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GA_jobshop_makespan.py
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GA_jobshop_makespan.py
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# -*- coding: utf-8 -*-
"""
Created on Fri Jul 13 17:24:51 2018
Author: cheng-man wu
LinkedIn: www.linkedin.com/in/chengmanwu
Github: https://github.com/wurmen
"""
'''==========Solving job shop scheduling problem by gentic algorithm in python======='''
# importing required modules
import pandas as pd
import numpy as np
import time
import copy
''' ================= initialization setting ======================'''
pt_tmp=pd.read_excel("JSP_dataset.xlsx",sheet_name="Processing Time",index_col =[0])
ms_tmp=pd.read_excel("JSP_dataset.xlsx",sheet_name="Machines Sequence",index_col =[0])
dfshape=pt_tmp.shape
num_mc=dfshape[1] # number of machines
num_job=dfshape[0] # number of jobs
num_gene=num_mc*num_job # number of genes in a chromosome
pt=[list(map(int, pt_tmp.iloc[i])) for i in range(num_job)]
ms=[list(map(int,ms_tmp.iloc[i])) for i in range(num_job)]
# raw_input is used in python 2
population_size=int(input('Please input the size of population: ') or 30) # default value is 30
crossover_rate=float(input('Please input the size of Crossover Rate: ') or 0.8) # default value is 0.8
mutation_rate=float(input('Please input the size of Mutation Rate: ') or 0.2) # default value is 0.2
mutation_selection_rate=float(input('Please input the mutation selection rate: ') or 0.2)
num_mutation_jobs=round(num_gene*mutation_selection_rate)
num_iteration=int(input('Please input number of iteration: ') or 2000) # default value is 2000
start_time = time.time()
'''==================== main code ==============================='''
'''----- generate initial population -----'''
Tbest=999999999999999
best_list,best_obj=[],[]
population_list=[]
makespan_record=[]
for i in range(population_size):
nxm_random_num=list(np.random.permutation(num_gene)) # generate a random permutation of 0 to num_job*num_mc-1
population_list.append(nxm_random_num) # add to the population_list
for j in range(num_gene):
population_list[i][j]=population_list[i][j]%num_job # convert to job number format, every job appears m times
for n in range(num_iteration):
Tbest_now=99999999999
'''-------- two point crossover --------'''
parent_list=copy.deepcopy(population_list)
offspring_list=copy.deepcopy(population_list)
S=list(np.random.permutation(population_size)) # generate a random sequence to select the parent chromosome to crossover
for m in range(int(population_size/2)):
crossover_prob=np.random.rand()
if crossover_rate>=crossover_prob:
parent_1= population_list[S[2*m]][:]
parent_2= population_list[S[2*m+1]][:]
child_1=parent_1[:]
child_2=parent_2[:]
cutpoint=list(np.random.choice(num_gene, 2, replace=False))
cutpoint.sort()
child_1[cutpoint[0]:cutpoint[1]]=parent_2[cutpoint[0]:cutpoint[1]]
child_2[cutpoint[0]:cutpoint[1]]=parent_1[cutpoint[0]:cutpoint[1]]
offspring_list[S[2*m]]=child_1[:]
offspring_list[S[2*m+1]]=child_2[:]
'''----------repairment-------------'''
for m in range(population_size):
job_count={}
larger,less=[],[] # 'larger' record jobs appear in the chromosome more than m times, and 'less' records less than m times.
