ants/main.py

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#!/bin/python
"""
main.py - Part of ants project
execute via `python main.py` in terminal or only UNIX: `./main.py`
License: AGPL 3 (see end of file)
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(C) Alexander Bocken, Viviane Fahrni, Grace Kagho
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"""
import array
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from model import ActiveWalkerModel
from agent import RandomWalkerAnt
import numpy as np
import matplotlib.pyplot as plt
from mesa.space import Coordinate
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from mesa.datacollection import DataCollector
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#from multihex import MultiHexGrid
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def main():
pass
# check_pheromone_exponential_decay()
# check_ant_sensitivity_linear_decay()
# check_ant_pheromone_exponential_decay()
# check_ants_follow_gradient()
def check_pheromone_exponential_decay():
"""
Check whether wanted exponential decay of pheromones on grid is done correctly
shows plot of pheromone placed on grid vs. equivalent exponential decay function
"""
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width = 21
height = width
num_initial_roamers = 0
num_max_agents = 100
nest_position : Coordinate = (width //2, height //2)
max_steps = 1000
model = ActiveWalkerModel(width=width, height=height,
num_initial_roamers=num_initial_roamers,
nest_position=nest_position,
num_max_agents=num_max_agents,
max_steps=max_steps)
model.grid.fields["A"][5,5] = 10
model.datacollector = DataCollector(
model_reporters={"pheromone_a": lambda m: m.grid.fields["A"][5,5] },
agent_reporters={}
)
model.run_model()
a_test = model.datacollector.get_model_vars_dataframe()["pheromone_a"]
plt.figure()
xx = np.linspace(0,1000, 10000)
yy = a_test[0]*np.exp(-model.decay_rates["A"]*xx)
plt.plot(xx, yy, label="correct exponential function")
plt.scatter(range(len(a_test)), a_test, label="modeled decay", marker='o')
plt.title("Exponential grid pheromone decay test")
plt.legend(loc='best')
plt.show()
def check_ant_sensitivity_linear_decay():
"""
Check whether wanted linear decay of ant sensitivity is done correctly
shows plot of ant sensitivity placed on grid vs. equivalent linear decay function
not food sources are on the grid for this run to not reset sensitivities
"""
width = 50
height = width
num_initial_roamers = 1
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num_max_agents = 100
nest_position : Coordinate = (width //2, height //2)
max_steps = 1000
num_food_sources = 0
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model = ActiveWalkerModel(width=width, height=height,
num_initial_roamers=num_initial_roamers,
nest_position=nest_position,
num_max_agents=num_max_agents,
num_food_sources=num_food_sources,
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max_steps=max_steps)
model.datacollector = DataCollector(
model_reporters={},
agent_reporters={"sensitivity": lambda a: a.sensitivity}
)
start = model.schedule.agents[0].sensitivity_decay_rate
model.run_model()
a_test = model.datacollector.get_agent_vars_dataframe().reset_index()["sensitivity"]
plt.figure()
xx = np.linspace(0,1000, 10000)
yy = a_test[0] - start*xx
plt.title("Linear Ant Sensitivity decay test")
plt.plot(xx, yy, label="correct linear function")
plt.scatter(range(len(a_test)), a_test, label="modeled decay", marker='o')
plt.legend(loc='best')
plt.show()
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def check_ant_pheromone_exponential_decay():
"""
Check whether wanted exponential decay of pheromone drop rate for ants is correctly modeled
shows plot of pheromone placed on grid vs. equivalent exponential decay function
"""
width = 50
height = width
num_initial_roamers = 1
num_max_agents = 100
nest_position : Coordinate = (width //2, height //2)
num_food_sources = 0;
max_steps = 1000
model = ActiveWalkerModel(width=width, height=height,
num_initial_roamers=num_initial_roamers,
nest_position=nest_position,
num_max_agents=num_max_agents,
max_steps=max_steps)
model.datacollector = DataCollector(
model_reporters={},
agent_reporters={"pheromone_drop_rate": lambda a: a.pheromone_drop_rate["A"]}
)
start = model.schedule.agents[0].pheromone_drop_rate["A"]
model.run_model()
a_test = model.datacollector.get_agent_vars_dataframe().reset_index()["pheromone_drop_rate"]
plt.figure()
xx = np.linspace(0,1000, 10000)
yy = a_test[0]*np.exp(-model.schedule.agents[0].betas["A"]*xx)
plt.plot(xx, yy, label="correct exponential function")
plt.scatter(range(len(a_test)), a_test, label="modeled decay", marker='o')
plt.title("Exponential pheromone drop rate decay test")
plt.legend(loc='best')
plt.show()
def check_ants_follow_gradient():
"""
Create a path of neighbours with a static gradient.
Observe whether ant correctly follows gradient once found. via matrix printouts
8 = ant
anything else: pheromone A density.
