DecisionTree update

This commit is contained in:
MonoYuku 2021-06-23 11:09:17 +02:00
parent 80e6c700cb
commit 89d1aa7802
16 changed files with 1837 additions and 5 deletions

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@ -1 +1 @@
main.py
astar.py

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1
bfs.py
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@ -64,3 +64,4 @@ def distance(pos, endpos):
houses = create_houses(40)
actions = bfs(pos, 0, endpos, houses)
return len(actions)

51
csv_gen.py Normal file
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@ -0,0 +1,51 @@
import csv
decision = [0, 1] # 0 - go to bin, 1 - pick up
levels = [1, 2, 3, 4, 5]
# 1 - 0;20 2 - 20;40 3 - 40;60 4 - 60;80 5 - 80;100
# 1 - 0;40 2 - 40;80 3 - 80;120 4 - 120;160 5 - 160+
def enough_free_space(available_space, trash_size, available_mass, mass_trash):
if available_space + trash_size <= 5 and available_mass + mass_trash <= 5:
return True
return False
def where_is_closer(bin_distance, trash_distance):
if bin_distance <= trash_distance:
return 0
return 1
with open('tree_dataset.csv', 'w', newline='') as csv_file:
file_writer = csv.writer(csv_file)
file_writer.writerow(["dis_dump", "dis_trash", "mass", "space", "trash_mass", "trash_space", "decision"])
counter = 0
for dis_dump in levels:
for dis_trash in levels:
for mass in levels:
for space in levels:
for trash_mass in levels:
for trash_space in levels:
if counter % 10 == 0:
if dis_dump == 1 and space >= 1 and mass >= 1:
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, 0])
elif dis_trash == 1 and enough_free_space(space, trash_space, mass, trash_mass):
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, 1])
elif mass == 4 or space == 4 and not enough_free_space(space, trash_space, mass, trash_mass):
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, 0])
elif mass == 5 or space == 5:
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, 0])
elif mass <= 3 and space <= 3 and enough_free_space(space, trash_space, mass, trash_mass):
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, 1])
elif mass == 4 or space == 4 and enough_free_space(space, trash_space, mass, trash_mass):
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, where_is_closer(dis_dump, dis_trash)])
elif not enough_free_space(space, trash_space, mass, trash_mass):
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, 0])
else:
file_writer.writerow([dis_dump, dis_trash, mass, space, trash_mass, trash_space, None])
counter += 1

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decision_tree.png Normal file

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img/wet.png Normal file

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49
main.py
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@ -8,16 +8,16 @@ from random import shuffle, choice
import numpy as np
import os
import tree
import pygame
from time import sleep
from os import path
from colors import gray
from house import create_houses
from truck import Truck
from trash import Trash
from TSP import tsp, tspmove
from bfs import bfs
from bfs import bfs, distance
model = load_model("model.h5")
@ -38,6 +38,9 @@ def game_keys(truck, multi_trash, houses, auto=False):
print('')
for tindex, trash in enumerate(multi_trash):
if truck.pos == trash.pos:
truck.mass += trash.mass
truck.space += trash.space
print(truck.mass, truck.space)
prediction = model.predict(multi_trash[tindex].content)
for i in range (3):
if multi_trash[tindex].names[i][:3] == 'cat':
@ -106,6 +109,46 @@ def game_loop():
if event.key == pygame.K_ESCAPE:
pygame.quit()
quit()
if (event.key == pygame.K_l):
if path.isfile('./tree_model') and not os.stat(
'./tree_model').st_size == 0:
decision_tree = tree.load_tree_from_structure('./tree_model')
print("Tree model loaded!")
if (event.key == pygame.K_k):
print(":>")
trash = multi_trash[0]
dis_dump = distance(truck.pos,[80,80])
dis_trash = distance(truck.pos, trash.pos)
print(dis_dump, dis_trash, truck.mass, truck.space, trash.mass, trash.space)
decision = tree.making_decision(decision_tree,
dis_dump // 12 + 1,
dis_trash // 12 + 1,
truck.mass // 20 + 1, truck.space // 20 + 1,
trash.mass // 20 + 1,
trash.space // 20 + 1)
print(decision)
if(decision[0]==0):
actions = bfs(truck.pos, truck.dir_control,
trash.pos, houses)
print(actions)
if not actions:
print('Path couldn\'t be found')
break
print('##################################################')
while actions:
action = actions.pop()
pygame.event.post(pygame.event.Event(
pygame.KEYDOWN, {'key': action}))
game_keys(truck, multi_trash, houses, True)
update_images(gameDisplay, truck, multi_trash, houses)
else:
truck.space=0
truck.mass=0
if (event.key == pygame.K_b):
trash = multi_trash[0]
actions = bfs(truck.pos, truck.dir_control,