for i in range(num_job):
if i in offspring_list[m]:
count=offspring_list[m].count(i)
pos=offspring_list[m].index(i)
job_count[i]=[count,pos] # store the above two values to the job_count dictionary
else:
count=0
job_count[i]=[count,0]
if count>num_mc:
larger.append(i)
elif count<num_mc:
less.append(i)
for k in range(len(larger)):
chg_job=larger[k]
while job_count[chg_job][0]>num_mc:
for d in range(len(less)):
if job_count[less[d]][0]<num_mc:
offspring_list[m][job_count[chg_job][1]]=less[d]
job_count[chg_job][1]=offspring_list[m].index(chg_job)
job_count[chg_job][0]=job_count[chg_job][0]-1
job_count[less[d]][0]=job_count[less[d]][0]+1
if job_count[chg_job][0]==num_mc:
break
'''--------mutatuon--------'''
for m in range(len(offspring_list)):
mutation_prob=np.random.rand()
if mutation_rate >= mutation_prob:
m_chg=list(np.random.choice(num_gene, num_mutation_jobs, replace=False)) # chooses the position to mutation
t_value_last=offspring_list[m][m_chg[0]] # save the value which is on the first mutation position
for i in range(num_mutation_jobs-1):
offspring_list[m][m_chg[i]]=offspring_list[m][m_chg[i+1]] # displacement
offspring_list[m][m_chg[num_mutation_jobs-1]]=t_value_last # move the value of the first mutation position to the last mutation position
'''--------fitness value(calculate makespan)-------------'''
total_chromosome=copy.deepcopy(parent_list)+copy.deepcopy(offspring_list) # parent and offspring chromosomes combination
chrom_fitness,chrom_fit=[],[]
total_fitness=0
for m in range(population_size*2):
j_keys=[j for j in range(num_job)]
key_count={key:0 for key in j_keys}
j_count={key:0 for key in j_keys}
m_keys=[j+1 for j in range(num_mc)]
m_count={key:0 for key in m_keys}
for i in total_chromosome[m]:
gen_t=int(pt[i][key_count[i]])
gen_m=int(ms[i][key_count[i]])
j_count[i]=j_count[i]+gen_t
m_count[gen_m]=m_count[gen_m]+gen_t
if m_count[gen_m]<j_count[i]:
m_count[gen_m]=j_count[i]
elif m_count[gen_m]>j_count[i]:
j_count[i]=m_count[gen_m]
key_count[i]=key_count[i]+1
makespan=max(j_count.values())
chrom_fitness.append(1/makespan)
chrom_fit.append(makespan)
total_fitness=total_fitness+chrom_fitness[m]
'''----------selection(roulette wheel approach)----------'''
pk,qk=[],[]
for i in range(population_size*2):
pk.append(chrom_fitness[i]/total_fitness)
for i in range(population_size*2):
cumulative=0
for j in range(0,i+1):
cumulative=cumulative+pk[j]
qk.append(cumulative)
selection_rand=[np.random.rand() for i in range(population_size)]
for i in range(population_size):
if selection_rand[i]<=qk[0]:
population_list[i]=copy.deepcopy(total_chromosome[0])
else:
for j in range(0,population_size*2-1):
if selection_rand[i]>qk[j] and selection_rand[i]<=qk[j+1]:
population_list[i]=copy.deepcopy(total_chromosome[j+1])
break
'''----------comparison----------'''
for i in range(population_size*2):
if chrom_fit[i]<Tbest_now:
Tbest_now=chrom_fit[i]
sequence_now=copy.deepcopy(total_chromosome[i])
if Tbest_now<=Tbest:
Tbest=Tbest_now
sequence_best=copy.deepcopy(sequence_now)
makespan_record.append(Tbest)
'''----------result----------'''
print("optimal sequence",sequence_best)
print("optimal value:%f"%Tbest)
print('the elapsed time:%s'% (time.time() - start_time))
import matplotlib.pyplot as plt
%matplotlib inline
plt.plot([i for i in range(len(makespan_record))],makespan_record,'b')
plt.ylabel('makespan',fontsize=15)
plt.xlabel('generation',fontsize=15)
plt.show()
'''--------plot gantt chart-------'''
import pandas as pd
import plotly.plotly as py
import plotly.figure_factory as ff
import datetime
m_keys=[j+1 for j in range(num_mc)]
j_keys=[j for j in range(num_job)]
key_count={key:0 for key in j_keys}
j_count={key:0 for key in j_keys}
m_count={key:0 for key in m_keys}
j_record={}
for i in sequence_best:
gen_t=int(pt[i][key_count[i]])
gen_m=int(ms[i][key_count[i]])
j_count[i]=j_count[i]+gen_t
m_count[gen_m]=m_count[gen_m]+gen_t
if m_count[gen_m]<j_count[i]:
m_count[gen_m]=j_count[i]
elif m_count[gen_m]>j_count[i]:
j_count[i]=m_count[gen_m]
start_time=str(datetime.timedelta(seconds=j_count[i]-pt[i][key_count[i]])) # convert seconds to hours, minutes and seconds
end_time=str(datetime.timedelta(seconds=j_count[i]))
j_record[(i,gen_m)]=[start_time,end_time]
key_count[i]=key_count[i]+1
df=[]
for m in m_keys:
for j in j_keys:
df.append(dict(Task='Machine %s'%(m), Start='2018-07-14 %s'%(str(j_record[(j,m)][0])), Finish='2018-07-14 %s'%(str(j_record[(j,m)][1])),Resource='Job %s'%(j+1)))
fig = ff.create_gantt(df, index_col='Resource', show_colorbar=True, group_tasks=True, showgrid_x=True, title='Job shop Schedule')
py.iplot(fig, filename='GA_job_shop_scheduling', world_readable=True)