aeif_psc_exp – Current-based exponential integrate-and-fire neuron model¶
Description¶
aeif_psc_exp
is the adaptive exponential integrate and fire neuron
according to Brette and Gerstner (2005), with postsynaptic currents
in the form of truncated exponentials.
This implementation uses the embedded 4th order Runge-Kutta-Fehlberg solver with adaptive stepsize to integrate the differential equation.
The membrane potential is given by the following differential equation:
and
Here \(H(t)\) is the Heaviside step function and k indexes incoming spikes.
For implementation details see the aeif_models_implementation notebook.
See also [1].
Parameters¶
The following parameters can be set in the status dictionary.
Dynamic state variables: |
||
V_m |
mV |
Membrane potential |
I_ex |
pA |
Excitatory synaptic current |
I_in |
pA |
Inhibitory synaptic current |
w |
pA |
Spike-adaptation current |
Membrane Parameters |
||
C_m |
pF |
Capacity of the membrane |
t_ref |
ms |
Duration of refractory period |
V_reset |
mV |
Reset value for V_m after a spike |
E_L |
mV |
Leak reversal potential |
g_L |
nS |
Leak conductance |
I_e |
pA |
Constant external input current |
Spike adaptation parameters |
||
a |
ns |
Subthreshold adaptation |
b |
pA |
Spike-triggered adaptation |
Delta_T |
mV |
Slope factor |
tau_w |
ms |
Adaptation time constant |
V_th |
mV |
Spike initiation threshold |
V_peak |
mV |
Spike detection threshold |
Synaptic parameters |
||
tau_syn_ex |
ms |
Exponential decay time constant of excitatory synaptic conductance kernel |
tau_syn_in |
ms |
Exponential decay time constant of inhibitory synaptic conductance kernel |
Integration parameters |
||
gsl_error_tol |
real |
This parameter controls the admissible error of the GSL integrator. Reduce it if NEST complains about numerical instabilities |
Sends¶
SpikeEvent
Receives¶
SpikeEvent, CurrentEvent, DataLoggingRequest
References¶
See also¶
Neuron, Integrate-And-Fire, Adaptive Threshold, Current-Based