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Visualization.py
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140 lines (124 loc) · 7.41 KB
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import os
import numpy as np
import plotly.io as pio
import matplotlib.pyplot as plt
import plotly.graph_objects as go
import matplotlib.tri as mtri
class Visualization:
def __init__(self, p_ind=0):
self.palette = ['darkgreen', 'tomato', 'yellow', 'darkblue', 'darkviolet', 'indianred', 'yellowgreen', 'mediumblue', 'cyan', 'black', 'indigo', 'pink', 'lime', 'sienna', 'plum', 'deepskyblue', 'forestgreen', 'fuchsia', 'brown', 'turquoise', 'aliceblue', 'blueviolet', 'rosybrown', 'powderblue', 'lightblue', 'skyblue', 'lightskyblue', 'steelblue', 'dodgerblue', 'lightslategray', 'lightslategrey', 'slategray', 'slategrey', 'lightsteelblue', 'cornflowerblue', 'royalblue', 'ghostwhite', 'lavender', 'midnightblue', 'navy', 'darkblue', 'blue', 'slateblue', 'darkslateblue', 'mediumslateblue', 'mediumpurple', 'rebeccapurple', 'darkorchid', 'darkviolet', 'mediumorchid']
self.color_palette = ['lightcoral', 'firebrick', 'maroon', 'darkred', 'red', 'salmon', 'darksalmon', 'coral', 'orangered', 'lightsalmon', 'chocolate', 'saddlebrown', 'sandybrown', 'olive', 'olivedrab', 'darkolivegreen', 'greenyellow', 'chartreuse', 'lawngreen', 'darkseagreen', 'palegreen', 'lightgreen', 'limegreen', 'green', 'seagreen', 'mediumseagreen', 'springgreen', 'mediumspringgreen', 'mediumaquamarine', 'aquamarine', 'lightseagreen', 'mediumturquoise', 'lightcyan', 'paleturquoise', 'darkslategray', 'darkslategrey', 'teal', 'darkcyan', 'aqua', 'cyan', 'darkturquoise', 'cadetblue', 'thistle', 'violet', 'purple', 'darkmagenta', 'magenta', 'orchid', 'mediumvioletred', 'deeppink', 'hotpink', 'lavenderblush', 'palevioletred', 'crimson', 'lightpink']
self.save_dir = os.path.join("PS"+str(p_ind))
if not os.path.exists(self.save_dir):
os.makedirs(self.save_dir)
def plot_average_fitness(self, avg_fitness):
"""
Plots the average fitness values against the number of generations.
"""
generations = range(1, len(avg_fitness) + 1)
avg_fitness_values = list(zip(*avg_fitness))
plt.figure(figsize=(10, 6))
plt.plot(generations, avg_fitness_values[0], label='Average Occupied Volume (%)')
plt.plot(generations, avg_fitness_values[1], label='Average Number of Boxes (%)')
plt.plot(generations, avg_fitness_values[2], label='Average Value of Boxes (%)')
plt.xlabel('Generation')
plt.ylabel('Average Fitness')
plt.title('Average Fitness Over Generations')
plt.legend()
plt.savefig(f"{self.save_dir}/fitness_variation.png")
plt.close()
def cuboid_data(self, o, size=(1, 1, 1)):
l, w, h = size
x = [[o[0], o[0] + l, o[0] + l, o[0], o[0]],
[o[0], o[0] + l, o[0] + l, o[0], o[0]],
[o[0], o[0] + l, o[0] + l, o[0], o[0]],
[o[0], o[0] + l, o[0] + l, o[0], o[0]]]
y = [[o[1], o[1], o[1] + w, o[1] + w, o[1]],
[o[1], o[1], o[1] + w, o[1] + w, o[1]],
[o[1], o[1], o[1], o[1], o[1]],
[o[1] + w, o[1] + w, o[1] + w, o[1] + w, o[1] + w]]
z = [[o[2], o[2], o[2], o[2], o[2]],
[o[2] + h, o[2] + h, o[2] + h, o[2] + h, o[2] + h],
