moving most used functions to specitic python files
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b21ecce51e
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@ -2,7 +2,7 @@ from sklearn.cluster import KMeans
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import matplotlib.pyplot as plt
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import numpy as np
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import random, time
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from clustering import split_tour_across_clusters
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from libs.clustering import split_tour_across_clusters
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def generate_cities(nb, max_coords=1000):
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return [random.sample(range(max_coords), 2) for _ in range(nb)]
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@ -2,7 +2,7 @@ from sklearn.cluster import KMeans
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import matplotlib.pyplot as plt
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import numpy as np
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import random, time, math
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from clustering import split_tour_across_clusters
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from libs.clustering import split_tour_across_clusters
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random.seed(1)
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@ -66,7 +66,7 @@ def simulated_annealing(cities, color='b', temperature=100000, cooling_rate=0.99
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plt.ioff()
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return best_solution
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nb_ville = 100
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nb_ville = 200
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max_coords = 1000
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nb_truck = 4
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temperature = 10000
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@ -2,7 +2,7 @@ from sklearn.cluster import KMeans
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import matplotlib.pyplot as plt
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import numpy as np
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import random, time, math
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from clustering import split_tour_across_clusters
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from libs.clustering import split_tour_across_clusters
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def generate_cities(nb, max_coords=1000):
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return [random.sample(range(max_coords), 2) for _ in range(nb)]
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@ -2,9 +2,9 @@ from sklearn.cluster import KMeans
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import matplotlib.pyplot as plt
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import numpy as np
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import random, time, math
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from clustering import split_tour_across_clusters
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from libs.clustering import split_tour_across_clusters
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random.seed(2)
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random.seed(3)
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def generate_cities(nb, max_coords=1000):
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return [random.sample(range(max_coords), 2) for _ in range(nb)]
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@ -60,9 +60,9 @@ class AntColony:
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return [self.cities[i] for i in best_ant]
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nb_ville = 50
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max_coords = 10
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nb_truck = 1
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max_time = 1
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max_coords = 1000
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nb_truck = 2
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max_time = 3
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nb_ants = 10
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max_time_per_cluster = max_time / nb_truck
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@ -123,6 +123,13 @@ for i, cluster_indices in enumerate(clusters.values()):
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print("Total distance for cluster", i, ": ", total_distance(best_route))
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# calculate total distance for all clusters
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full_total_distance = 0
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for route, color in best_routes:
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full_total_distance += total_distance(route)
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print("Total distance for all clusters: ", full_total_distance)
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for i, (route, color) in enumerate(best_routes):
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x = [city[0] for city in route]
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y = [city[1] for city in route]
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@ -1,81 +0,0 @@
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from sklearn.cluster import KMeans
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import numpy as np
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def split_tour_across_clusters(cities, nb_truck):
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if nb_truck == 1:
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return {0: list(range(len(cities)))}
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# clustering initial
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kmeans = KMeans(n_clusters=nb_truck, random_state=0).fit(cities)
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clusters = {i:[] for i in range(nb_truck)}
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# assignation des indices des villes aux clusters
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for i, label in enumerate(kmeans.labels_):
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clusters[label].append(i)
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max_iterations = len(cities)
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iteration = 0
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while True:
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iteration += 1
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if iteration > max_iterations:
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print("Le nombre maximum d'itérations a été atteint. La boucle a été interrompue.")
