run_entropy_maximisation_perlin_map.py 12 KB

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  1. import json
  2. import os
  3. import numpy as np
  4. from brian2.units import *
  5. from pypet import Environment, cartesian_product, Trajectory
  6. from pypet.brian2.parameter import Brian2MonitorResult
  7. from scripts.interneuron_placement import create_grid_of_excitatory_neurons, \
  8. create_interneuron_sheet_entropy_max_orientation, get_excitatory_neurons_in_inhibitory_axonal_clouds
  9. from scripts.ring_network.head_direction import ex_in_network
  10. from scripts.spatial_maps.uniform_perlin_map import UniformPerlinMap
  11. from scripts.spatial_network.head_direction_index_over_noise_scale import excitatory_eqs, excitatory_params, \
  12. lif_interneuron_eqs, lif_interneuron_params, lif_interneuron_options, ei_synapse_model, ei_synapse_on_pre, \
  13. ei_synapse_param, ie_synapse_model, ie_synapse_on_pre, ie_synapse_param, get_synaptic_weights, \
  14. create_head_direction_input
  15. POLARIZED = 'ellipsoid'
  16. CIRCULAR = 'circular'
  17. NO_SYNAPSES = 'no conn'
  18. def get_local_data_folder():
  19. data_folder = "../../../data/"
  20. config_file_name = ".config.json"
  21. if os.path.isfile(config_file_name):
  22. with open(config_file_name) as config_file:
  23. config_dict = json.load(config_file)
  24. data_folder = os.path.abspath(config_dict["data"])
  25. print(data_folder)
  26. return data_folder
  27. DATA_FOLDER = "../../../data/"
  28. LOG_FOLDER = "../../../logs/"
  29. TRAJ_NAME = "full_figure_perlin_map"
  30. def get_perlin_map(correlation_length, seed, sheet_size, N_E):
  31. number_of_excitatory_neurons_per_row = int(np.sqrt(N_E))
  32. map = UniformPerlinMap(number_of_excitatory_neurons_per_row + 1, number_of_excitatory_neurons_per_row + 1,
  33. correlation_length, sheet_size, sheet_size, seed)
  34. return map.get_tuning
  35. def spatial_network_with_entropy_maximisation(traj):
  36. sheet_size = traj.map.sheet_size
  37. N_E = traj.network.N_E
  38. N_I = traj.network.N_I
  39. perlin_map = get_perlin_map(traj.map.correlation_length, traj.map.seed,
  40. sheet_size, N_E)
  41. ex_positions, ex_tunings = create_grid_of_excitatory_neurons(sheet_size,
  42. sheet_size,
  43. int(np.sqrt(N_E)), perlin_map)
  44. inhibitory_axon_long_axis = traj.morphology.long_axis
  45. inhibitory_axon_short_axis = traj.morphology.short_axis
  46. entropy_maximisation_steps = traj.simulation.entropy_maximisation.steps if inhibitory_axon_long_axis != \
  47. inhibitory_axon_short_axis else 1
  48. inhibitory_axonal_clouds, ellipse_single_trial_entropy = create_interneuron_sheet_entropy_max_orientation(
  49. ex_positions, ex_tunings, N_I, inhibitory_axon_long_axis,
  50. inhibitory_axon_short_axis, sheet_size,
  51. sheet_size, trial_orientations=entropy_maximisation_steps)
  52. ie_connections = get_excitatory_neurons_in_inhibitory_axonal_clouds(ex_positions, inhibitory_axonal_clouds)
  53. inhibitory_synapse_strength = traj.synapse.inhibitory * nS
  54. excitatory_synapse_strength = traj.synapse.excitatory * mV
  55. if inhibitory_synapse_strength != 0.0 * nS and excitatory_synapse_strength != 0.0 * mV \
  56. and inhibitory_axon_long_axis == inhibitory_axon_short_axis:
  57. traj.f_add_derived_parameter("morphology.morph_label", CIRCULAR,
  58. comment="Interneuron morphology of this run is circular")
  59. elif inhibitory_synapse_strength != 0.0 * nS and excitatory_synapse_strength != 0.0 * mV:
  60. traj.f_add_derived_parameter("morphology.morph_label", POLARIZED,
  61. comment="Interneuron morphology of this run is ellipsoid")
  62. else:
  63. traj.f_add_derived_parameter("morphology.morph_label", NO_SYNAPSES,
  64. comment="There are no interneurons")
  65. ex_in_weights, in_ex_weights = get_synaptic_weights(N_E, N_I, ie_connections, excitatory_synapse_strength,
