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# Pulse packet example¶

This script compares the average and individual membrane potential excursions in response to a single pulse packet with an analytically acquired voltage trace (see: Diesmann 1) A pulse packet is a transient spike volley with a Gaussian rate profile. The user can specify the neural parameters, the parameters of the pulse-packet and the number of trials.

## References¶

- 1(1,2,3,4,5)
Diesmann M. 2002. Dissertation. Conditions for stable propagation of synchronous spiking in cortical neural networks: Single neuron dynamics and network properties. http://d-nb.info/968772781/34.

First, we import all necessary modules for simulation, analysis and plotting.

```
import scipy.special as sp
import nest
import numpy
import matplotlib.pyplot as plt
# Properties of pulse packet:
a = 100 # number of spikes in one pulse packet
sdev = 10. # width of pulse packet (ms)
weight = 0.1 # PSP amplitude (mV)
pulsetime = 500. # occurrence time (center) of pulse-packet (ms)
# Network and neuron characteristics:
n_neurons = 100 # number of neurons
cm = 200. # membrane capacitance (pF)
tau_s = 0.5 # synaptic time constant (ms)
tau_m = 20. # membrane time constant (ms)
V0 = 0.0 # resting potential (mV)
Vth = numpy.inf # firing threshold, high value to avoid spiking
# Simulation and analysis parameters:
simtime = 1000. # how long we simulate (ms)
simulation_resolution = 0.1 # (ms)
sampling_resolution = 1. # for voltmeter (ms)
convolution_resolution = 1. # for the analytics (ms)
# Some parameters in base units.
Cm = cm * 1e-12 # convert to Farad
Weight = weight * 1e-12 # convert to Ampere
Tau_s = tau_s * 1e-3 # convert to sec
Tau_m = tau_m * 1e-3 # convert to sec
Sdev = sdev * 1e-3 # convert to sec
Convolution_resolution = convolution_resolution * 1e-3 # convert to sec
```

This function calculates the membrane potential excursion in response to a single input spike (the equation is given for example in Diesmann 1, eq.2.3). It expects:

`Time`

: a time array or a single time point (in sec)`Tau_s`

and`Tau_m`

: the synaptic and the membrane time constant (in sec)`Cm`

: the membrane capacity (in Farad)`Weight`

: the synaptic weight (in Ampere)

It returns the provoked membrane potential (in mV)

```
def make_psp(Time, Tau_s, Tau_m, Cm, Weight):
term1 = (1 / Tau_s - 1 / Tau_m)
term2 = numpy.exp(-Time / Tau_s)
term3 = numpy.exp(-Time / Tau_m)
PSP = (Weight / Cm * numpy.exp(1) / Tau_s *
(((-Time * term2) / term1) + (term3 - term2) / term1 ** 2))
return PSP * 1e3
```

This function finds the exact location of the maximum of the PSP caused by a
single input spike. The location is obtained by setting the first derivative
of the equation for the PSP (see `make_psp()`

) to zero. The resulting
equation can be expressed in terms of a LambertW function.
This function expects:

`Tau_s`

and`Tau_m`

: the synaptic and membrane time constant (in sec)

It returns the location of the maximum (in sec)

```
def LambertWm1(x):
# Using scipy to mimic the gsl_sf_lambert_Wm1 function.
return sp.lambertw(x, k=-1 if x < 0 else 0).real
def find_loc_pspmax(tau_s, tau_m):
var = tau_m / tau_s
lam = LambertWm1(-numpy.exp(-1 / var) / var)
t_maxpsp = (-var * lam - 1) / var / (1 / tau_s - 1 / tau_m) * 1e-3
return t_maxpsp
```

First, we construct a Gaussian kernel for a given standard derivation
(`sig`

) and mean value (`mu`

). In this case the standard derivation is
the width of the pulse packet (see 1).

```
sig = Sdev
mu = 0.0
x = numpy.arange(-4 * sig, 4 * sig, Convolution_resolution)
term1 = 1 / (sig * numpy.sqrt(2 * numpy.pi))
term2 = numpy.exp(-(x - mu)**2 / (sig**2 * 2))
gauss = term1 * term2 * Convolution_resolution
```

Second, we calculate the PSP of a neuron due to a single spiking input.
(see Diesmann 2002, eq. 2.3).
Since we do that in discrete time steps, we first construct an array
(`t_psp`

) that contains the time points we want to consider. Then, the
function `make_psp()`

(that creates the PSP) takes the time array as its
first argument.

```
t_psp = numpy.arange(0, 10 * (Tau_m + Tau_s), Convolution_resolution)
psp = make_psp(t_psp, Tau_s, Tau_m, Cm, Weight)
```

