1.2 MiB
1.2 MiB
Importing necessary libraries
In [16]:
from sklearn.cluster import KMeans import matplotlib.pyplot as plt import numpy as np import random, time, math
Function to gereate cities :
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def generate_cities(howmany, max_coordinates=1000): return [random.sample(range(max_coordinates), 2) for _ in range(howmany)]
Function to split citites into multiple clusters depending on the number of trucks
In [10]:
def split_tour_across_clusters(cities, nb_truck): if nb_truck == 1: return {0: list(range(len(cities)))} # clustering initial kmeans = KMeans(n_clusters=nb_truck, random_state=0).fit(cities) clusters = {i:[] for i in range(nb_truck)} # assignation des indices des villes aux clusters for i, label in enumerate(kmeans.labels_): clusters[label].append(i) while True: # calcul des tailles de clusters cluster_sizes = {i:len(clusters[i]) for i in range(nb_truck)} # identification du cluster le plus grand et du plus petit max_cluster = max(cluster_sizes, key=cluster_sizes.get) min_cluster = min(cluster_sizes, key=cluster_sizes.get) # s'il n'y a pas de grande disparité, on arrête la boucle if cluster_sizes[max_cluster] - cluster_sizes[min_cluster] <= 1: break # calcul du centre de chaque cluster cluster_centers = {i:np.mean([cities[index] for index in clusters[i]], axis=0) for i in range(nb_truck)} # calcul des distances entre le centre du cluster le plus grand et les autres distances = {i:np.linalg.norm(cluster_centers[max_cluster]-cluster_centers[i]) for i in range(nb_truck)} del distances[max_cluster] # on supprime la distance vers lui-même if nb_truck >= 3: # on identifie les 2 clusters les plus proches closest_clusters = sorted(distances, key=distances.get)[:2] # parmi les deux clusters les plus proches, on choisit le plus petit if cluster_sizes[closest_clusters[0]] <= cluster_sizes[closest_clusters[1]]: target_cluster = closest_clusters[0] else: target_cluster = closest_clusters[1] else: closest_clusters = sorted(distances, key=distances.get)[:1] target_cluster = closest_clusters[0] # si le transfert va créer une plus grande disparité, on arrête la boucle if cluster_sizes[target_cluster] >= cluster_sizes[max_cluster]: break # calcul des distances entre le centre du cluster cible et les villes du cluster le plus grand distances_to_target = {index:np.linalg.norm(cluster_centers[target_cluster]-cities[index]) for index in clusters[max_cluster]} # on identifie la ville la plus proche du centre du cluster cible closest_city_index = min(distances_to_target, key=distances_to_target.get) # on transfère la ville du cluster le plus grand au cluster cible clusters[target_cluster].append(closest_city_index) clusters[max_cluster].remove(closest_city_index) # Ajout du point de départ et d'arrivée pour chaque cluster depot_index = 0 for cluster in clusters.values(): if cluster[0] != depot_index: cluster.insert(0, depot_index) if cluster[-1] != depot_index: cluster.append(depot_index) return clusters
Usual function to calculate distances
In [11]:
def distance(city1, city2): return math.sqrt((city1[0] - city2[0]) ** 2 + (city1[1] - city2[1]) ** 2) def total_distance(cities): return sum([distance(cities[i - 1], cities[i]) for i in range(len(cities))])
Function to show graphics
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previous_route = None def draw_cities(cities, previous_route, color='b', title=' '): plt.title(title) # If there's a previous route, we remove it. if previous_route is not None: previous_route.remove() x = [city[0] for city in cities] y = [city[1] for city in cities] x.append(x[0]) y.append(y[0]) # We plot the route with the specified color and keep a reference to the Line2D object. previous_route, = plt.plot(x, y, color=color, marker='x', linestyle='-') plt.draw() plt.pause(0.005) # We return the reference so we can remove this route when a new one is found. return previous_route
Function to calculate heuristic for each cluster
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def simulated_annealing(cities, color='b', temperature=100000, cooling_rate=0.9999, temperature_ok=0.001): interration = 0 plt.ion() current_solution = cities.copy() best_solution = cities.copy() previous_route = draw_cities(best_solution, None, color, 'Initial solution') while temperature > temperature_ok: new_solution = current_solution.copy() # Swap two cities in the route i = random.randint(0, len(new_solution) - 1) j = random.randint(0, len(new_solution) - 1) new_solution[i], new_solution[j] = new_solution[j], new_solution[i] # Calculate the acceptance probability current_energy = total_distance(current_solution) new_energy = total_distance(new_solution) delta = new_energy - current_energy if delta < 0 or random.random() < math.exp(-delta / temperature): current_solution = new_solution if total_distance(current_solution) < total_distance(best_solution): best_solution = current_solution previous_route = draw_cities(best_solution, previous_route, color, 'Current best solution, total distance = ' + str(total_distance(best_solution)) + ', iteration = ' + str(interration)) # Cool down temperature *= cooling_rate interration += 1 plt.ioff() return best_solution
Main code
In [17]:
start_time_generate = time.time() cities = generate_cities(20) # generate 100 cities cities[0] = [500, 500] # placing depot at the center stop_time_generate = time.time() nb_truck = 3 start_time_split = time.time() clusters = split_tour_across_clusters(cities, nb_truck) stop_time_split = time.time() for cluster in clusters.values(): print(len(cluster)) print("\n---- TIME ----") print("generate cities time: ", stop_time_generate - start_time_generate) print("split cities time: ", stop_time_split - start_time_split) # create new figure for annealing paths plt.figure() colors = ['b', 'g', 'r', 'c', 'm', 'y', 'k'] for i, cluster_indices in enumerate(clusters.values()): # Sélection d'une couleur pour le cluster color = colors[i % len(colors)] # Récupération des coordonnées de la ville cluster_cities = [cities[index] for index in cluster_indices] # Appel de la fonction simulated_annealing avec la couleur choisie best_route = simulated_annealing(cluster_cities, color) print("Final solution for cluster ", i, ":", best_route) print("Total distance: ", total_distance(best_route)) plt.show()
8 8 9 ---- TIME ---- generate cities time: 0.0009984970092773438 split cities time: 0.12865757942199707
Final solution for cluster 0 : [[214, 814], [477, 508], [500, 500], [500, 500], [80, 410], [30, 684], [82, 731], [169, 908]] Total distance: 1507.4366001497751
Final solution for cluster 1 : [[421, 284], [500, 500], [500, 500], [685, 360], [692, 106], [473, 167], [85, 13], [389, 296]] Total distance: 1810.3866608133385
Final solution for cluster 2 : [[500, 500], [500, 500], [804, 655], [955, 570], [987, 536], [894, 990], [628, 950], [590, 983], [540, 817]] Total distance: 1836.8325428173955