In this study, we investigate the correspondence between dynamic patterns of behavior in two types of computational models of neuronal activity. The first model type is the realistic neuronal model; the second model type is the phenomenological or analytical model. In the simplest model set-up of two interconnected units, we define a parameter space for both types of systems where their behavior is similar. Next we expand the analytical model to two sets of 90 fully interconnected units with some overlap, which can display multi-stable behavior. This system can be in three classes of states: (i) a class consisting of a single resting state, where all units of a set are in steady state, (ii) a class consisting of multiple preserving states, ...
dynamic of neurons We design and analyze the dynamics of a large network of theta neurons, which are...
We analyze a large system of heterogeneous quadratic integrate-and-fire (QIF) neurons with time dela...
We present a simplified phase model for neuronal dynamics with spike timing-dependent plasticity (ST...
The dynamical activity of a neural network model composed of electrically connected map-based neuron...
The coexistence of different attractors, known as multistability, is an exciting phenomenon in the n...
The field of neural network modelling has grown up on the premise that the massively parallel distri...
This report is concerned with the relevance of the microscopic rules that implement individual neuro...
We investigate the dynamical states of a two-dimensional network of Hindmarsh-Rose spiking neurons, ...
In recent years, an abundance of studies in complex systems research have focused on deciphering the...
Multistability of oscillatory and silent regimes is a ubiquitous phenomenon exhibited by excitable s...
Coupled nonlinear differential equations are derived for the dynamics of spatially localized populat...
We examine the collective dynamics of heterogeneous random networks of model neuronal cellular autom...
We study dynamics of a unidirectional ring of three Rulkov neurons coupled by chemical synapses. We ...
We construct and analyze a rate-based neural network model in which self-interacting units represent...
abstract: The Morris-Lecar two-dimensional conductance-based model for an excitable membrane can be ...
dynamic of neurons We design and analyze the dynamics of a large network of theta neurons, which are...
We analyze a large system of heterogeneous quadratic integrate-and-fire (QIF) neurons with time dela...
We present a simplified phase model for neuronal dynamics with spike timing-dependent plasticity (ST...
The dynamical activity of a neural network model composed of electrically connected map-based neuron...
The coexistence of different attractors, known as multistability, is an exciting phenomenon in the n...
The field of neural network modelling has grown up on the premise that the massively parallel distri...
This report is concerned with the relevance of the microscopic rules that implement individual neuro...
We investigate the dynamical states of a two-dimensional network of Hindmarsh-Rose spiking neurons, ...
In recent years, an abundance of studies in complex systems research have focused on deciphering the...
Multistability of oscillatory and silent regimes is a ubiquitous phenomenon exhibited by excitable s...
Coupled nonlinear differential equations are derived for the dynamics of spatially localized populat...
We examine the collective dynamics of heterogeneous random networks of model neuronal cellular autom...
We study dynamics of a unidirectional ring of three Rulkov neurons coupled by chemical synapses. We ...
We construct and analyze a rate-based neural network model in which self-interacting units represent...
abstract: The Morris-Lecar two-dimensional conductance-based model for an excitable membrane can be ...
dynamic of neurons We design and analyze the dynamics of a large network of theta neurons, which are...
We analyze a large system of heterogeneous quadratic integrate-and-fire (QIF) neurons with time dela...
We present a simplified phase model for neuronal dynamics with spike timing-dependent plasticity (ST...