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@ -37,6 +37,8 @@ class Trash:
self.size = grid_size
self.content = draw_trash(filenames)[0]
self.names = draw_trash(filenames)[1]
self.mass = random.randint(0, 25)
self.space = random.randint(0, 25)
def new_pos(self, truck_pos, houses, multi):
self.trash_content, self.trash_names = draw_trash(filenames)

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tree.py Normal file
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@ -0,0 +1,57 @@
import joblib
import matplotlib.pyplot as plt
import pandas
from sklearn import tree
from sklearn.tree import DecisionTreeClassifier
attributes = ["dis_dump", "dis_trash", "mass", "space", "trash_mass", "trash_space"]
decisions = ["decision"]
def learning_tree():
dataset = pandas.read_csv('./tree_dataset.csv')
x = dataset[attributes]
y = dataset[decisions]
decision_tree = DecisionTreeClassifier()
decision_tree = decision_tree.fit(x, y)
return decision_tree
def making_decision(decision_tree, distance_to_bin, distance_to_trash, filling_mass, filling_space, trash_mass,
trash_space):
decision = decision_tree.predict(
[[distance_to_bin, distance_to_trash, filling_mass, filling_space, trash_mass, trash_space]])
return decision
def save_all(decision_tree):
save_tree_to_png(decision_tree)
save_tree_to_txt(decision_tree)
save_tree_to_structure(decision_tree)
def save_tree_to_txt(decision_tree):
with open('./tree_in_txt.txt', "w") as file:
file.write(tree.export_text(decision_tree))
def save_tree_to_png(decision_tree):
fig = plt.figure(figsize=(25, 20))
_ = tree.plot_tree(decision_tree, feature_names=attributes, filled=True)
fig.savefig('./decision_tree.png')
def save_tree_to_structure(decision_tree):
joblib.dump(decision_tree, './tree_model')
def load_tree_from_structure(file):
return joblib.load(file)
if __name__ == '__main__':
tre = learning_tree()
save_all(tre)

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tree_dataset.csv Normal file