Now, we want to normalize the PSP amplitude to one. We therefore have to
divide the PSP by its maximum (1 sec 6.1). The function
`find_loc_pspmax()`

returns the exact time point (`t_pspmax`

) when we
expect the maximum to occur. The function `make_psp()`

calculates the
corresponding PSP value, which is our PSP amplitude (`psp_amp`

).

```
t_pspmax = find_loc_pspmax(Tau_s, Tau_m)
psp_amp = make_psp(t_pspmax, Tau_s, Tau_m, Cm, Weight)
psp_norm = psp / psp_amp
```

Now we have all ingredients to compute the membrane potential excursion (U). This calculation implies a convolution of the Gaussian with the normalized PSP (see 1, eq. 6.9). In order to avoid an offset in the convolution, we need to add a pad of zeros on the left side of the normalized PSP. Later on we want to compare our analytical results with the simulation outcome. Therefore we need a time vector (t_U) with the correct temporal resolution, which places the excursion of the potential at the correct time.

```
psp_norm = numpy.pad(psp_norm, [len(psp_norm) - 1, 1], mode='constant')
U = a * psp_amp * numpy.convolve(gauss, psp_norm)
ulen = len(U)
t_U = (convolution_resolution * numpy.linspace(-ulen / 2., ulen / 2., ulen) +
pulsetime + 1.)
```

In this section we simulate a network of multiple neurons. All these neurons receive an individual pulse packet that is drawn from a Gaussian distribution.

We reset the Kernel, define the simulation resolution and set the
verbosity using `set_verbosity`

to suppress info messages.

```
nest.ResetKernel()
nest.set_verbosity("M_WARNING")
nest.resolution = simulation_resolution
```

Afterwards we create several neurons, the same amount of pulse-packet-generators and a voltmeter. All these nodes/devices have specific properties that are specified in device specific dictionaries (here: neuron_pars for the neurons, ppg_pars for the and pulse-packet-generators and vm_pars for the voltmeter).

```
neuron_pars = {
'V_th': Vth,
'tau_m': tau_m,
'tau_syn_ex': tau_s,
'C_m': cm,
'E_L': V0,
'V_reset': V0,
'V_m': V0
}
neurons = nest.Create('iaf_psc_alpha', n_neurons, neuron_pars)
ppg_pars = {
'pulse_times': [pulsetime],
'activity': a,
'sdev': sdev
}
ppgs = nest.Create('pulsepacket_generator', n_neurons, ppg_pars)
vm_pars = {'interval': sampling_resolution}
vm = nest.Create('voltmeter', params=vm_pars)
```

Now, we connect each pulse generator to one neuron via static synapses.
We use the default static synapse, with specified weight.
The command `Connect`

connects all kinds of nodes/devices. Since multiple
nodes/devices can be connected in different ways e.g., each source connects
to all targets, each source connects to a subset of targets or each source
connects to exactly one target, we have to specify the connection. In our
case we use the `one_to_one`

connection routine since we connect one pulse
generator (source) to one neuron (target).
In addition we also connect the voltmeter to the neurons.

```
nest.Connect(ppgs, neurons, 'one_to_one', syn_spec={'weight': weight})
nest.Connect(vm, neurons, syn_spec={'weight': weight})
```

In the next step we run the simulation for a given duration in ms.

```
nest.Simulate(simtime)
```

Finally, we record the membrane potential, when it occurred and to which
neuron it belongs. The sender and the time point of a voltage
data point at position x in the voltage array (`V_m`

), can be found at the
same position x in the sender (senders) and the time array (times).

```
Vm = vm.get('events', 'V_m')
times = vm.get('events', 'times')
senders = vm.get('events', 'senders')
```

Here we plot the membrane potential derived from the theory and from the simulation. Since we simulate multiple neurons that received slightly different pulse packets, we plot the individual and the averaged membrane potentials.

We plot the analytical solution U (the resting potential V0 shifts the membrane potential up or downwards).

```
plt.plot(t_U, U + V0, 'r', lw=2, zorder=3, label='analytical solution')
```

Then we plot all individual membrane potentials. The time axes is the range of the simulation time in steps of ms.

```
Vm_single = [Vm[senders == n.global_id] for n in neurons]
simtimes = numpy.arange(1, simtime)
for idn in range(n_neurons):
if idn == 0:
plt.plot(simtimes, Vm_single[idn], 'gray',
zorder=1, label='single potentials')
else:
plt.plot(simtimes, Vm_single[idn], 'gray', zorder=1)
```

Finally, we plot the averaged membrane potential.

```
Vm_average = numpy.mean(Vm_single, axis=0)
plt.plot(simtimes, Vm_average, 'b', lw=4,
zorder=2, label='averaged potential')
plt.legend()
plt.xlabel('time (ms)')
plt.ylabel('membrane potential (mV)')
plt.xlim((-5 * (tau_m + tau_s) + pulsetime,
10 * (tau_m + tau_s) + pulsetime))
plt.show()
```

**Total running time of the script:** ( 0 minutes 0.000 seconds)