【python(deap库)实现】GEAP 遗传算法/遗传编程 genetic programming +
2021-01-19 14:13
标签:int smi 适应 pmi rand size import 指示 继承 本文不介绍原理的东西,主要是实现进化算法的python实现。 在创建单目标优化问题时,weights用来指示最大化和最小化。此处-1.0即代表问题是一个最小化问题,对于最大化,应将weights改为正数,如1.0。 另外即使是单目标优化,weights也需要是一个tuple,以保证单目标和多目标优化时数据结构的统一。 对于单目标优化问题,weights 的绝对值没有意义,只要符号选择正确即可。 实数编码(Value encoding):直接用实数对变量进行编码。优点是不用解码,基因表达非常简洁,而且能对应连续区间。但是实数编码后搜索区间连续,因此容易陷入局部最优。 评价部分是根据任务的特性高度定制的,DEAP库中并没有预置的评价函数模版。 在使用DEAP时,需要注意的是,无论是单目标还是多目标优化,评价函数的返回值必须是一个tuple类型。 DEAP中没有设定专门的reinsertion操作。可以简单的用python的list操作来完成选择 【python(deap库)实现】GEAP 遗传算法/遗传编程 genetic programming + 标签:int smi 适应 pmi rand size import 指示 继承 原文地址:https://www.cnblogs.com/PythonLearner/p/12907843.html
前言
原理介绍可以看这里,能学习要很多,我也在这里写了一些感受心得:
遗传算法/遗传编程 进化算法基于python DEAP库深度解析讲解1.优化问题的定义
单目标优化
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0, ))
多目标优化
creator.create(‘FitnessMulti‘, base.Fitness, weights=(-1.0, 1.0))
2.个体编码
实数编码
from deap import base, creator, tools
import random
IND_SIZE = 5
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0,)) #优化目标:单变量,求最小值
creator.create(‘Individual‘, list, fitness = creator.FitnessMin) #创建Individual类,继承list
toolbox = base.Toolbox()
toolbox.register(‘Attr_float‘, random.random)
toolbox.register(‘Individual‘, tools.initRepeat, creator.Individual, toolbox.Attr_float, n=IND_SIZE)
ind1 = toolbox.Individual()
print(ind1)
# 结果:[0.8579615693371493, 0.05774821674048369, 0.8812411734389638, 0.5854279538236896, 0.12908399219828248]
二进制编码
from deap import base, creator, tools
from scipy.stats import bernoulli
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0,)) #优化目标:单变量,求最小值
creator.create(‘Individual‘, list, fitness = creator.FitnessMin) #创建Individual类,继承list
GENE_LENGTH = 10
toolbox = base.Toolbox()
toolbox.register(‘Binary‘, bernoulli.rvs, 0.5) #注册一个Binary的alias,指向scipy.stats中的bernoulli.rvs,概率为0.5
toolbox.register(‘Individual‘, tools.initRepeat, creator.Individual, toolbox.Binary, n = GENE_LENGTH) #用tools.initRepeat生成长度为GENE_LENGTH的Individual
ind1 = toolbox.Individual()
print(ind1)
# 结果:[1, 0, 0, 0, 0, 1, 0, 1, 1, 0]
序列编码(Permutation encoding)
from deap import base, creator, tools
import random
creator.create("FitnessMin", base.Fitness, weights=(-1.0,))
creator.create("Individual", list, fitness=creator.FitnessMin)
IND_SIZE=10
toolbox = base.Toolbox()
toolbox.register("Indices", random.sample, range(IND_SIZE), IND_SIZE)
toolbox.register("Individual", tools.initIterate, creator.Individual,toolbox.Indices)
ind1 = toolbox.Individual()
print(ind1)
#结果:[0, 1, 5, 8, 2, 3, 6, 7, 9, 4]
粒子(Particles)
import random
from deap import base, creator, tools
creator.create("FitnessMax", base.Fitness, weights=(1.0, 1.0))
creator.create("Particle", list, fitness=creator.FitnessMax, speed=None,
smin=None, smax=None, best=None)
# 自定义的粒子初始化函数
def initParticle(pcls, size, pmin, pmax, smin, smax):
part = pcls(random.uniform(pmin, pmax) for _ in range(size))
part.speed = [random.uniform(smin, smax) for _ in range(size)]
part.smin = smin
part.smax = smax
return part
toolbox = base.Toolbox()
