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main_single_pole_cc.py
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main_single_pole_cc.py
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import numpy as np
import argparse
import os
from copy import deepcopy
from time import time
from pprint import pprint
from utils.data_manipulators import *
from evolution.operators import *
from to.probabilistic_model import ProbabilisticModel
from to.mixture_model import MixtureModel
from evolution.chromosome import *
from utils.double_pole_physics import PoledCart
from utils.neural_network import Net
def evolutionary_algorithm(sLen,
psize=100,
gen=100,
muc=10,
mum=10,
stop_condition=True,
create_model=True):
src_model = None
fitness_hist = np.zeros((gen, psize))
fitness_time = np.zeros((gen))
cart = PoledCart(sLen)
n_input = 6
n_hidden = 10
n_output = 1
net = Net(n_input, n_hidden, n_output)
n_vars = net.nVariables
init_func = lambda n: 12 * np.random.rand(n) - 6
pop = get_pop_init(psize, n_vars, init_func, p_type='double_pole')
start = time()
for j in range(psize):
pop[j].fitness_calc(net, cart, sLen)
bestfitness = np.max(pop).fitness
fitness = Chromosome.fitness_to_numpy(pop)
fitness_hist[0, :] = fitness
fitness_time[0] = time() - start
counter = 0 # Generation Repetition without fitness improvement counter
for i in range(1, gen):
start = time()
randlist = np.random.permutation(psize)
offsprings = np.ndarray(psize, dtype=object)
# Crossover & Mutation
for j in range(0, psize, 2):
offsprings[j] = ChromosomePole(n_vars)
offsprings[j + 1] = ChromosomePole(n_vars)
p1 = randlist[j]
p2 = randlist[j + 1]
offsprings[j].genes, offsprings[j + 1].genes = sbx_crossover(
pop[p1], pop[p2], muc, n_vars)
offsprings[j].mutation(mum, n_vars)
offsprings[j + 1].mutation(mum, n_vars)
# Fitness Calculation
cfitness = np.zeros(psize)
for j in range(psize):
# print(pop[j].genes)
cfitness[j] = offsprings[j].fitness_calc(net, cart, sLen)
# Selection
pop, fitness = total_selection(np.concatenate((pop, offsprings)),
np.concatenate((fitness, cfitness)),
psize)
fitness_hist[i, :] = fitness
if fitness[0] > bestfitness:
bestfitness = fitness[0]
counter = 0
else:
counter += 1
print('Generation %d best fitness = %f' % (i, bestfitness))
if fitness[0] - 2000 > -0.0001 and stop_condition:
print('Solution found!')
fitness_hist[i:, :] = fitness[0]
break
fitness_time[i] = time() - start
best_sol = pop[0]
if create_model and fitness_hist[-1, 0] - 2000 > -0.0001:
model = ProbabilisticModel('mvarnorm')
print('build model input shape: ',
Chromosome.genes_to_numpy(pop).shape)
model.buildModel(Chromosome.genes_to_numpy(pop))
print("Model built successfully!")
src_model = model
elif not create_model:
print("Evolutionary algorithm didn't reach the criteria!")
# src_models.append(model)
return src_model, best_sol, fitness_hist, fitness_time
class IsFound:
value = None
def transfer_cc(sLen,
src_models,
psize=100,
gen=100,
muc=10,
mum=10,
reps=1,
delta=2,
initial_genes_value=1/14,
initial_lr=0.9,
build_model=True):
s_len = sLen
if not src_models:
raise ValueError(
'No probabilistic models stored for transfer optimization.')
