos in a two-parametric zone and the synchronization phenomenon between neurons in a two-neuron network.

COMMUNICATIONS IN NONLINEAR SCIENCE AND NUMERICAL SIMULATION (2023)

Review Engineering, Multidisciplinary

Biophysical neurons, energy, and synapse controllability: a review

Jun Ma

Summary: Diffusion of ions inside and outside cells leads to a gradient electromagnetic field that regulates membrane potential. External stimuli inject energy to disrupt the energy balance between the magnetic and electric fields in a cell. Activation of biophysical functions and self-adaptation of biological neurons depend on energy flow, and synapse connection is controlled to achieve energy balance. When more neurons are clustered together, field energy is exchanged and shape formation occurs to achieve local energy balance, preventing bursting synchronization and seizure. This review presents various biophysical neuron models and explains their physical aspects, clarifying the controllability of functional synapses, formation of heterogeneity, and defects to understand synchronization stability and cooperation between functional regions. These models and findings provide new insights into nonlinear physics and computational neuroscience.

JOURNAL OF ZHEJIANG UNIVERSITY-SCIENCE A (2023)

Article Engineering, Mechanical

How to wake up the electric synapse coupling between neurons?

Ping Zhou et al.

Summary: This paper investigates how energy diversity between neurons affects the creation and enhancement of synapses. The study finds that adjusting the intensity along the coupling channel can achieve energy balance and form synaptic connections in neural networks.

NONLINEAR DYNAMICS (2022)

Article Automation & Control Systems

Memristive Rulkov Neuron Model With Magnetic Induction Effects

Kexin Li et al.

Summary: This article introduces a discrete memristive Rulkov (m-Rulkov) neuron model that can simulate magnetic induction effects and better characterize the actual firing activities in biological neurons.

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS (2022)

Article Mathematics, Interdisciplinary Applications

Dynamical Effects of Electromagnetic Flux on Chialvo Neuron Map: Nodal and Network Behaviors

Sishu Shankar Muni et al.

Summary: This study investigates the dynamical effects of electromagnetic flux on the Chialvo neuron model, revealing rich dynamical behaviors and various routes to chaos. The study also explores the dynamics of a network of Chialvo neurons, uncovering different states and patterns.

INTERNATIONAL JOURNAL OF BIFURCATION AND CHAOS (2022)

Article Physics, Multidisciplinary

Dynamics and chimera state in a neural network with discrete memristor coupling

Chenxi Shang et al.

Summary: This paper discusses the properties of individual Chialvo neurons in discrete memristor neural networks. By changing the coupling gain, the synchronization of two neurons with different firing modes through discrete memristors is studied. Simulation results show that discrete memristors effectively synchronize neurons and neural networks.

EUROPEAN PHYSICAL JOURNAL-SPECIAL TOPICS (2022)

Article Physics, Multidisciplinary

Synchronization stability analysis of functional brain networks in boys with ADHD during facial emotions processing

Sheida Ansarinasab et al.

Summary: This study investigates the synchronization stability and robustness of functional brain networks in boys with ADHD while observing facial emotions. The results suggest that there is an alteration in the phase synchronization stability in the brain networks of the ADHD group, which may be associated with a deficit in emotional processing.

PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS (2022)

Article Mathematics, Interdisciplinary Applications

Synchronization transitions in a discrete memristor-coupled bi-neuron model

Kexin Li et al.

Summary: In this study, a discrete bi-neuron model is used to examine the effects of memory resistance on neuronal coupling, synchronization behavior, and dynamical behavior. The results demonstrate the coexistence of multiple firing patterns and provide evidence for the realization of synchronous control of coupled neurons.

CHAOS SOLITONS & FRACTALS (2022)

Article Mathematics, Applied

Effect of magnetic induction on the synchronizability of coupled neuron network

Karthikeyan Rajagopal et al.

Summary: Master stability functions are significant tools for identifying the synchronizability of nonlinear dynamical systems. By studying the MSF in a network of coupled oscillators, synchronization can be achieved, with magnetic flux coupling increasing synchronization of coupled neurons.

CHAOS (2021)

Article Engineering, Mechanical

Diversity of neuronal activity is provided by hybrid synapses

Kesheng Xu et al.

Summary: The coexistence of electrical and chemical synaptic communication among excitatory cells has been confirmed, but the theoretical understanding of hybrid synaptic connections in various dynamical states of neural networks is not fully studied. A neural network model including electrical and chemical synaptic connections was used to investigate synchronization and firing patterns among excitatory cells, revealing tendencies towards synchronization and the ability to cause various firing patterns by slightly changing the synaptic weights. This study lays a foundation for understanding the computational significance of mixed synapse in neural functions.

NONLINEAR DYNAMICS (2021)

Article Engineering, Multidisciplinary

Discrete memristive neuron model and its interspike interval-encoded application in image encryption

Bao Han et al.

Summary: The phenomenon of bursting in neuronal activation patterns is common and diverse, indicating fast action voltage spiking periods followed by resting periods. The time between successive action voltage spikes, known as the interspike interval (ISI), is a key indicator used to characterize bursting. A three-dimensional memristive Hindmarsh-Rose (mHR) neuron model has been constructed to generate hidden chaotic bursting, but the properties of the discrete mHR neuron model have not been studied. This study presents a discrete mHR neuron model and explores different hidden chaotic bursting sequences under four typical parameter sets. Experimental results on ISI-encoded chaotic sequences show complex chaos properties compared to the original sequences. The ISI-encoded chaotic sequences are then applied to image encryption, demonstrating excellent robustness against various possible attacks based on experimental results and security analyses.

