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minimize - 多目标优化示例 Pyomo

转载 作者:行者123 更新时间:2023-12-02 01:36:38 35 4
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Pyomo 中多目标优化的任何示例吗?

我正在尝试最小化 4 个目标(非线性),并且我想使用 pyomo 和 ipopt。还可以访问古罗比。

我想看一个非常简单的例子,我们尝试优化一系列决策变量(不仅仅是一个维度,也可能是一个向量)的两个或多个目标(一个最小化和一个最大化)。

我拥有的 Pyomo 书( https://link.springer.com/content/pdf/10.1007%2F978-3-319-58821-6.pdf )没有提供任何线索。

最佳答案

使用 Pyomo,你必须自己实现它。我现在正在做。最好的方法是增强 epsilon 约束方法。它总是有效的并且总是找到全局帕累托最优。最好的例子在这里:多目标数学规划问题中 epsilon 约束方法的有效实现,Mavrotas, G, 2009

编辑:这里我在 pyomo 中编写了上面论文中的示例:它将首先最大化 f1,然后最大化 f2。然后它将应用正常的 epsilon 约束并绘制低效的 Pareto 前沿,然后它将应用增强的 epsilon 约束,这最终是要使用的方法!

from pyomo.environ import *
import matplotlib.pyplot as plt


# max f1 = X1 <br>
# max f2 = 3 X1 + 4 X2 <br>
# st X1 <= 20 <br>
# X2 <= 40 <br>
# 5 X1 + 4 X2 <= 200 <br>

model = ConcreteModel()

model.X1 = Var(within=NonNegativeReals)
model.X2 = Var(within=NonNegativeReals)

model.C1 = Constraint(expr = model.X1 <= 20)
model.C2 = Constraint(expr = model.X2 <= 40)
model.C3 = Constraint(expr = 5 * model.X1 + 4 * model.X2 <= 200)

model.f1 = Var()
model.f2 = Var()
model.C_f1 = Constraint(expr= model.f1 == model.X1)
model.C_f2 = Constraint(expr= model.f2 == 3 * model.X1 + 4 * model.X2)
model.O_f1 = Objective(expr= model.f1 , sense=maximize)
model.O_f2 = Objective(expr= model.f2 , sense=maximize)

model.O_f2.deactivate()

solver = SolverFactory('cplex')
solver.solve(model);

print( '( X1 , X2 ) = ( ' + str(value(model.X1)) + ' , ' + str(value(model.X2)) + ' )')
print( 'f1 = ' + str(value(model.f1)) )
print( 'f2 = ' + str(value(model.f2)) )
f2_min = value(model.f2)


# ## max f2

model.O_f2.activate()
model.O_f1.deactivate()

solver = SolverFactory('cplex')
solver.solve(model);

print( '( X1 , X2 ) = ( ' + str(value(model.X1)) + ' , ' + str(value(model.X2)) + ' )')
print( 'f1 = ' + str(value(model.f1)) )
print( 'f2 = ' + str(value(model.f2)) )
f2_max = value(model.f2)


# ## apply normal $\epsilon$-Constraint

model.O_f1.activate()
model.O_f2.deactivate()

model.e = Param(initialize=0, mutable=True)

model.C_epsilon = Constraint(expr = model.f2 == model.e)

solver.solve(model);

print('Each iteration will keep f2 lower than some values between f2_min and f2_max, so [' + str(f2_min) + ', ' + str(f2_max) + ']')

n = 4
step = int((f2_max - f2_min) / n)
steps = list(range(int(f2_min),int(f2_max),step)) + [f2_max]

x1_l = []
x2_l = []
for i in steps:
model.e = i
solver.solve(model);
x1_l.append(value(model.X1))
x2_l.append(value(model.X2))
plt.plot(x1_l,x2_l,'o-.');
plt.title('inefficient Pareto-front');
plt.grid(True);


# ## apply augmented $\epsilon$-Constraint

# max f2 + delta*epsilon <br>
# s.t. f2 - s = e

model.del_component(model.O_f1)
model.del_component(model.O_f2)
model.del_component(model.C_epsilon)

model.delta = Param(initialize=0.00001)

model.s = Var(within=NonNegativeReals)

model.O_f1 = Objective(expr = model.f1 + model.delta * model.s, sense=maximize)

model.C_e = Constraint(expr = model.f2 - model.s == model.e)

x1_l = []
x2_l = []
for i in range(160,190,6):
model.e = i
solver.solve(model);
x1_l.append(value(model.X1))
x2_l.append(value(model.X2))
plt.plot(x1_l,x2_l,'o-.');
plt.title('efficient Pareto-front');
plt.grid(True);

关于minimize - 多目标优化示例 Pyomo,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/50742999/

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