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break
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# calcul des tailles de clusters
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cluster_sizes = {i:len(clusters[i]) for i in range(nb_truck)}
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# identification du cluster le plus grand et du plus petit
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max_cluster = max(cluster_sizes, key=cluster_sizes.get)
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min_cluster = min(cluster_sizes, key=cluster_sizes.get)
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# s'il n'y a pas de grande disparité, on arrête la boucle
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if cluster_sizes[max_cluster] - cluster_sizes[min_cluster] <= 1:
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break
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# calcul du centre de chaque cluster
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cluster_centers = {i:np.mean([cities[index] for index in clusters[i]], axis=0) for i in range(nb_truck)}
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# calcul des distances entre le centre du cluster le plus grand et les autres
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distances = {i:np.linalg.norm(cluster_centers[max_cluster]-cluster_centers[i]) for i in range(nb_truck)}
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del distances[max_cluster] # on supprime la distance vers lui-même
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if nb_truck >= 3:
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# on identifie les 2 clusters les plus proches
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closest_clusters = sorted(distances, key=distances.get)[:2]
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# parmi les deux clusters les plus proches, on choisit le plus petit
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if cluster_sizes[closest_clusters[0]] <= cluster_sizes[closest_clusters[1]]:
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target_cluster = closest_clusters[0]
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else:
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target_cluster = closest_clusters[1]
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else:
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closest_clusters = sorted(distances, key=distances.get)[:1]
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target_cluster = closest_clusters[0]
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# si le transfert va créer une plus grande disparité, on arrête la boucle
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if cluster_sizes[target_cluster] >= cluster_sizes[max_cluster]:
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break
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# calcul des distances entre le centre du cluster cible et les villes du cluster le plus grand
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distances_to_target = {index:np.linalg.norm(cluster_centers[target_cluster]-cities[index])
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for index in clusters[max_cluster]}
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# on identifie la ville la plus proche du centre du cluster cible
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closest_city_index = min(distances_to_target, key=distances_to_target.get)
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# on transfère la ville du cluster le plus grand au cluster cible
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clusters[target_cluster].append(closest_city_index)
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clusters[max_cluster].remove(closest_city_index)
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# Ajout du point de départ et d'arrivée pour chaque cluster
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depot_index = 0
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for cluster in clusters.values():
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if cluster[0] != depot_index:
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cluster.insert(0, depot_index)
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if cluster[-1] != depot_index:
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cluster.append(depot_index)
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return clusters
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@ -1,3 +1 @@
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[[6734.0, 1453.0], [2233.0, 10.0], [5530.0, 1424.0], [401.0, 841.0], [3082.0, 1644.0], [7608.0, 4458.0], [7573.0, 3716.0], [7265.0, 1268.0], [6898.0, 1885.0], [1112.0, 2049.0], [5468.0, 2606.0], [5989.0, 2873.0], [4706.0, 2674.0], [4612.0, 2035.0], [6347.0, 2683.0], [6107.0, 669.0], [7611.0, 5184.0], [7462.0, 3590.0],
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[7732.0, 4723.0], [5900.0, 3561.0], [4483.0, 3369.0], [6101.0, 1110.0], [5199.0, 2182.0], [1633.0, 2809.0], [4307.0, 2322.0], [675.0, 1006.0], [7555.0, 4819.0], [7541.0, 3981.0], [3177.0, 756.0], [7352.0, 4506.0], [7545.0, 2801.0], [3245.0, 3305.0], [6426.0, 3173.0], [4608.0, 1198.0], [23.0, 2216.0], [7248.0, 3779.0],
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[7762.0, 4595.0], [7392.0, 2244.0], [3484.0, 2829.0], [6271.0, 2135.0], [4985.0, 140.0], [1916.0, 1569.0], [7280.0, 4899.0], [7509.0, 3239.0], [10.0, 2676.0], [6807.0, 2993.0], [5185.0, 3258.0], [3023.0, 1942.0]]
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[['6734', '1453'], ['2233', '10'], ['5530', '1424'], ['401', '841'], ['3082', '1644'], ['7608', '4458'], ['7573', '3716'], ['7265', '1268'], ['6898', '1885'], ['1112', '2049'], ['5468', '2606'], ['5989', '2873'], ['4706', '2674'], ['4612', '2035'], ['6347', '2683'], ['6107', '669'], ['7611', '5184'], ['7462', '3590'], ['7732', '4723'], ['5900', '3561'], ['4483', '3369'], ['6101', '1110'], ['5199', '2182'], ['1633', '2809'], ['4307', '2322'], ['675', '1006'], ['7555', '4819'], ['7541', '3981'], ['3177', '756'], ['7352', '4506'], ['7545', '2801'], ['3245', '3305'], ['6426', '3173'], ['4608', '1198'], ['23', '2216'], ['7248', '3779'], ['7762', '4595'], ['7392', '2244'], ['3484', '2829'], ['6271', '2135'], ['4985', '140'], ['1916', '1569'], ['7280', '4899'], ['7509', '3239'], ['10', '2676'], ['6807', '2993'], ['5185', '3258'], ['3023', '1942']]