  66. inhibitory_synapse_strength)
  67. sharpness = 1.0 / (traj.input.width) ** 2
  68. directions = get_input_head_directions(traj)
  69. for idx, dir in enumerate(directions):
  70. # We recreate the network here for every dir, which slows down the simulation quite considerably. Otherwise,
  71. # we get a problem with saving and restoring the spike times (0s spike for neuron 0)
  72. net = ex_in_network(N_E, N_I, excitatory_eqs, excitatory_params, lif_interneuron_eqs,
  73. lif_interneuron_params,
  74. lif_interneuron_options, ei_synapse_model, ei_synapse_on_pre,
  75. ei_synapse_param,
  76. ex_in_weights, ie_synapse_model, ie_synapse_on_pre,
  77. ie_synapse_param, in_ex_weights, random_seed=2)
  78. input_to_excitatory_population = create_head_direction_input(traj.input.baseline * nA, ex_tunings,
  79. sharpness,
  80. traj.input.amplitude * nA, dir)
  81. excitatory_neurons = net["excitatory_neurons"]
  82. excitatory_neurons.I = input_to_excitatory_population
  83. inhibitory_neurons = net["interneurons"]
  84. inhibitory_neurons.u_ext = traj.inh_input.baseline * mV
  85. inhibitory_neurons.tau = traj.interneuron.tau * ms
  86. net.run(traj.simulation.duration * ms)
  87. direction_id = 'dir{:d}'.format(idx)
  88. traj.f_add_result(Brian2MonitorResult, '{:s}.spikes.e'.format(direction_id), net["excitatory_spike_monitor"],
  89. comment='The spiketimes of the excitatory population')
  90. traj.f_add_result(Brian2MonitorResult, '{:s}.spikes.i'.format(direction_id), net["inhibitory_spike_monitor"],
  91. comment='The spiketimes of the inhibitory population')
  92. traj.f_add_result('ex_positions', np.array(ex_positions),
  93. comment='The positions of the excitatory neurons on the sheet')
  94. traj.f_add_result('ex_tunings', np.array(ex_tunings),
  95. comment='The input tunings of the excitatory neurons')
  96. ie_connections_save_array = np.zeros((N_I, N_E))
  97. for i_idx, ie_conn in enumerate(ie_connections):
  98. for e_idx in ie_conn:
  99. ie_connections_save_array[i_idx, e_idx] = 1
  100. traj.f_add_result('ie_adjacency', ie_connections_save_array,
  101. comment='Recurrent connection adjacency matrix')
  102. axon_cloud_save_list = [[p.x, p.y, p.phi] for p in inhibitory_axonal_clouds]
  103. axon_cloud_save_array = np.array(axon_cloud_save_list)
  104. traj.f_add_result('inhibitory_axonal_cloud_array', axon_cloud_save_array,
  105. comment='The inhibitory axonal clouds')
  106. return 1
  107. def get_input_head_directions(traj):
  108. directions = np.linspace(-np.pi, np.pi, traj.input.number_of_directions, endpoint=False)
  109. return directions
  110. def main():
  111. env = Environment(trajectory=TRAJ_NAME,
  112. comment="Compare the head direction tuning for circular and ellipsoid interneuron morphology, "
  113. "when tuning orientations to maximise entropy of connected excitatory tunings.",
  114. multiproc=True, filename=DATA_FOLDER, ncores=30, overwrite_file=True, log_folder=LOG_FOLDER)
  115. traj = env.trajectory
  116. traj.f_add_parameter_group("map")
  117. traj.f_add_parameter("map.correlation_length", 200.0,
  118. comment="Correlation length of orientations in um")
  119. traj.f_add_parameter("map.seed", 1, comment="Random seed for map generation.")
  120. traj.f_add_parameter("map.sheet_size", 900, comment="Sheet size in um")
  121. traj.f_add_parameter_group("network")
  122. traj.f_add_parameter("network.N_E", 3600, comment="Number of excitatory neurons")
  123. traj.f_add_parameter("network.N_I", 400, comment="Number of inhibitory neurons")
  124. traj.f_add_parameter_group("interneuron")
  125. traj.f_add_parameter("interneuron.tau", 7., comment="Interneuron timescale in ms")
  126. traj.f_add_parameter_group("synapse")
  127. traj.f_add_parameter("synapse.inhibitory", 30.0, "Strength of conductance-based inhibitory synapse in nS.")