toolbox.register("Particle", initParticle, creator.Particle, size=2, pmin=-6, pmax=6, smin=-3, smax=3) #为自己编写的initParticle函数注册一个alias "Particle",调用时生成一个2维粒子,放在容器creator.Particle中,粒子的位置落在(-6,6)中,速度限制为(-3,3)
ind1 = toolbox.Particle()
print(ind1)
print(ind1.speed)
print(ind1.smin, ind1.smax)
# 结果:[-2.176528549934324, -3.0796558214905]
#[-2.9943676285620104, -0.3222138308543414]
#-3 3
print(ind1.fitness.valid)
# 结果:False
# 因为当前还没有计算适应度函数,所以粒子的最优适应度值还是invalid
3 初始种群建立
一般族群
from deap import base, creator, tools
from scipy.stats import bernoulli
# 定义问题
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0,)) # 单目标,最小化
creator.create(‘Individual‘, list, fitness = creator.FitnessMin)
# 生成个体
GENE_LENGTH = 5
toolbox = base.Toolbox() #实例化一个Toolbox
toolbox.register(‘Binary‘, bernoulli.rvs, 0.5)
toolbox.register(‘Individual‘, tools.initRepeat, creator.Individual, toolbox.Binary, n=GENE_LENGTH)
# 生成初始族群
N_POP = 10
toolbox.register(‘Population‘, tools.initRepeat, list, toolbox.Individual)
toolbox.Population(n = N_POP)
# 结果:
# [[1, 0, 1, 1, 0],
# [0, 1, 1, 0, 0],
# [0, 1, 0, 0, 0],
# [1, 1, 0, 1, 0],
# [0, 1, 1, 1, 1],
# [0, 1, 1, 1, 1],
# [1, 0, 0, 0, 1],
# [1, 1, 0, 1, 0],
# [0, 1, 1, 0, 1],
# [1, 0, 0, 0, 0]]
同类群
toolbox.register("deme", tools.initRepeat, list, toolbox.individual)
DEME_SIZES = 10, 50, 100
population = [toolbox.deme(n=i) for i in DEME_SIZES]
粒子群
creator.create("Swarm", list, gbest=None, gbestfit=creator.FitnessMax)
toolbox.register("swarm", tools.initRepeat, creator.Swarm, toolbox.particle)
4 评价
from deap import base, creator, tools
import numpy as np
# 定义问题
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0,)) #优化目标:单变量,求最小值
creator.create(‘Individual‘, list, fitness = creator.FitnessMin) #创建Individual类,继承list
# 生成个体
IND_SIZE = 5
toolbox = base.Toolbox()
toolbox.register(‘Attr_float‘, np.random.rand)
toolbox.register(‘Individual‘, tools.initRepeat, creator.Individual, toolbox.Attr_float, n=IND_SIZE)
# 生成初始族群
N_POP = 10
toolbox.register(‘Population‘, tools.initRepeat, list, toolbox.Individual)
pop = toolbox.Population(n = N_POP)
# 定义评价函数
def evaluate(individual):
return sum(individual), #注意这个逗号,即使是单变量优化问题,也需要返回tuple
# 评价初始族群
toolbox.register(‘Evaluate‘, evaluate)
fitnesses = map(toolbox.Evaluate, pop)
for ind, fit in zip(pop, fitnesses):
ind.fitness.values = fit
print(ind.fitness.values)
# 结果:
# (2.593989197511478,)
# (1.1287944225903104,)
# (2.6030877077096717,)
# (3.304964061515382,)
# (2.534627558467466,)
# (2.4697149450205536,)
# (2.344837782191844,)
# (1.8959030773060852,)
# (2.5192475334239,)
# (3.5069764929866585,)
5 配种选择
from deap import base, creator, tools
import numpy as np
# 定义问题
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0,)) #优化目标:单变量,求最小值
creator.create(‘Individual‘, list, fitness = creator.FitnessMin) #创建Individual类,继承list
# 生成个体
IND_SIZE = 5
toolbox = base.Toolbox()
toolbox.register(‘Attr_float‘, np.random.rand)
toolbox.register(‘Individual‘, tools.initRepeat, creator.Individual, toolbox.Attr_float, n=IND_SIZE)
# 生成初始族群
N_POP = 10
toolbox.register(‘Population‘, tools.initRepeat, list, toolbox.Individual)