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51
tests/libs/aco.py
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51
tests/libs/aco.py
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@ -0,0 +1,51 @@
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import math, random, time, numpy as np
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def distance(city1, city2):
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return math.sqrt((city1[0] - city2[0]) ** 2 + (city1[1] - city2[1]) ** 2) + 1e-10
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def total_distance(cities):
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return sum([distance(cities[i - 1], cities[i]) for i in range(len(cities))])
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class AntColony:
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def __init__(self, cities, n_ants, alpha=1, beta=2, evaporation=0.5, intensification=2, max_time=0.1):
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self.cities = cities
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self.n = len(cities)
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self.n_ants = n_ants
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self.alpha = alpha
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self.beta = beta
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self.evaporation = evaporation
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self.intensification = intensification
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self.max_time = max_time
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self.pheromones = [[1 / self.n for _ in range(self.n)] for __ in range(self.n)]
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def choose_next_city(self, ant):
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unvisited_cities = [i for i in range(self.n) if i not in ant]
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probabilities = [self.pheromones[ant[-1]][i] ** self.alpha * ((1 / distance(self.cities[ant[-1]], self.cities[i])) ** self.beta) for i in unvisited_cities]
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total = sum(probabilities)
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if total == 0:
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probabilities = [1 / len(unvisited_cities) for _ in unvisited_cities]
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else:
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probabilities = [p / total for p in probabilities]
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return np.random.choice(unvisited_cities, p=probabilities)
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def update_pheromones(self, ant):
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pheromones_delta = self.intensification / total_distance([self.cities[i] for i in ant])
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for i in range(len(ant) - 1):
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self.pheromones[ant[i]][ant[i+1]] += pheromones_delta
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def run(self):
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best_ant = []
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best_distance = float('inf')
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start_time = time.time()
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while time.time() - start_time < self.max_time:
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ants = [[random.randint(0, self.n - 1)] for _ in range(self.n_ants)]
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for ant in ants:
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for _ in range(self.n - 1):
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ant.append(self.choose_next_city(ant))
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ant_distance = total_distance([self.cities[i] for i in ant])
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if ant_distance < best_distance:
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best_distance = ant_distance
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best_ant = ant.copy()
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self.update_pheromones(ant)
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self.pheromones = [[(1 - self.evaporation) * p for p in row] for row in self.pheromones]
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return [self.cities[i] for i in best_ant]
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81
tests/libs/clustering.py
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81
tests/libs/clustering.py
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@ -0,0 +1,81 @@
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from sklearn.cluster import KMeans
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import numpy as np
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def split_tour_across_clusters(cities, nb_truck):
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if nb_truck == 1:
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return {0: list(range(len(cities)))}
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# clustering initial
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kmeans = KMeans(n_clusters=nb_truck, random_state=0).fit(cities)
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clusters = {i:[] for i in range(nb_truck)}
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# assignation des indices des villes aux clusters
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for i, label in enumerate(kmeans.labels_):
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clusters[label].append(i)
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max_iterations = len(cities)
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iteration = 0
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while True:
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iteration += 1
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if iteration > max_iterations:
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print("Le nombre maximum d'itérations a été atteint. La boucle a été interrompue.")
