# Stability and bifurcation analysis of a six-neuron BAM neural network model with discrete delays

@article{Xu2011StabilityAB, title={Stability and bifurcation analysis of a six-neuron BAM neural network model with discrete delays}, author={Changjin Xu and Xianhua Tang and Maoxin Liao}, journal={Neurocomputing}, year={2011}, volume={74}, pages={689-707} }

## 54 Citations

Stability and Hopf bifurcation on four-neuron neural networks with inertia and multiple delays

- MathematicsNeurocomputing
- 2018

Stability and Hopf bifurcation of three-triangle neural networks with delays

- MathematicsNeurocomputing
- 2018

High codimensional bifurcation analysis to a six-neuron BAM neural network

- MathematicsCognitive Neurodynamics
- 2015

In this article, the high codimension bifurcations of a six-neuron BAM neural network system with multiple delays are addressed and the normal forms of Bogdanovâ€“Takens and triple zero bifURcations are presented.

Bifurcation Analysis for Simplified Five-Neuron Bidirectional Associative Memory Neural Networks with Four Delays

- MathematicsNeural Processing Letters
- 2019

The stability and bifurcation analysis of a class of simplified five-neuron bidirectional associative memory neural networks with four delays is dealt with, with the aid of the normal form theory and center manifold theory.

Dynamical analysis of a delayed six-neuron BAM network

- MathematicsComplex.
- 2016

A simplified bidirectional associative memory network with delays involving six neurons is considered and it is revealed that Hopf bifurcation occurs when the sum of the delay passes through a critical value.

Bifurcation Behavior for an Electronic Neural Network Model with Two Different Delays

- Mathematics, EngineeringNeural Processing Letters
- 2014

The conditions for the local stability and the existence of Hopf bifurcation at the equilibrium of the system are derived by applying the normal form theory and center manifold theory.

Bifurcation analysis in a class of neural network models with discrete and distributed delays

- MathematicsProceedings of the 33rd Chinese Control Conference
- 2014

This paper investigates the stability and Hopf bifurcation in a class of neural networks with two neurons. This model involves discrete and distributed delays described by an integral with a strongâ€¦

Bifurcation analysis in a class of neural network models with discrete and distributed delays

- MathematicsCCC 2014
- 2014

This paper investigates the stability and Hopf bifurcation in a class of neural networks with two neurons. This model involves discrete and distributed delays described by an integral with a strongâ€¦

Global existence of periodic solutions in a six-neuron BAM neural network model with discrete delays

- MathematicsNeurocomputing
- 2011

Dynamical Behavior in a Four-Dimensional Neural Network Model with Delay

- MathematicsAdv. Artif. Neural Syst.
- 2012

A four-dimensional neural network model with delay with delay is investigated and the explicit formulae for determining the properties of the bifurcating periodic solutions are derived.

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