pop = toolbox.Population(n = N_POP)
# 定义评价函数
def evaluate(individual):
return sum(individual), #注意这个逗号,即使是单变量优化问题,也需要返回tuple
# 评价初始族群
toolbox.register(‘Evaluate‘, evaluate)
fitnesses = map(toolbox.Evaluate, pop)
for ind, fit in zip(pop, fitnesses):
ind.fitness.values = fit
# 选择方式1:锦标赛选择
toolbox.register(‘TourSel‘, tools.selTournament, tournsize = 2) # 注册Tournsize为2的锦标赛选择
selectedTour = toolbox.TourSel(pop, 5) # 选择5个个体
print(‘锦标赛选择结果:‘)
for ind in selectedTour:
print(ind)
print(ind.fitness.values)
# 选择方式2: 轮盘赌选择
toolbox.register(‘RoulSel‘, tools.selRoulette)
selectedRoul = toolbox.RoulSel(pop, 5)
print(‘轮盘赌选择结果:‘)
for ind in selectedRoul:
print(ind)
print(ind.fitness.values)
# 选择方式3: 随机普遍抽样选择
toolbox.register(‘StoSel‘, tools.selStochasticUniversalSampling)
selectedSto = toolbox.StoSel(pop, 5)
print(‘随机普遍抽样选择结果:‘)
for ind in selectedSto:
print(ind)
print(ind.fitness.values)
#结果:
#锦标赛选择结果:
#[0.2673058115582905, 0.8131397980144155, 0.13627430737326807, 0.10792026110464248, 0.4166962522797264]
#(1.741336430330343,)
#[0.5448284697291571, 0.9702727117158071, 0.03349947770537576, 0.7018813286570782, 0.3244029157717422]
#(2.5748849035791603,)
#[0.8525836387058023, 0.28064482205939634, 0.9235436615033125, 0.6429467684175085, 0.5965523553349544]
#(3.296271246020974,)
#[0.5243293164960845, 0.37883291328325286, 0.28423194217619596, 0.5005947374376103, 0.3017896612109636]
#(1.9897785706041071,)
#[0.4038211036464676, 0.841374996509095, 0.3555644512425019, 0.5849111474726337, 0.058759891556433574]
#(2.2444315904271317,)
#轮盘赌选择结果:
#[0.42469039733882064, 0.8411201950346711, 0.6322812691061555, 0.7566549973076343, 0.9352307652371067]
#(3.5899776240243884,)
#[0.42469039733882064, 0.8411201950346711, 0.6322812691061555, 0.7566549973076343, 0.9352307652371067]
#(3.5899776240243884,)
#[0.5448284697291571, 0.9702727117158071, 0.03349947770537576, 0.7018813286570782, 0.3244029157717422]
#(2.5748849035791603,)
#[0.630305953330188, 0.09565983206218687, 0.890691659939096, 0.8706091807317707, 0.19708949882847437]
#(2.684356124891716,)
#[0.5961060867498598, 0.4300051776616509, 0.4512760237511251, 0.047731561819711055, 0.009892120639829804]
#(1.5350109706221766,)
#随机普遍抽样选择结果:
#[0.2673058115582905, 0.8131397980144155, 0.13627430737326807, 0.10792026110464248, 0.4166962522797264]
#(1.741336430330343,)
#[0.4038211036464676, 0.841374996509095, 0.3555644512425019, 0.5849111474726337, 0.058759891556433574]
#(2.2444315904271317,)
#[0.630305953330188, 0.09565983206218687, 0.890691659939096, 0.8706091807317707, 0.19708949882847437]
#(2.684356124891716,)
#[0.40659881466060876, 0.8387139101647804, 0.28504735705240236, 0.46171554118627334, 0.7843353275244066]
#(2.7764109505884718,)
#[0.42469039733882064, 0.8411201950346711, 0.6322812691061555, 0.7566549973076343, 0.9352307652371067]
#(3.5899776240243884,)
6 变异
from deap import base, creator, tools
import random
# 创建两个序列编码个体
random.seed(42) # 保证结果可复现
IND_SIZE = 8
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0, ))
creator.create(‘Individual‘, list, fitness = creator.FitnessMin)
toolbox = base.Toolbox()