init_func = lambda n: 12 * np.random.rand(n) - 6
fitness_hist = np.zeros([reps, gen, psize])
fitness_time = np.zeros((
reps,
gen,
))
genes_list = list()
dims_s2 = len(src_models) + 1
init_func_es = lambda n: np.ones(n) * initial_genes_value
cart = PoledCart(sLen)
n_input = 6
n_hidden = 10
n_output = 1
net = Net(n_input, n_hidden, n_output)
n_vars = net.nVariables
model_num = len(src_models)
shared_target_fitness = None
target_array = None
pop = None
func_eval_nums = []
for rep in range(reps):
print('-------------------- rep: {} -------------------'.format(rep))
genes_hist = []
start = time()
# Evolution Strategy Initialization
second_specie = StrategyChromosome(dims_s2, init_func=init_func_es)
second_specie.fitness = 0
mutation_strength = np.zeros(dims_s2)
samples_count = np.zeros(dims_s2)
lr = initial_lr
func_eval_num = 0
solution_found = IsFound()
solution_found.value = False
pop = get_pop_init(psize, n_vars, init_func, p_type='double_pole')
for j in range(psize):
pop[j].fitness_calc(net, cart, sLen)
if not solution_found.value:
func_eval_num += 1
if pop[j].fitness - 2000 > -0.0001:
solution_found.value = True
bestfitness = np.max(pop).fitness
fitness = Chromosome.fitness_to_numpy(pop)
fitness_hist[rep, 0, :] = fitness
fitness_time[rep, 0] = time() - start
print('Generation 0 best fitness = %f' % bestfitness)
for i in range(1, gen):
start = time()
cfitness = np.zeros(psize)
if i % delta == 0:
target_array = Chromosome.genes_to_numpy(pop)
shared_target_fitness = np.mean(fitness)
second_specie_offspring = deepcopy(second_specie)
if i // delta != 1:
mutation_strength[-1] = shared_target_fitness
second_specie_offspring. \
mutation_enhanced(mutation_strength, 0, 1, lr=lr)
target_model = ProbabilisticModel(modelType='mvarnorm')
target_model.buildModel(target_array)
_, offsprings, mutation_strength, samples_count, eval_num = second_specie_offspring. \
fitness_calc_pole(net, cart, s_len, src_models,
target_model, psize, mutation_strength,
samples_count, solution_found=solution_found)
func_eval_num += eval_num
cfitness = Chromosome.fitness_to_numpy(offsprings)
if second_specie.fitness <= second_specie_offspring.fitness:
second_specie = second_specie_offspring
genes_hist.append(second_specie.genes)
#################################################################
# print('Probabilities: {}'.format(prob_rep[i,:]))
# print('Genese: %s' % np.array(second_specie_offspring.genes))
else:
# Crossover & Mutation
randlist = np.random.permutation(psize)
offsprings = np.ndarray(psize, dtype=object)
for j in range(0, psize, 2):
offsprings[j] = ChromosomePole(n_vars)
offsprings[j + 1] = ChromosomePole(n_vars)
p1 = randlist[j]
p2 = randlist[j + 1]
offsprings[j].genes, offsprings[j +
1].genes = sbx_crossover(
pop[p1], pop[p2], muc,
n_vars)
offsprings[j].mutation(mum, n_vars)
offsprings[j + 1].mutation(mum, n_vars)
# Fitness Calculation
cfitness = np.zeros(psize)
for j in range(psize):
cfitness[j] = offsprings[j].fitness_calc(net, cart, sLen)
if not solution_found.value:
func_eval_num += 1
if cfitness[j] - 2000 > -0.0001:
# func_eval_num = (i*psize + j+1)
solution_found.value = True
if i % delta == 0:
print('cfitness mean: ', np.mean(cfitness))
# Selection
pop, fitness = total_selection(np.concatenate((pop, offsprings)),
np.concatenate((fitness, cfitness)),
psize)
fitness_hist[rep, i, :] = fitness
fitness_time[rep, i] = time() - start
if fitness[0] > bestfitness:
bestfitness = fitness[0]
print('Generation %d best fitness = %f' % (i, bestfitness))
if fitness[0] - 2000 > -0.0001 and build_model:
print('Solution found!')
fitness_hist[rep, i:, :] = fitness[0]
break
func_eval_nums.append(func_eval_num if solution_found.value else None)
genes_list.append(genes_hist)
return fitness_hist, genes_list, fitness_time, func_eval_nums
def transfer_ea(sLen,
src_models,
psize=100,
gen=100,
muc=10,
mum=10,
reps=1,
delta=2,
build_model=True):
if not src_models:
raise ValueError(
'No probabilistic models stored for transfer optimization.')
init_func = lambda n: 12 * np.random.rand(n) - 6
fitness_hist = np.zeros([reps, gen, psize])
fitness_time = np.zeros((
reps,
gen,
))
alpha = list()
cart = PoledCart(sLen)
n_input = 6
n_hidden = 10
n_output = 1
net = Net(n_input, n_hidden, n_output)
n_vars = net.nVariables
pop = None
func_eval_nums = []
sols_found = []
for rep in range(reps):
alpha_rep = []
func_eval_num = 0
solution_found = False
pop = get_pop_init(psize, n_vars, init_func, p_type='double_pole')
start = time()
for j in range(psize):
pop[j].fitness_calc(net, cart, sLen)
if not solution_found:
func_eval_num += 1
if pop[j].fitness - 2000 > -0.0001:
# func_eval_num = (i*psize + j+1)
solution_found = True
bestfitness = np.max(pop).fitness
fitness = Chromosome.fitness_to_numpy(pop)
fitness_hist[rep, 0, :] = fitness
fitness_time[rep, 0] = time() - start
print('Generation 0 best fitness = %f' % bestfitness)
for i in range(1, gen):
start = time()
if i % delta == 0:
mixModel = MixtureModel(src_models)
mixModel.createTable(Chromosome.genes_to_numpy(pop), True,
'mvarnorm')
mixModel.EMstacking()
mixModel.mutate()
offsprings = mixModel.sample(psize)
offsprings = np.array(
[ChromosomePole(offspring) for offspring in offsprings])
alpha_rep = np.concatenate((alpha_rep, mixModel.alpha), axis=0)
print('Mixture coefficients: %s' % np.array(mixModel.alpha))
else:
# Crossover & Mutation
randlist = np.random.permutation(psize)
offsprings = np.ndarray(psize, dtype=object)
for j in range(0, psize, 2):
offsprings[j] = ChromosomePole(n_vars)
offsprings[j + 1] = ChromosomePole(n_vars)
p1 = randlist[j]
p2 = randlist[j + 1]
offsprings[j].genes, offsprings[j +
1].genes = sbx_crossover(
pop[p1], pop[p2], muc,
n_vars)
offsprings[j].mutation(mum, n_vars)
offsprings[j + 1].mutation(mum, n_vars)
# Fitness Calculation
cfitness = np.zeros(psize)
for j in range(psize):
cfitness[j] = offsprings[j].fitness_calc(net, cart, sLen)
if not solution_found:
func_eval_num += 1
if cfitness[j] - 2000 > -0.0001:
# func_eval_num = (i*psize + j+1)
solution_found = True
if i % delta == 0:
print('cfitness mean: ', np.mean(cfitness))
# Selection
pop, fitness = total_selection(np.concatenate((pop, offsprings)),
np.concatenate((fitness, cfitness)),
psize)
fitness_hist[rep, i, :] = fitness
fitness_time[rep, i] = time() - start
if fitness[0] > bestfitness:
bestfitness = fitness[0]
print('Generation %d best fitness = %f' % (i, bestfitness))
print(fitness[0])
if fitness[0] - 2000 > -0.0001:
print('Solution found!')
