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GenerateNetwork.py
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GenerateNetwork.py
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#
#
from neuroml import NeuroMLDocument
from neuroml import Network
from neuroml import Population
from neuroml import Location
from neuroml import Instance
from neuroml import Projection
from neuroml import Connection
from neuroml import IncludeType
from neuroml import InputList
from neuroml import Input
from neuroml import PoissonFiringSynapse
from neuroml import PulseGenerator
from neuroml import __version__
import neuroml.writers as writers
from pyneuroml import pynml
from pyneuroml.lems.LEMSSimulation import LEMSSimulation
from random import random
from random import seed
def add_connection(projection, id, pre_pop, pre_component, pre_cell_id, pre_seg_id, post_pop, post_component, post_cell_id, post_seg_id):
connection = Connection(id=id, \
pre_cell_id="../%s/%i/%s"%(pre_pop, pre_cell_id, pre_component), \
pre_segment_id=pre_seg_id, \
pre_fraction_along=0.5,
post_cell_id="../%s/%i/%s"%(post_pop, post_cell_id, post_component), \
post_segment_id=post_seg_id,
post_fraction_along=0.5)
projection.connections.append(connection)
def generate_example_network(network_id,
numCells_exc,
numCells_inh,
x_size = 1000,
y_size = 100,
z_size = 1000,
exc_group_component = "SimpleIaF",
inh_group_component = "SimpleIaF_inh",
validate = True,
random_seed = 1234,
generate_lems_simulation = False,
connections = True,
connection_probability_exc_exc = 0.4,
connection_probability_inh_exc = 0.4,
connection_probability_exc_inh = 0.4,
connection_probability_inh_inh = 0.4,
inputs = False,
input_firing_rate = 50, # Hz
input_offset_min = 0, # nA
input_offset_max = 0, # nA
num_inputs_per_exc = 4,
duration = 500, # ms
dt = 0.05,
temperature="32.0 degC"):
seed(random_seed)
nml_doc = NeuroMLDocument(id=network_id)
net = Network(id = network_id,
type = "networkWithTemperature",
temperature = temperature)
net.notes = "Network generated using libNeuroML v%s"%__version__
nml_doc.networks.append(net)
for cell_comp in set([exc_group_component, inh_group_component]): # removes duplicates
nml_doc.includes.append(IncludeType(href='%s.cell.nml'%cell_comp))
# The names of the Exc & Inh groups/populations
exc_group = "Exc"
inh_group = "Inh"
# The names of the network connections
net_conn_exc_inh = "NetConn_Exc_Inh"
net_conn_inh_exc = "NetConn_Inh_Exc"
net_conn_exc_exc = "NetConn_Exc_Exc"
net_conn_inh_inh = "NetConn_Inh_Inh"
# The names of the synapse types (should match names at Cell Mechanism/Network tabs in neuroConstruct)
exc_inh_syn = "AMPAR"
inh_exc_syn = "GABAA"
exc_exc_syn = "AMPAR"
inh_inh_syn = "GABAA"
for syn in [exc_inh_syn, inh_exc_syn]:
nml_doc.includes.append(IncludeType(href='%s.synapse.nml'%syn))
# Generate excitatory cells
exc_pop = Population(id=exc_group, component=exc_group_component, type="populationList", size=numCells_exc)
net.populations.append(exc_pop)
for i in range(0, numCells_exc) :
index = i
inst = Instance(id=index)
exc_pop.instances.append(inst)
inst.location = Location(x=str(x_size*random()), y=str(y_size*random()), z=str(z_size*random()))
# Generate inhibitory cells
inh_pop = Population(id=inh_group, component=inh_group_component, type="populationList", size=numCells_inh)
net.populations.append(inh_pop)
for i in range(0, numCells_inh) :
index = i
inst = Instance(id=index)
inh_pop.instances.append(inst)
inst.location = Location(x=str(x_size*random()), y=str(y_size*random()), z=str(z_size*random()))
if connections:
proj_exc_exc = Projection(id=net_conn_exc_exc, presynaptic_population=exc_group, postsynaptic_population=exc_group, synapse=exc_exc_syn)
net.projections.append(proj_exc_exc)
proj_exc_inh = Projection(id=net_conn_exc_inh, presynaptic_population=exc_group, postsynaptic_population=inh_group, synapse=exc_inh_syn)
net.projections.append(proj_exc_inh)
proj_inh_exc = Projection(id=net_conn_inh_exc, presynaptic_population=inh_group, postsynaptic_population=exc_group, synapse=inh_exc_syn)
net.projections.append(proj_inh_exc)
proj_inh_inh = Projection(id=net_conn_inh_inh, presynaptic_population=inh_group, postsynaptic_population=inh_group, synapse=inh_inh_syn)
net.projections.append(proj_inh_inh)
count_exc_inh = 0
count_inh_exc = 0
count_exc_exc = 0
count_inh_inh = 0
for i in range(0, numCells_exc):
for j in range(0, numCells_inh):
if i != j:
