Ejemplo n.º 1
0
def test_delay_doublepop():

    # Settings:
    t0 = 0.
    dt = .001
    tf = .010
    verbose = False

    # Create populations:
    b1 = ExternalPopulation(50)
    i1 = InternalPopulation(v_min=0, v_max=.02, dv=.001, update_method='exact')
    i2 = InternalPopulation(v_min=0, v_max=.02, dv=.001, update_method='exact')

    # Create connections:
    b1_i1 = Connection(b1, i1, 2, weights=[.005], probs=[1.])
    i1_i2 = Connection(i1, i2, 20, weights=[.005], probs=[1.], delay=2 * dt)

    # Create and run simulation:
    simulation = Simulation([b1, i1, i2], [b1_i1, i1_i2], verbose=verbose)
    simulation.run(dt=dt, tf=tf, t0=t0)

    true_ans = np.array([
        0, 0.0, 0.0, 0.0, 1.9089656152757652e-13, 1.9787511418980406e-10,
        9.5007650186649266e-09, 1.3334881090883857e-07, 1.0103767575651715e-06,
        5.3604521936092067e-06, 2.2383604753409621e-05
    ])
    np.testing.assert_almost_equal(i2.firing_rate_record, true_ans, 12)
Ejemplo n.º 2
0
def singlepop(steady_state, tau_m=.02, p0=((0.,),(1.,)), weights={'distribution':'delta', 'loc':.005}, bgfr=100, network_update_callback=lambda s: None, update_method='approx', simulation_configuration=None, tol=None, checkpoint_callback=None, nsyn=1):
    
    # Settings:
    t0 = 0.
    dt = .001
    dv = .001
    v_min = -.01
    v_max = .02
    tf = .1
    
    # Create simulation:
    b1 = ExternalPopulation(bgfr)
    i1 = InternalPopulation(v_min=v_min, tau_m=tau_m, v_max=v_max, dv=dv, update_method=update_method, p0=p0, tol=tol)
    b1_i1 = Connection(b1, i1, nsyn, weights=weights)
    network = Network([b1, i1], [b1_i1], update_callback=network_update_callback)
    if simulation_configuration is None:
        simulation_configuration = SimulationConfiguration(dt, tf, t0=t0)
    simulation = Simulation(network=network, simulation_configuration=simulation_configuration, checkpoint_callback=checkpoint_callback)
    simulation.run()
    b1.plot()
    
    i1.plot_probability_distribution()
    i1.plot()
    assert i1.n_edges == i1.n_bins+1 

    # Test steady-state:
    np.testing.assert_almost_equal(i1.get_firing_rate(.05), steady_state, 12)
Ejemplo n.º 3
0
def test_singlepop():
    
    # Settings:
    t0 = 0.
    dt = .001
    dv = .001
    v_min = -.01
    v_max = .02
    tf = .2
    verbose = False
    
    # Create simulation:
    b1 = ExternalPopulation(50)
    b2 = ExternalPopulation(50)
    i1 = InternalPopulation(v_min=v_min, v_max=v_max, dv=dv, update_method='exact')
    b1_i1 = Connection(b1, i1, 1, weights=[.005], probs=[1.])
    b2_i1 = Connection(b2, i1, 1, weights=[.005], probs=[1.])
    simulation = Simulation([b1, b2, i1], [b1_i1, b2_i1], verbose=verbose)
    simulation.run(dt=dt, tf=tf, t0=t0)
    
    np.testing.assert_almost_equal(i1.t_record[-1], .2, 15)
    np.testing.assert_almost_equal(i1.firing_rate_record[-1], 5.3550005434746355, 12)
    assert i1.n_bins == (v_max - v_min)/dv
    assert i1.n_edges - 1 == i1.n_bins
    assert len(simulation.population_list) == 3
    
    i1.plot_probability_distribution()
Ejemplo n.º 4
0
def singlepop(steady_state, tau_m=.02, p0=((0.,),(1.,)), weights={'distribution':'delta', 'loc':.005}, bgfr=100, network_update_callback=lambda s: None, update_method='approx', simulation_configuration=None, tol=None):
    
