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  • Integer Optimization(借助ortools)

    注:中文非直接翻译英文,而是理解加工后的笔记,记录英文仅为学其专业表述。

    Mixed-Integer Programming

    变量部分(非全部)为整数的问题,可以用混合整数规划来解决Mixed Integer Programming (MIP)。MIP也可称为混合整数线性规划问题,Mixed Integer Linear Programming (MILP)。

    MIP solvers

    OR-Tools 提供多种MIP求解器,默认是开源求解器 Coin-or branch and cut (CBC)。如果从源码安装,可以使用其他第三方求解器如:

    • SCIP
    • GLPK
    • Gurobi

    步骤:

    • 导入求解器
    • 声明求解器
    • 调用求解器

    eg:

    • 目标: maximize(x + 10y)
    • 约束:
      • x + 7 y ≤ 17.5
      • x ≤ 3.5
      • x ≥ 0
      • y ≥ 0
      • x, y 都是整数
    from ortools.linear_solver import pywraplp
    
    def main():
        # Create the mip solver with the CBC backend.
        solver = pywraplp.Solver('simple_mip_program',
                                 pywraplp.Solver.CBC_MIXED_INTEGER_PROGRAMMING)
    
        infinity = solver.infinity()
        # x and y are integer non-negative variables.
        x = solver.IntVar(0.0, infinity, 'x')
        y = solver.IntVar(0.0, infinity, 'y')
    
        print('Number of variables =', solver.NumVariables())
    
        # x + 7 * y <= 17.5.
        solver.Add(x + 7 * y <= 17.5)
    
        # x <= 3.5.
        solver.Add(x <= 3.5)
    
        print('Number of constraints =', solver.NumConstraints())
    
        # Maximize x + 10 * y.
        solver.Maximize(x + 10 * y)
    
        result_status = solver.Solve()
        # The problem has an optimal solution.
        assert result_status == pywraplp.Solver.OPTIMAL
    
        # The solution looks legit (when using solvers others than
        # GLOP_LINEAR_PROGRAMMING, verifying the solution is highly recommended!).
        assert solver.VerifySolution(1e-7, True)
    
        print('Solution:')
        print('Objective value =', solver.Objective().Value())
        print('x =', x.solution_value())
        print('y =', y.solution_value())
    
        print('
    Advanced usage:')
        print('Problem solved in %f milliseconds' % solver.wall_time())
        print('Problem solved in %d iterations' % solver.iterations())
        print('Problem solved in %d branch-and-bound nodes' % solver.nodes())
    
    
    if __name__ == '__main__':
        main()
    

    运行得

    Number of variables = 2
    Number of constraints = 2
    Solution:
    Objective value = 23.0
    x = 3.0
    y = 2.0
    
    Advanced usage:
    Problem solved in 28.000000 milliseconds
    Problem solved in 1 iterations
    Problem solved in 0 branch-and-bound nodes
    
    • solver.NumVar 实数变量
    • solver.IntVar 整数变量

    对比线性和整数规划

    猜测整数规划的解也许接近线性规划,但情况并非如此。

    You might guess that the solution to the integer problem would be the integer point in the feasible region closest to the linear solution — namely, the point x = 0, y = 2. But as you will see next, this is not the case.

    替换约束条件为

        infinity = solver.infinity()
        x = solver.NumVar(0, infinity, 'x')
        y = solver.NumVar(0, infinity, 'y')
    
        print('Number of variables =', solver.NumVariables())
    

    运行得

    Number of variables = 2
    Number of variables = 2
    Number of constraints = 2
    Solution:
    Objective value = 25.0
    x = 0.0
    y = 2.5
    
    Advanced usage:
    Problem solved in 20.000000 milliseconds
    Problem solved in 0 iterations
    Problem solved in 0 branch-and-bound nodes
    