toolbox.register(‘Indices‘, random.sample, range(IND_SIZE), IND_SIZE)
toolbox.register(‘Individual‘, tools.initIterate, creator.Individual, toolbox.Indices)
ind1, ind2 = [toolbox.Individual() for _ in range(2)]
print(ind1, ‘\n‘, ind2)
# 结果:[1, 0, 5, 2, 7, 6, 4, 3]
# [1, 4, 3, 0, 6, 5, 2, 7]
# 单点交叉
child1, child2 = [toolbox.clone(ind) for ind in (ind1, ind2)]
tools.cxOnePoint(child1, child2)
print(child1, ‘\n‘, child2)
#结果:[1, 4, 3, 0, 6, 5, 2, 7]
# [1, 0, 5, 2, 7, 6, 4, 3]
# 可以看到从第四位开始被切开并交换了
# 两点交叉
child1, child2 = [toolbox.clone(ind) for ind in (ind1, ind2)]
tools.cxTwoPoint(child1, child2)
print(child1, ‘\n‘, child2)
# 结果:[1, 0, 5, 2, 6, 5, 2, 3]
# [1, 4, 3, 0, 7, 6, 4, 7]
# 基因段[6, 5, 2]与[7, 6, 4]互换了
# 均匀交叉
child1, child2 = [toolbox.clone(ind) for ind in (ind1, ind2)]
tools.cxUniform(child1, child2, 0.5)
print(child1, ‘\n‘, child2)
# 结果:[1, 0, 3, 2, 7, 5, 4, 3]
# [1, 4, 5, 0, 6, 6, 2, 7]
# 部分匹配交叉
child1, child2 = [toolbox.clone(ind) for ind in (ind1, ind2)]
tools.cxPartialyMatched(child1, child2)
print(child1, ‘\n‘, child2)
# 结果:[1, 0, 5, 2, 6, 7, 4, 3]
# [1, 4, 3, 0, 7, 5, 2, 6]
# 可以看到与之前交叉算子的明显不同,这里的每个序列都没有冲突
# 有序交叉
child1, child2 = [toolbox.clone(ind) for ind in (ind1, ind2)]
tools.cxOrdered(child1, child2)
print(child1, ‘\n‘, child2)
# 结果:[5, 4, 3, 2, 7, 6, 1, 0]
# [3, 0, 5, 6, 2, 7, 1, 4]
# 混乱单点交叉
child1, child2 = [toolbox.clone(ind) for ind in (ind1, ind2)]
tools.cxMessyOnePoint(child1, child2)
print(child1, ‘\n‘, child2)
# 结果:[1, 0, 5, 2, 7, 4, 3, 0, 6, 5, 2, 7]
# [1, 6, 4, 3]
# 注意个体序列长度的改变
7 突变
from deap import base, creator, tools
import random
# 创建一个实数编码个体
random.seed(42) # 保证结果可复现
IND_SIZE = 5
creator.create(‘FitnessMin‘, base.Fitness, weights=(-1.0, ))
creator.create(‘Individual‘, list, fitness = creator.FitnessMin)
toolbox = base.Toolbox()
toolbox.register(‘Attr_float‘, random.random)
toolbox.register(‘Individual‘, tools.initRepeat, creator.Individual, toolbox.Attr_float, IND_SIZE)
ind1 = toolbox.Individual()
print(ind1)
# 结果:[0.6394267984578837, 0.025010755222666936, 0.27502931836911926, 0.22321073814882275, 0.7364712141640124]
# 高斯突变
mutant = toolbox.clone(ind1)
tools.mutGaussian(mutant, 3, 0.1, 1)
print(mutant)
# 结果:[3.672658632864655, 2.99827700737295, 3.2982590920597916, 3.339566606808737, 3.6626390539295306]
# 可以看到当均值给到3之后,变异形成的个体均值从0.5也增大到了3附近
# 乱序突变
mutant = toolbox.clone(ind1)
tools.mutShuffleIndexes(mutant, 0.5)
print(mutant)
# 结果:[0.22321073814882275, 0.7364712141640124, 0.025010755222666936, 0.6394267984578837, 0.27502931836911926]
# 有界多项式突变
mutant = toolbox.clone(ind1)
tools.mutPolynomialBounded(mutant, 20, 0, 1, 0.5)
print(mutant)
# 结果:[0.674443861742489, 0.020055418656044655, 0.2573977358171454, 0.11555018832942898, 0.6725269223692601]
# 均匀整数突变
mutant = toolbox.clone(ind1)
tools.mutUniformInt(mutant, 1, 5, 0.5)
print(mutant)
# 结果:[0.6394267984578837, 3, 0.27502931836911926, 0.22321073814882275, 0.7364712141640124]
# 可以看到在第二个位置生成了整数3
8 环境选择
上一篇:python的基本格式化输出
下一篇:再谈C语言宏定义
文章标题:【python(deap库)实现】GEAP 遗传算法/遗传编程 genetic programming +
文章链接:http://soscw.com/index.php/essay/44094.html