SCIENCE CHINA-TECHNOLOGICAL SCIENCES (2021)

Article Mathematics, Interdisciplinary Applications

SUPPRESSING SPIRAL WAVE TURBULENCE IN A SIMPLE FRACTIONAL-ORDER DISCRETE NEURON MAP USING IMPULSE TRIGGERING

Karthikeyan Rajagopal et al.

Summary: The paper presents a fractional-order 1D neuron map and analyzes its dynamical characteristics through bifurcation diagrams and Lyapunov exponents' diagram. In a 2D lattice, the emergence of spiral wave as a significant collective behavior is studied, along with the examination of the effects of changing stimuli and parameters in the network. Additionally, an effective method of suppressing the spiral wave through impulse triggering has been investigated.

FRACTALS-COMPLEX GEOMETRY PATTERNS AND SCALING IN NATURE AND SOCIETY (2021)

Article Engineering, Mechanical

Enhancement of synchronized chaotic state in a delay-coupled complex neuronal network

Mousumi Roy et al.

NONLINEAR DYNAMICS (2020)

Article Mathematics, Applied

Revealing a multiplex brain network through the analysis of recurrences

Nikita Frolov et al.

CHAOS (2020)

Review Biology

Chimera states in neuronal networks: A review

Soumen Majhi et al.

PHYSICS OF LIFE REVIEWS (2019)

Article Physics, Multidisciplinary

Synchronization to extreme events in moving agents

Sayantan Nag Chowdhury et al.

NEW JOURNAL OF PHYSICS (2019)

Article Physics, Fluids & Plasmas

Chimera state in complex networks of bistable Hodgkin-Huxley neurons

A. Andreev et al.

PHYSICAL REVIEW E (2019)

Article Mathematics, Applied

Chimera states in brain networks: Empirical neural vs. modular fractal connectivity

Teresa Chouzouris et al.

CHAOS (2018)

Article Engineering, Mechanical

Synchronization and firing patterns of coupled Rulkov neuronal map

Sarbendu Rakshit et al.

NONLINEAR DYNAMICS (2018)

Review Engineering, Mechanical

A review for dynamics in neuron and neuronal network

Jun Ma et al.

NONLINEAR DYNAMICS (2017)

Article Biochemical Research Methods

Inverse stochastic resonance in networks of spiking neurons

Muhammet Uzuntarla et al.

PLOS COMPUTATIONAL BIOLOGY (2017)

Article Mathematics, Applied

Vibrational resonance in a heterogeneous scale free network of neurons

Muhammet Uzuntarla et al.

COMMUNICATIONS IN NONLINEAR SCIENCE AND NUMERICAL SIMULATION (2015)

Article Physics, Multidisciplinary

International transmission of shocks and fragility of a bank network

Xiaobing Feng et al.

PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS (2014)

Editorial Material Mathematics, Applied

Evolving dynamical networks

Igor Belykh et al.

PHYSICA D-NONLINEAR PHENOMENA (2014)

Article Physics, Multidisciplinary

The Power Grid as a complex network: A survey

Giuliano Andrea Pagani et al.

PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS (2013)

Article Physics, Fluids & Plasmas

Clustering in delay-coupled smooth and relaxational chemical oscillators

Karen Blaha et al.

PHYSICAL REVIEW E (2013)

Article Physics, Multidisciplinary

Neutral theory of chemical reaction networks

Sang Hoon Lee et al.

NEW JOURNAL OF PHYSICS (2012)

Review Physics, Multidisciplinary

Map-based models in neuronal dynamics

B. Ibarz et al.

PHYSICS REPORTS-REVIEW SECTION OF PHYSICS LETTERS (2011)

Editorial Material Multidisciplinary Sciences

Economic Networks: The New Challenges

Frank Schweitzer et al.

SCIENCE (2009)

Article Business

Network Formation and the Structure of the Commercial World Wide Web

Zsolt Katona et al.

MARKETING SCIENCE (2008)

Review Physics, Multidisciplinary

Complex networks: Structure and dynamics

S. Boccaletti et al.

PHYSICS REPORTS-REVIEW SECTION OF PHYSICS LETTERS (2006)

Article Physics, Multidisciplinary

Network marketing on a small-world network

BJ Kim et al.

PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS (2006)

Article Physics, Multidisciplinary

Chaos synchronization of general complex dynamical networks

JH Lü et al.

PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS (2004)

Article Physics, Multidisciplinary

Enhancement of neural synchrony by time delay

M Dhamala et al.

PHYSICAL REVIEW LETTERS (2004)

Review Physics, Multidisciplinary

The synchronization of chaotic systems

S Boccaletti et al.

PHYSICS REPORTS-REVIEW SECTION OF PHYSICS LETTERS (2002)

Article Physics, Multidisciplinary

Secure exchange of information by synchronization of neural networks

I Kanter et al.

EUROPHYSICS LETTERS (2002)

Review Multidisciplinary Sciences

Exploring complex networks

SH Strogatz

NATURE (2001)