    CP Approach to Integer Optimization

    约束优化(CP)不同于传统优化理论,它更关注约束和变量,而不是目标函数。有些问题,CP可以比MIP求解器更快地找到最优解。

    • 对于标准整数规划问题,可行点必须满足所有约束,MIP求解速度更快。在这种情况下,可行集是凸的:对于集合中的任意两点,连接它们的线段完全位于集合中。

    • 对于具有高度非凸可行集的问题,CP-SAT解算器通常比MIP解算器更快。当可行集由多个“或”连接的约束定义时,意味着一个点只需要满足其中一个约束即可。

    eg: 转换非整数约束

    为了提高计算速度,CP-SAT解算器和原始CP解算器都对整数进行运算。

    To solve a problem in which some of the constraints have non-integer terms, you must first transform those constraints by multiplying them by a sufficiently large integer.

    eg:

    • 目标: maximize(2x + 2y + 3z)
    • 约束:

    egin{align} x+frac{7}{2}y+frac{3}{2}zleq25 \ 3x - 5y + 7z leq 45 \ 5x + 2y - 6z leq 37 \ x, y, z geq 0 \ x, y, z quad integers \ end{align}

    用CP-SAT求解器来解

    from ortools.sat.python import cp_model
    
    def main():
      model = cp_model.CpModel()
      var_upper_bound = max(50, 45, 37)
      x = model.NewIntVar(0, var_upper_bound, 'x')
      y = model.NewIntVar(0, var_upper_bound, 'y')
      z = model.NewIntVar(0, var_upper_bound, 'z')
    
      model.Add(2*x + 7*y + 3*z <= 50)
      model.Add(3*x - 5*y + 7*z <= 45)
      model.Add(5*x + 2*y - 6*z <= 37)
    
      model.Maximize(2*x + 2*y + 3*z)
    
      solver = cp_model.CpSolver()
      status = solver.Solve(model)
    
      if status == cp_model.OPTIMAL:
        print('Maximum of objective function: %i' % solver.ObjectiveValue())
        print()
        print('x value: ', solver.Value(x))
        print('y value: ', solver.Value(y))
        print('z value: ', solver.Value(z))
    
    if __name__ == '__main__':
      main()
    

    运行得

    Maximum of objective function: 35
    
    x value:  7
    y value:  3
    z value:  5
    

    用原始CP求解器来解

    from ortools.constraint_solver import pywrapcp
    from ortools.constraint_solver import solver_parameters_pb2
    
    def main():
      # Instantiate a CP solver.
      parameters = pywrapcp.Solver.DefaultSolverParameters()
      solver = pywrapcp.Solver('simple_CP', parameters)
      var_upper_bound = max(50, 45, 37)
      x = solver.IntVar(0, var_upper_bound, 'x')
      y = solver.IntVar(0, var_upper_bound, 'y')
      z = solver.IntVar(0, var_upper_bound, 'z')
      solver.Add(2*x + 7*y + 3*z <= 50)
      solver.Add(3*x - 5*y + 7*z <= 45)
      solver.Add(5*x + 2*y - 6*z <= 37)
      objective = solver.Maximize(2*x + 2*y + 3*z, 1)
      decision_builder = solver.Phase([x, y, z],
                                      solver.CHOOSE_FIRST_UNBOUND,
                                      solver.ASSIGN_MAX_VALUE)
        # Create a solution collector.
      collector = solver.LastSolutionCollector()
      # Add the decision variables.
      collector.Add(x)
      collector.Add(y)
      collector.Add(z)
      # Add the objective.
      collector.AddObjective(2*x + 2*y +3*z)
      solver.Solve(decision_builder, [objective, collector])
      if collector.SolutionCount() > 0:
        best_solution = collector.SolutionCount() - 1
        print("Maximum of objective function:", collector.ObjectiveValue(best_solution))
        print()
        print('x= ', collector.Value(best_solution, x))
        print('y= ', collector.Value(best_solution, y))
        print('z= ', collector.Value(best_solution, z))
    
    if __name__ == '__main__':
      main()
    

    运行得

    Maximum of objective function: 35
    
    x=  7
    y=  3
    z=  5
    
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  • 原文地址:https://www.cnblogs.com/xrszff/p/10985749.html
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