if random()<connection_probability_exc_inh:
add_connection(proj_exc_inh, count_exc_inh, exc_group, exc_group_component, i, 0, inh_group, inh_group_component, j, 0)
count_exc_inh+=1
if random()<connection_probability_inh_exc:
add_connection(proj_inh_exc, count_inh_exc, inh_group, inh_group_component, j, 0, exc_group, exc_group_component, i, 0)
count_inh_exc+=1
for i in range(0, numCells_exc):
for j in range(0, numCells_exc):
if i != j:
if random()<connection_probability_exc_exc:
add_connection(proj_exc_exc, count_exc_exc, exc_group, exc_group_component, i, 0, exc_group, exc_group_component, j, 0)
count_exc_exc+=1
for i in range(0, numCells_inh):
for j in range(0, numCells_inh):
if i != j:
if random()<connection_probability_inh_inh:
add_connection(proj_inh_inh, count_inh_inh, inh_group, inh_group_component, j, 0, inh_group, inh_group_component, i, 0)
count_inh_inh+=1
if inputs:
if input_firing_rate>0:
mf_input_syn = "AMPAR"
if mf_input_syn!=exc_inh_syn and mf_input_syn!=inh_exc_syn:
nml_doc.includes.append(IncludeType(href='%s.synapse.nml'%mf_input_syn))
rand_spiker_id = "input_%sHz"%input_firing_rate
pfs = PoissonFiringSynapse(id=rand_spiker_id,
average_rate="%s per_s"%input_firing_rate,
synapse=mf_input_syn,
spike_target="./%s"%mf_input_syn)
nml_doc.poisson_firing_synapses.append(pfs)
input_list = InputList(id="Input_0",
component=rand_spiker_id,
populations=exc_group)
count = 0
for i in range(0, numCells_exc):
for j in range(num_inputs_per_exc):
input = Input(id=count,
target="../%s/%i/%s"%(exc_group, i, exc_group_component),
destination="synapses")
input_list.input.append(input)
count += 1
net.input_lists.append(input_list)
if input_offset_max != 0 or input_offset_min != 0:
for i in range(0, numCells_exc):
pg = PulseGenerator(id="PulseGenerator_%i"%i,
delay="0ms",
duration="%sms"%duration,
amplitude="%fnA"%(input_offset_min+(input_offset_max-input_offset_min)*random()))
nml_doc.pulse_generators.append(pg)
input_list = InputList(id="Input_Pulse_List_%i"%i,
component=pg.id,
populations=exc_group)
input = Input(id=0,
target="../%s/%i/%s"%(exc_group, i, exc_group_component),
destination="synapses")
input_list.input.append(input)
net.input_lists.append(input_list)
####### Write to file ######
print("Saving to file...")
nml_file = network_id+'.net.nml'
writers.NeuroMLWriter.write(nml_doc, nml_file)
print("Written network file to: "+nml_file)
if validate:
###### Validate the NeuroML ######
from neuroml.utils import validate_neuroml2
validate_neuroml2(nml_file)
if generate_lems_simulation:
# Create a LEMSSimulation to manage creation of LEMS file
ls = LEMSSimulation("Sim_%s"%network_id, duration, dt)
# Point to network as target of simulation
ls.assign_simulation_target(net.id)
# Include generated/existing NeuroML2 files
ls.include_neuroml2_file('%s.cell.nml'%exc_group_component)
ls.include_neuroml2_file('%s.cell.nml'%inh_group_component)
ls.include_neuroml2_file(nml_file)
# Specify Displays and Output Files
disp_exc = "display_exc"
ls.create_display(disp_exc, "Voltages Exc cells", "-80", "50")
of_exc = 'Volts_file_exc'
ls.create_output_file(of_exc, "v_exc.dat")
disp_inh = "display_inh"
ls.create_display(disp_inh, "Voltages Inh cells", "-80", "50")
of_inh = 'Volts_file_inh'
ls.create_output_file(of_inh, "v_inh.dat")
for i in range(numCells_exc):
quantity = "%s/%i/%s/v"%(exc_group, i, exc_group_component)
ls.add_line_to_display(disp_exc, "Exc %i: Vm"%i, quantity, "1mV", pynml.get_next_hex_color())
ls.add_column_to_output_file(of_exc, "v_%i"%i, quantity)
for i in range(numCells_inh):
quantity = "%s/%i/%s/v"%(inh_group, i, inh_group_component)
ls.add_line_to_display(disp_inh, "Inh %i: Vm"%i, quantity, "1mV", pynml.get_next_hex_color())
ls.add_column_to_output_file(of_inh, "v_%i"%i, quantity)
# Save to LEMS XML file
lems_file_name = ls.save_to_file()
print "-----------------------------------"
if __name__ == "__main__":
generate_example_network("CortexDemoHH",
numCells_exc = 50,
numCells_inh = 20,
exc_group_component = "HHCell",
inh_group_component = "HHCell",
x_size = 200,
y_size = 100,
z_size = 200,
connections = True,
connection_probability_exc_exc = 0.25,
connection_probability_inh_exc = 0.7,
connection_probability_exc_inh = 0.3,
connection_probability_inh_inh = 0.1,
inputs = True,
input_firing_rate = 0, # Hz
input_offset_min = 0, # nA
input_offset_max = 0.4, # nA
num_inputs_per_exc = 1,
generate_lems_simulation = True,
duration = 400 )