Realistic neural networks involve the coexistence of stiff, coupled, con-tinuous differential equations arising from the integrations of individual neurons, with the discrete events with delays used for modeling synaptic connections. We present here an integration method, the local variable time-step method (lvardt), that uses separate variable-step integrators for individual neurons in the network. Cells that are undergoing excitation tend to have small time steps, and cells that are at rest with little synap-tic input tend to have large time steps. A synaptic input to a cell causes reinitialization of only that cell’s integrator without affecting the inte-gration of other cells. We illustrated the use of lvardt on three models: a worst-ca...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
An event-based integration scheme for an integrate-and-fire neuron model with exponentially decaying...
Very large networks of spiking neurons can be simulated efficiently in parallel under the constraint...
For simulations of neural networks, there is a trade-off between the size of the network that can be...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/2...
International audienceIn traditional event-driven strategies, spike timings are analytically given o...
In traditional event-driven strategies, spike timings are analytically given or calculated with arb...
Markov kinetic models constitute a powerful framework to analyze patch-clamp data from single-channe...
On the level of the spiking activity, the integrate-and-fire neuron is one of the most commonly used...
An event-based integration scheme for an integrate-and-fire neuron model with exponentially decaying...
Recently, van Elberg and van Ooyen (2009) published a generalization of the Event-Based Integration ...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
An event-based integration scheme for an integrate-and-fire neuron model with exponentially decaying...
Very large networks of spiking neurons can be simulated efficiently in parallel under the constraint...
For simulations of neural networks, there is a trade-off between the size of the network that can be...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/2...
International audienceIn traditional event-driven strategies, spike timings are analytically given o...
In traditional event-driven strategies, spike timings are analytically given or calculated with arb...
Markov kinetic models constitute a powerful framework to analyze patch-clamp data from single-channe...
On the level of the spiking activity, the integrate-and-fire neuron is one of the most commonly used...
An event-based integration scheme for an integrate-and-fire neuron model with exponentially decaying...
Recently, van Elberg and van Ooyen (2009) published a generalization of the Event-Based Integration ...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
An event-based integration scheme for an integrate-and-fire neuron model with exponentially decaying...