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tree_in_txt.txt Normal file
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@ -0,0 +1,112 @@
|--- feature_2 <= 3.50
| |--- feature_4 <= 3.50
| | |--- feature_3 <= 3.50
| | | |--- feature_0 <= 1.50
| | | | |--- class: 0
| | | |--- feature_0 > 1.50
| | | | |--- feature_4 <= 2.50
| | | | | |--- class: 1
| | | | |--- feature_4 > 2.50
| | | | | |--- feature_2 <= 2.50
| | | | | | |--- class: 1
| | | | | |--- feature_2 > 2.50
| | | | | | |--- class: 0
| | |--- feature_3 > 3.50
| | | |--- feature_3 <= 4.50
| | | | |--- feature_0 <= 2.50
| | | | | |--- feature_1 <= 1.50
| | | | | | |--- feature_0 <= 1.50
| | | | | | | |--- class: 0
| | | | | | |--- feature_0 > 1.50
| | | | | | | |--- feature_2 <= 2.50
| | | | | | | | |--- class: 1
| | | | | | | |--- feature_2 > 2.50
| | | | | | | | |--- feature_4 <= 2.00
| | | | | | | | | |--- class: 1
| | | | | | | | |--- feature_4 > 2.00
| | | | | | | | | |--- class: 0
| | | | | |--- feature_1 > 1.50
| | | | | | |--- class: 0
| | | | |--- feature_0 > 2.50
| | | | | |--- feature_1 <= 3.50
| | | | | | |--- feature_1 <= 2.50
| | | | | | | |--- feature_4 <= 2.50
| | | | | | | | |--- class: 1
| | | | | | | |--- feature_4 > 2.50
| | | | | | | | |--- feature_2 <= 2.50
| | | | | | | | | |--- class: 1
| | | | | | | | |--- feature_2 > 2.50
| | | | | | | | | |--- class: 0
| | | | | | |--- feature_1 > 2.50
| | | | | | | |--- feature_0 <= 3.50
| | | | | | | | |--- class: 0
| | | | | | | |--- feature_0 > 3.50
| | | | | | | | |--- feature_4 <= 2.50
| | | | | | | | | |--- class: 1
| | | | | | | | |--- feature_4 > 2.50
| | | | | | | | | |--- feature_2 <= 2.50
| | | | | | | | | | |--- class: 1
| | | | | | | | | |--- feature_2 > 2.50
| | | | | | | | | | |--- class: 0
| | | | | |--- feature_1 > 3.50
| | | | | | |--- feature_0 <= 4.50
| | | | | | | |--- class: 0
| | | | | | |--- feature_0 > 4.50
| | | | | | | |--- feature_1 <= 4.50
| | | | | | | | |--- feature_4 <= 2.50
| | | | | | | | | |--- class: 1
| | | | | | | | |--- feature_4 > 2.50
| | | | | | | | | |--- feature_2 <= 2.00
| | | | | | | | | | |--- class: 1
| | | | | | | | | |--- feature_2 > 2.00
| | | | | | | | | | |--- class: 0
| | | | | | | |--- feature_1 > 4.50
| | | | | | | | |--- class: 0
| | | |--- feature_3 > 4.50
| | | | |--- class: 0
| |--- feature_4 > 3.50
| | |--- feature_2 <= 1.50
| | | |--- feature_4 <= 4.50
| | | | |--- feature_3 <= 3.50
| | | | | |--- feature_0 <= 1.50
| | | | | | |--- class: 0
| | | | | |--- feature_0 > 1.50
| | | | | | |--- class: 1
| | | | |--- feature_3 > 3.50
| | | | | |--- feature_3 <= 4.50
| | | | | | |--- feature_1 <= 3.50
| | | | | | | |--- feature_0 <= 2.50
| | | | | | | | |--- class: 0
| | | | | | | |--- feature_0 > 2.50
| | | | | | | | |--- feature_1 <= 2.50
| | | | | | | | | |--- class: 1
| | | | | | | | |--- feature_1 > 2.50
| | | | | | | | | |--- feature_0 <= 4.00
| | | | | | | | | | |--- class: 0
| | | | | | | | | |--- feature_0 > 4.00
| | | | | | | | | | |--- class: 1
| | | | | | |--- feature_1 > 3.50
| | | | | | | |--- class: 0
| | | | | |--- feature_3 > 4.50
| | | | | | |--- class: 0
| | | |--- feature_4 > 4.50
| | | | |--- class: 0
| | |--- feature_2 > 1.50
| | | |--- class: 0
|--- feature_2 > 3.50
| |--- feature_1 <= 1.50
| | |--- feature_4 <= 1.50
| | | |--- feature_2 <= 4.50
| | | | |--- feature_3 <= 4.50
| | | | | |--- feature_0 <= 1.50
| | | | | | |--- class: 0
| | | | | |--- feature_0 > 1.50
| | | | | | |--- class: 1
| | | | |--- feature_3 > 4.50
| | | | | |--- class: 0
| | | |--- feature_2 > 4.50
| | | | |--- class: 0
| | |--- feature_4 > 1.50
| | | |--- class: 0
| |--- feature_1 > 1.50
| | |--- class: 0

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tree_model Normal file

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@ -16,6 +16,8 @@ class Truck:
self.allCats = 0
self.allTrash = 0
self.trash = 0
self.mass=0
self.space=0
def move(self):
self.pos[0] += self.direction[0] * self.size