    # Settings:
    t0 = 0.
    dt = .001
    dv = .001
    v_min = -.01
    v_max = .02
    tf = .1
    
    # Create simulation:
    b1 = ExternalPopulation(bgfr)
    i1 = InternalPopulation(v_min=v_min, tau_m=tau_m, v_max=v_max, dv=dv, update_method=update_method, p0=p0, tol=tol)
    b1_i1 = Connection(b1, i1, 1, weights=weights)
    network = Network([b1, i1], [b1_i1], update_callback=network_update_callback)
    if simulation_configuration is None:
        simulation_configuration = SimulationConfiguration(dt, tf, t0=t0)
    simulation = Simulation(network=network, simulation_configuration=simulation_configuration)
    simulation.run()
    b1.plot()
    
    i1.plot_probability_distribution()
    i1.plot()
    assert i1.n_edges == i1.n_bins+1 

    # Test steady-state:    
    np.testing.assert_almost_equal(i1.get_firing_rate(.05), steady_state, 12)
Ejemplo n.º 5
0
def test_singlepop():

    # Settings:
    t0 = 0.
    dt = .001
    dv = .001
    v_min = -.01
    v_max = .02
    tf = .2
    verbose = False

    # Create simulation:
    b1 = ExternalPopulation(50)
    b2 = ExternalPopulation(50)
    i1 = InternalPopulation(v_min=v_min,
                            v_max=v_max,
                            dv=dv,
                            update_method='exact')
    b1_i1 = Connection(b1, i1, 1, weights=[.005], probs=[1.])
    b2_i1 = Connection(b2, i1, 1, weights=[.005], probs=[1.])
    simulation = Simulation([b1, b2, i1], [b1_i1, b2_i1], verbose=verbose)
    simulation.run(dt=dt, tf=tf, t0=t0)

    np.testing.assert_almost_equal(i1.t_record[-1], .2, 15)
    np.testing.assert_almost_equal(i1.firing_rate_record[-1],
                                   5.3550005434746355, 12)
    assert i1.n_bins == (v_max - v_min) / dv
    assert i1.n_edges - 1 == i1.n_bins
    assert len(simulation.population_list) == 3

    i1.plot_probability_distribution()
Ejemplo n.º 6
0
def test_delay_singlepop():

    # Settings:
    t0 = 0.
    dt = .001
    tf = .005
    verbose = False
    
    # Create simulation:
    b1 = ExternalPopulation('Heaviside(t)*100')
    i1 = InternalPopulation(v_min=0, v_max=.02, dv=.001, update_method='exact')
    b1_i1 = Connection(b1, i1, 1, weights=[.005], probs=[1.], delay=2*dt)
    simulation = Simulation([b1, i1], [b1_i1], verbose=verbose)
    simulation.run(dt=dt, tf=tf, t0=t0)
    
    true_ans = np.array([0, 0.0, 0.0, 0.00066516669656511084, 0.025842290308637855, 0.08117342489138904])
    np.testing.assert_almost_equal(i1.firing_rate_record, true_ans, 12)
Ejemplo n.º 7
0
def test_marshal_simulation():
    
    from dipde.examples.excitatory_inhibitory import get_network
    
    simulation_configuration_full = SimulationConfiguration(dt=.001, tf=.02, t0=0)
    simulation_configuration_p1 = SimulationConfiguration(dt=.001, tf=.01, t0=0)
    simulation_configuration_p2 = SimulationConfiguration(dt=.001, tf=.01, t0=0)
    
    # Run full simulation:
    simulation_full = Simulation(network=get_network(), simulation_configuration=simulation_configuration_full)
    assert simulation_full.completed == False
    simulation_full.run()
    assert simulation_full.completed == True
    
    # Run simulation, part 1: 
    simulation_p1 = Simulation(network=get_network(), simulation_configuration=simulation_configuration_p1)
    simulation_p1.run()
    s_midway = simulation_p1.to_json()

    # Run simulation, part 2:
    simulation_p2 = Simulation(**json.loads(s_midway))
    simulation_p2.simulation_configuration = simulation_configuration_p2
    simulation_p2.run()

    # Run copy half way, round trip, and then finish:

    # Compare:
    y1 = simulation_full.network.population_list[1].firing_rate_record
    y2 = simulation_p2.network.population_list[1].firing_rate_record
    
    assert len(y1) == len(y2)
    for y1i, y2i in zip(y1, y2):
        np.testing.assert_almost_equal(y1i, y2i, 12)
        
    simulation_full.to_json(StringIO.StringIO())
Ejemplo n.º 8
0
def test_delay_doublepop():