[o[2], o[2], o[2] + h, o[2] + h, o[2]],
[o[2], o[2], o[2] + h, o[2] + h, o[2]]]
return np.array(x), np.array(y), np.array(z)
def plot_cuboid(self, pos, size, ax, color):
X, Y, Z = self.cuboid_data(pos, size)
ax.plot_surface(X, Y, Z, color=color, rstride=1, cstride=1)
def draw_final_rank1_solutions(self, population):
color_list = self.palette + self.color_palette
for key, value in population.items():
if value['Rank'] == 1:
fig = plt.figure()
ax = fig.add_subplot(111, projection='3d')
for i, box in enumerate(value['result']):
color = color_list[i % len(color_list)]
pos = box[:3]
size = box[3:]
self.plot_cuboid(pos, size, ax, color=color)
plt.title(f"Visualization of Rank 1 Solution")
plt.savefig(f"{self.save_dir}/R1_{key}.png")
plt.close('all')
def draw_plotly_final_rank1_solutions(self, population):
fig = go.Figure()
color_list = self.palette + self.color_palette
for key, value in population.items():
if value['Rank'] == 1:
for i, box in enumerate(value['result']):
pos = box[:3]
size = box[3:]
color = color_list[i % len(color_list)]
fig.add_trace(go.Mesh3d(
x=[pos[0], pos[0]+size[0], pos[0]+size[0], pos[0], pos[0], pos[0]+size[0], pos[0]+size[0], pos[0]],
y=[pos[1], pos[1], pos[1]+size[1], pos[1]+size[1], pos[1], pos[1], pos[1]+size[1], pos[1]+size[1]],
z=[pos[2], pos[2], pos[2], pos[2], pos[2]+size[2], pos[2]+size[2], pos[2]+size[2], pos[2]+size[2]],
color=color,
opacity=1,
alphahull=0
))
file_name = f"{self.save_dir}/R1_{key}.html"
pio.write_html(fig, file=file_name)
def draw_plotly_true_solution(self, solution):
fig = go.Figure()
color_list = self.palette + self.color_palette
for i, box in enumerate(solution):
pos = box[:3]
size = box[3:]
color = color_list[i % len(color_list)]
fig.add_trace(go.Mesh3d(
x=[pos[0], pos[0]+size[0], pos[0]+size[0], pos[0], pos[0], pos[0]+size[0], pos[0]+size[0], pos[0]],
y=[pos[1], pos[1], pos[1]+size[1], pos[1]+size[1], pos[1], pos[1], pos[1]+size[1], pos[1]+size[1]],
z=[pos[2], pos[2], pos[2], pos[2], pos[2]+size[2], pos[2]+size[2], pos[2]+size[2], pos[2]+size[2]],
color=color,
opacity=1,
alphahull=0
))
file_name = f"{self.save_dir}/TrueSolution.html"
pio.write_html(fig, file=file_name)
def draw_pareto(self, population):
fig = plt.figure()
ax = fig.add_subplot(111, projection='3d')
fitness, number, weight = [], [], []
fitness2, number2, weight2 = [], [], []
for key, value in population.items():
if value['Rank'] == 1:
fitness.append(value['fitness'][0])
number.append(value['fitness'][1])
weight.append(value['fitness'][2])
else:
fitness2.append(value['fitness'][0])
number2.append(value['fitness'][1])
weight2.append(value['fitness'][2])
if len(fitness) > 2:
try:
ax.scatter(fitness2, number2, weight2, c='b', marker='o')
ax.scatter(fitness, number, weight, c='r', marker='o')
triang = mtri.Triangulation(fitness, number)
ax.plot_trisurf(triang, weight, color='red')
ax.set_xlabel('occupied space')
ax.set_ylabel('no of boxes')
ax.set_zlabel('value')
plt.savefig(f"{self.save_dir}/pareto.png")
plt.close(fig)
except Exception as e:
print("An error occurred:", str(e))