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break
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# calcul des tailles de clusters
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cluster_sizes = {i:len(clusters[i]) for i in range(nb_truck)}
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# identification du cluster le plus grand et du plus petit
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max_cluster = max(cluster_sizes, key=cluster_sizes.get)
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min_cluster = min(cluster_sizes, key=cluster_sizes.get)
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# s'il n'y a pas de grande disparité, on arrête la boucle
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if cluster_sizes[max_cluster] - cluster_sizes[min_cluster] <= 1:
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break
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# calcul du centre de chaque cluster
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cluster_centers = {i:np.mean([cities[index] for index in clusters[i]], axis=0) for i in range(nb_truck)}
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# calcul des distances entre le centre du cluster le plus grand et les autres
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distances = {i:np.linalg.norm(cluster_centers[max_cluster]-cluster_centers[i]) for i in range(nb_truck)}
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del distances[max_cluster] # on supprime la distance vers lui-même
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if nb_truck >= 3:
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# on identifie les 2 clusters les plus proches
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closest_clusters = sorted(distances, key=distances.get)[:2]
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# parmi les deux clusters les plus proches, on choisit le plus petit
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if cluster_sizes[closest_clusters[0]] <= cluster_sizes[closest_clusters[1]]:
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target_cluster = closest_clusters[0]
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else:
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target_cluster = closest_clusters[1]
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else:
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closest_clusters = sorted(distances, key=distances.get)[:1]
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target_cluster = closest_clusters[0]
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# si le transfert va créer une plus grande disparité, on arrête la boucle
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if cluster_sizes[target_cluster] >= cluster_sizes[max_cluster]:
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break
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# calcul des distances entre le centre du cluster cible et les villes du cluster le plus grand
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distances_to_target = {index:np.linalg.norm(cluster_centers[target_cluster]-cities[index])
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for index in clusters[max_cluster]}
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# on identifie la ville la plus proche du centre du cluster cible
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closest_city_index = min(distances_to_target, key=distances_to_target.get)
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# on transfère la ville du cluster le plus grand au cluster cible
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clusters[target_cluster].append(closest_city_index)
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clusters[max_cluster].remove(closest_city_index)
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# Ajout du point de départ et d'arrivée pour chaque cluster
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depot_index = 0
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for cluster in clusters.values():
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if cluster[0] != depot_index:
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cluster.insert(0, depot_index)
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if cluster[-1] != depot_index:
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cluster.append(depot_index)
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return clusters
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33
tests/libs/simulated_annealing.py
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33
tests/libs/simulated_annealing.py
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@ -0,0 +1,33 @@
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import math, random
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def distance(city1, city2):
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return math.sqrt((city1[0] - city2[0]) ** 2 + (city1[1] - city2[1]) ** 2)
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def total_distance(cities):
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return sum([distance(cities[i - 1], cities[i]) for i in range(len(cities))])
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def simulated_annealing(cities, temperature=10000, cooling_rate=0.9999, temperature_ok=0.001, cluster_index=0):
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interration = 0
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current_solution = cities.copy()
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best_solution = cities.copy()
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while temperature > temperature_ok:
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new_solution = current_solution.copy()
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# Swap two cities in the route
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i = random.randint(0, len(new_solution) - 1)
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j = random.randint(0, len(new_solution) - 1)
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new_solution[i], new_solution[j] = new_solution[j], new_solution[i]
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# Calculate the acceptance probability
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current_energy = total_distance(current_solution)
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new_energy = total_distance(new_solution)
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delta = new_energy - current_energy
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if delta < 0 or random.random() < math.exp(-delta / temperature):
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current_solution = new_solution
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if total_distance(current_solution) < total_distance(best_solution):
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best_solution = current_solution
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# Cool down
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temperature *= cooling_rate
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interration += 1
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# Print every 1000 iterations
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if interration % 1000 == 0:
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print("Cluster", cluster_index, ": iteration", interration, "with current total distance", total_distance(current_solution))
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return best_solution
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