The ant does not drop any new pheromones for this test
"""
width, height = 20,20
params = {
"width": width, "height": height,
"num_max_agents": 1,
"num_food_sources": 0,
"nest_position": (10,10),
"num_initial_roamers": 1,
}
model = ActiveWalkerModel(**params)
def place_line(grid : MultiHexGrid, start_pos=None):
strength = 5
if start_pos is None:
start_pos = (9,9)
next_pos = start_pos
for _ in range(width):
grid.fields["A"][next_pos] = strength
strength += 0.01
next_pos = grid.get_neighborhood(next_pos)[0]
place_line(model.grid)
ant = model.schedule._agents[0]
ant.looking_for_pheromone = "A"
ant.drop_pheromone = None
ant.threshold["A"] = 0
ant.sensitivity_max = 100
#model.grid.fields["A"] = np.diag(np.ones(width))
model.decay_rates["A"] = 0
while model.schedule.steps < 100:
display_field = np.copy(model.grid.fields["A"])
display_field[ant.pos] = 8
print(display_field)
print(20*"#")
model.step()
# if __name__ == "__main__":
# main()
from model import kwargs_paper_setup1 as kwargs
# kwargs["N_m"] = 10000
model = ActiveWalkerModel(**kwargs)
from hexplot import plot_hexagon
# a = np.zeros_like(model.grid.fields['food'])
# a[np.nonzero(model.grid.fields['food'])] = 1
# plot_hexagon(a, title="Nest locations")
# plot_hexagon(model.grid.fields['res'], title="Resistance Map")
from tqdm import tqdm as progress_bar
for _ in progress_bar(range(model.max_steps)):
model.step()
# agent_densities = model.datacollector.get_model_vars_dataframe()["agent_dens"]
# mean_dens = np.mean(agent_densities)
# norm_dens = mean_dens/np.max(mean_dens)
# plot_hexagon(norm_dens, title="Ant density overall")
# plt.show()
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"""
This program is free software: you can redistribute it and/or modify it under the terms of the GNU Affero General Public License as published by the Free Software Foundation, version 3.
This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU Affero General Public License for more details.
You should have received a copy of the GNU Affero General Public License along with this program. If not, see <https://www.gnu.org/licenses/>
"""
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# |%%--%%| <Z5Ra4Us5kN|y6CRYNrY9x>
# Access the DataCollector
datacollector = model.datacollector
# |%%--%%| <y6CRYNrY9x|v2PfrSWbzG>
# Get the data from the DataCollector
model_data = datacollector.get_model_vars_dataframe()
# |%%--%%| <v2PfrSWbzG|74OaeOltqi>
print(model_data.columns)
# |%%--%%| <74OaeOltqi|WpQLCA0RuP>
# Plot the number of alive ants over time
plt.plot(model_data.index, model_data['alive_ants'])
plt.xlabel('Time')
plt.ylabel('Number of Alive Ants') #this should probably be "active" ants, since it is not considering those in the nest
plt.title('Number of Alive Ants Over Time')
plt.grid(True)
plt.show()
# |%%--%%| <WpQLCA0RuP|UufL3yaROS>
# Plot the number of sucessful walkers over time
plt.plot(model_data.index, model_data['sucessful_walkers'])
plt.xlabel('Time')
plt.ylabel('Number of Sucessful Walkers')
plt.title('Number of Sucessful Walkers Over Time')
plt.grid(True)
plt.show()
# |%%--%%| <UufL3yaROS|mgJWQ0bqG1>
# Calculate the cumulative sum
model_data['cumulative_sucessful_walkers'] = model_data['sucessful_walkers'].cumsum()
# Plot the cumulative sum of sucessful walkers over time
plt.plot(model_data.index, model_data['cumulative_sucessful_walkers'])
plt.xlabel('Time')
plt.ylabel('Cumulative Sucessful Walkers')
plt.title('Cumulative Sucessful Walkers Over Time')
plt.grid(True)
plt.show()
# Values over 100 are to be interpreted as walkers being sucessfull several times since the total max number of ants is 100
# |%%--%%| <mgJWQ0bqG1|64kmoHYvCD>
# Connectivity measure
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def check_food_source_connectivity(food_sources, paths): #food_sources = nodes.is_nest, paths=result from BFS
connected_food_sources = set()
for source in food_sources:
if source in paths:
connected_food_sources.add(source)
connectivity = len(connected_food_sources)
return connectivity
# Calculate connectivity through BFS
current_paths = bfs(self.grid, self.grid.fields["nests"], 0.000001)
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# |%%--%%| <64kmoHYvCD|JEzmDy4wuX>
# |%%--%%| <JEzmDy4wuX|U9vmSFZUyD>
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# |%%--%%| <U9vmSFZUyD|r0xVXEqlAh>
# |%%--%%| <r0xVXEqlAh|6K80EwwmVN>