    # Settings:
    t0 = 0.
    dt = .001
    tf = .010
    verbose = False
    
    # Create populations:
    b1 = ExternalPopulation(50)
    i1 = InternalPopulation(v_min=0, v_max=.02, dv=.001, update_method='exact')
    i2 = InternalPopulation(v_min=0, v_max=.02, dv=.001, update_method='exact')
    
    # Create connections:
    b1_i1 = Connection(b1, i1, 2, weights=[.005], probs=[1.])
    i1_i2 = Connection(i1, i2, 20, weights=[.005], probs=[1.], delay=2*dt)
    
    # Create and run simulation:
    simulation = Simulation([b1, i1, i2], [b1_i1, i1_i2], verbose=verbose)
    simulation.run(dt=dt, tf=tf, t0=t0)
    
    
    true_ans = np.array([0, 0.0, 0.0, 0.0, 1.9089656152757652e-13, 1.9787511418980406e-10, 9.5007650186649266e-09, 1.3334881090883857e-07, 1.0103767575651715e-06, 5.3604521936092067e-06, 2.2383604753409621e-05])
    np.testing.assert_almost_equal(i2.firing_rate_record, true_ans, 12)
        weight = conn_weights[source_celltype]
        curr_connection = Connection(source_population,
                                     target_population,
                                     nsyn,
                                     weights=[weight],
                                     probs=[1.],
                                     delay=0)
        connection_list.append(curr_connection)

# Create simulation:
population_list = background_population_dict.values(
) + internal_population_dict.values()
simulation = Simulation(population_list, connection_list, verbose=True)

# Run simulation:
simulation.run(dt=dt, tf=tf, t0=t0)

# Visualize:
y_label_dict = {23: '2/3', 4: '4', 5: '5', 6: '6'}
fig, axes = plt.subplots(nrows=4, ncols=1, **{'figsize': (4, 8)})
for row_ind, layer in enumerate([23, 4, 5, 6]):
    for plot_color, celltype in zip(['r', 'b'], ['e', 'i']):
        curr_population = internal_population_dict[layer, celltype]
        axes[row_ind].plot(curr_population.t_record,
                           curr_population.firing_rate_record, plot_color)

    axes[row_ind].set_xlim([0, tf])
    axes[row_ind].set_ylim(ymin=0)
    axes[row_ind].set_ylabel('Layer %s\nfiring rate (Hz)' %
                             y_label_dict[layer])
    if layer == 5:
        source_population = internal_population_dict[source_layer, source_celltype]
        target_population = internal_population_dict[target_layer, target_celltype]
        nsyn = (
            connection_probabilities[(source_layer, source_celltype), (target_layer, target_celltype)]
            * internal_population_sizes[source_layer, source_celltype]
        )
        weight = conn_weights[source_celltype]
        curr_connection = Connection(source_population, target_population, nsyn, weights=[weight], probs=[1.0], delay=0)
        connection_list.append(curr_connection)

# Create simulation:
population_list = background_population_dict.values() + internal_population_dict.values()
simulation = Simulation(population_list, connection_list, verbose=True)

# Run simulation:
simulation.run(dt=dt, tf=tf, t0=t0)

# Visualize:
y_label_dict = {23: "2/3", 4: "4", 5: "5", 6: "6"}
fig, axes = plt.subplots(nrows=4, ncols=1, **{"figsize": (4, 8)})
for row_ind, layer in enumerate([23, 4, 5, 6]):
    for plot_color, celltype in zip(["r", "b"], ["e", "i"]):
        curr_population = internal_population_dict[layer, celltype]
        axes[row_ind].plot(curr_population.t_record, curr_population.firing_rate_record, plot_color)

    axes[row_ind].set_xlim([0, tf])
    axes[row_ind].set_ylim(ymin=0)
    axes[row_ind].set_ylabel("Layer %s\nfiring rate (Hz)" % y_label_dict[layer])
    if layer == 5:
        axes[row_ind].legend(["Excitatory", "Inhibitory"], prop={"size": 10}, loc=4)