fitness_hist[rep, i:, :] = fitness[0]
func_eval_nums.append(func_eval_num)
sols_found.append(solution_found)
break
print()
alpha.append(alpha_rep)
model = None
print('fitness_hist: ', fitness_hist[0, -1, 0])
if build_model and fitness_hist[0, -1, 0] - 2000 > -0.0001:
model = ProbabilisticModel('mvarnorm')
print('build model input shape: ',
Chromosome.genes_to_numpy(pop).shape)
model.buildModel(Chromosome.genes_to_numpy(pop))
print("Model built successfully!")
# src_model = model
else:
print("Evolutionary algorithm didn't reach the criteria!")
if build_model:
return fitness_hist[0, ...], alpha, fitness_time[0, ...], model
else:
return fitness_hist, alpha, fitness_time, sols_found, func_eval_nums
def get_args():
pass
def check_args(args):
if args.sample_size < args.sub_sample_size:
raise ValueError('sub_sample_size has greater value than sample_size')
def main_source(s_poles_length,
target_pole_len,
gen=100,
reps=50,
src_save_dir='models/pole_models/src_model'):
# src_models = np.ndarray(len(s_poles_length), dtype=object)
src_models = []
src_model = None
if os.path.isfile(src_save_dir + '_{}.pkl'.format(s_poles_length[0])):
src_model = Tools.load_from_file(src_save_dir +
'_{}'.format(s_poles_length[0]))
print(
'---------------------- source model loaded (length: {}) ---------------------'
.format(s_poles_length[0]))
else:
src_model, _, _, _ = evolutionary_algorithm(s_poles_length[0],
psize=100,
gen=gen,
muc=10,
mum=10,
stop_condition=True,
create_model=True)
Tools.save_to_file(src_save_dir + '_{}'.format(s_poles_length[0]),
src_model)
print(
'---------------------- source model created (length: {}) ---------------------'
.format(s_poles_length[0]))
src_models.append(src_model)
for i, s_len in enumerate(s_poles_length[1:]):
if os.path.isfile(src_save_dir + '_{}.pkl'.format(s_len)):
src_model = Tools.load_from_file(src_save_dir +
'_{}'.format(s_len))
src_models.append(src_model)
print(
'---------------------- source model loaded (length: {}) ---------------------'
.format(s_len))
else:
while (True):
print('-------------- S_Length: {} ------------'.format(s_len))
_, _, _, src_model = transfer_ea(s_len,
src_models,
psize=100,
gen=gen,
muc=10,
mum=10,
reps=1,
build_model=True)
if src_model is not None:
Tools.save_to_file(src_save_dir + '_{}'.format(s_len),
src_model)
src_models.append(src_model)
print(
'---------------------- source model created (length: {}) ---------------------'
.format(s_len))
break
fitness_hist, genes_list, fitness_time, func_eval_nums = \
transfer_cc(target_pole_len, src_models, psize=50, gen=100,
delta=2, muc=10, mum=10, reps=reps, build_model=False, initial_genes_value=1/14)
Tools.save_to_file(
'single_cc_pole_outcome',
[fitness_hist, genes_list, fitness_time, func_eval_nums])
solved_indices = np.array(func_eval_nums) != None
solved_instances = np.array(func_eval_nums)[solved_indices]
print('Function Evaluations: {}'.format(np.sum(solved_instances)))
print('Solutions found: {}/{}'.format(np.sum(solved_indices), reps))
if __name__ == '__main__':
src_poles_length = [
0.1, 0.2, 0.3, 0.4, 0.5, 0.55, 0.6, 0.65, 0.675, 0.7, 0.725, 0.75,
0.775
]
target_pole_len = 0.825
main_source(src_poles_length, target_pole_len, reps=50, gen=100)