  128. traj.f_add_parameter("synapse.excitatory", 2.5, "Strength of conductance-based inhibitory synapse in mV.")
  129. traj.f_add_parameter_group("input")
  130. traj.f_add_parameter("input.width", 1. / np.sqrt(2.5), comment="Standard deviation of incoming head direction input.")
  131. traj.f_add_parameter("input.baseline", 0.05, comment="Head direction input baseline")
  132. traj.f_add_parameter("input.amplitude", 0.6, comment="Head direction input amplitude")
  133. traj.f_add_parameter("input.number_of_directions", 12, comment="Number of probed directions")
  134. traj.f_add_parameter_group("inh_input")
  135. traj.f_add_parameter("inh_input.baseline", -50., comment="Head direction input baseline")
  136. traj.f_add_parameter("inh_input.amplitude", 0., comment="Head direction input amplitude")
  137. traj.f_add_parameter_group("morphology")
  138. traj.f_add_parameter("morphology.long_axis", 100.0, comment="Long axis of axon ellipsoid")
  139. traj.f_add_parameter("morphology.short_axis", 25.0, comment="Short axis of axon ellipsoid")
  140. traj.f_add_parameter_group("simulation")
  141. traj.f_add_parameter("simulation.entropy_maximisation.steps", 30, comment="Steps for entropy maximisation")
  142. traj.f_add_parameter("simulation.dt", 0.1, comment="Network simulation time step in ms")
  143. traj.f_add_parameter("simulation.duration", 1000, comment="Network simulation duration in ms")
  144. correlation_length_range = np.linspace(1.0, 800.0, 24, endpoint=True).tolist()
  145. # correlation_length_range = [200.0]
  146. seed_range = range(10)
  147. # seed_range = [1]
  148. ellipsoid_parameter_exploration = {
  149. "morphology.long_axis": [100.0],
  150. "morphology.short_axis": [25.0],
  151. "map.correlation_length": correlation_length_range,
  152. "map.seed": seed_range,
  153. "synapse.inhibitory": [30.],
  154. "synapse.excitatory": [2.5]
  155. # "map.correlation_length": np.arange(0.0, 200.0, 50).tolist()
  156. }
  157. corresponding_circular_radius = float(np.sqrt(ellipsoid_parameter_exploration[
  158. "morphology.long_axis"][0] * ellipsoid_parameter_exploration[
  159. "morphology.short_axis"][0]))
  160. circle_parameter_exploration = {
  161. "morphology.long_axis": [corresponding_circular_radius],
  162. "morphology.short_axis": [corresponding_circular_radius],
  163. "map.correlation_length": ellipsoid_parameter_exploration["map.correlation_length"],
  164. "map.seed": ellipsoid_parameter_exploration["map.seed"],
  165. "synapse.inhibitory": ellipsoid_parameter_exploration["synapse.inhibitory"],
  166. "synapse.excitatory": ellipsoid_parameter_exploration["synapse.excitatory"]
  167. }
  168. no_conn_parameter_exploration = {
  169. "morphology.long_axis": [corresponding_circular_radius],
  170. "morphology.short_axis": [corresponding_circular_radius],
  171. "map.correlation_length": ellipsoid_parameter_exploration["map.correlation_length"],
  172. "map.seed": ellipsoid_parameter_exploration["map.seed"],
  173. "synapse.inhibitory": [0.],
  174. "synapse.excitatory": [0.]
  175. }
  176. expanded_dicts = [cartesian_product(dict) for dict in [ellipsoid_parameter_exploration,
  177. circle_parameter_exploration,
  178. no_conn_parameter_exploration]]
  179. final_dict = {}
  180. for key in expanded_dicts[0].keys():
  181. list_of_parameter_lists = [dict[key] for dict in expanded_dicts]
  182. final_dict[key] = sum(list_of_parameter_lists, [])
  183. traj.f_explore(final_dict)
  184. env.run(spatial_network_with_entropy_maximisation)
  185. env.disable_logging()
  186. if __name__ == "__main__":
  187. main()