运筹系列12:约束规划和python求解

1. 从算式谜问题说起

SEND + MORE = MONEY,每一个字母代表一个数字,如何求解?
这个问题显然不是传统意义上的整数规划问题,并没有需要进行优化的目标函数,因此使用约束规划进行求解,问题建模如下:

from ortools.sat.python import cp_model
# Creates the model.
model = cp_model.CpModel()
kBase = 10
# Creates the variables.
s = model.NewIntVar(1, kBase - 1, 'S');
e = model.NewIntVar(0, kBase - 1, 'E');
n = model.NewIntVar(0, kBase - 1, 'N');
d = model.NewIntVar(0, kBase - 1, 'D');
m = model.NewIntVar(1, kBase - 1, 'M');
o = model.NewIntVar(0, kBase - 1, 'O');
r = model.NewIntVar(0, kBase - 1, 'R');
y = model.NewIntVar(0, kBase - 1, 'Y');
letters = [s,e,n,d,m,o,r,y]

# Creates the constraints.
model.AddAllDifferent(letters)
model.Add(d  + e + kBase * (n+r) + kBase * kBase * (e+o) + kBase * kBase * kBase * (s+m) == 
          y + kBase * e + kBase * kBase * n + kBase * kBase * kBase * o + kBase * kBase * kBase * kBase * m)
# Creates a solver and solves the model.
solver = cp_model.CpSolver()

注意其中有一个model.AddAllDifferent(letters),是要求所有变量都不相等的快速表达模式。

2. 输出一个可行解

如果只需要输出一个可行解,可以参照上一节的内容,将下列代码添加至模型之后:

status = solver.Solve(model)
print('status = %s' % solver.StatusName(status))
for v in letters:
    print('%s=%i' % (v, solver.Value(v)), end=' ')

输出为:

status = FEASIBLE
S=9 E=5 N=6 D=7 M=1 O=0 R=8 Y=2 

3. 输出所有解

若要输出所有解,可以调用cp_model.CpSolver.SearchForAllSolutions(cp_model.CpModel, 回调函数(变量list))。

class VarArraySolutionPrinter(cp_model.CpSolverSolutionCallback):
    """Print intermediate solutions."""

    def __init__(self, variables):
        cp_model.CpSolverSolutionCallback.__init__(self)
        self.__variables = variables
        self.__solution_count = 0

    def OnSolutionCallback(self):
        self.__solution_count += 1
        for v in self.__variables:
            print('%s=%i' % (v, self.Value(v)), end=' ')
        print()

    def SolutionCount(self):
        return self.__solution_count
        
solution_printer = VarArraySolutionPrinter(letters)
status = solver.SearchForAllSolutions(model, solution_printer)

print('Status = %s' % solver.StatusName(status))
print('Number of solutions found: %i' % solution_printer.SolutionCount())

结果为:

S=9 E=5 N=6 D=7 M=1 O=0 R=8 Y=2 
Status = FEASIBLE
Number of solutions found: 1

4. 设置结束条件

当问题规模比较大时,我们可以设置一些结束条件(解数量限制或者时间限制)。
时间限制的话,添加如下代码即可:

solver.parameters.max_time_in_seconds = 10.0

解数量限制的话,修改solver回调函数,将__solution__limit修改为限制值即可,参考如下代码:

class VarArraySolutionPrinterWithLimit(cp_model.CpSolverSolutionCallback):
    def __init__(self, variables, limit):
        cp_model.CpSolverSolutionCallback.__init__(self)
        self.__variables = variables
        self.__solution_count = 0
        self.__solution_limit = limit

    def OnSolutionCallback(self):
        self.__solution_count += 1
        for v in self.__variables:
            print('%s=%i' % (v, self.Value(v)), end=' ')
        print()
        if self.__solution_count >= self.__solution_limit:
            print('Stop search after %i solutions' % self.__solution_limit)
            self.StopSearch()

    def SolutionCount(self):
        return self.__solution_count

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转载自blog.csdn.net/kittyzc/article/details/84260593