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An efficient surrogate optimization method for solving linear mixed-integer problems with cross-coupling constraints

机译:一种高效的代理优化方法,用于求解交叉耦合约束的线性混合整数问题

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Many optimization problems that frequently arise and have been extensively used in practice are modeled as linear mixed-integer programming problems. Among the many of such problems are transportation and assignment problems. In such problems, constraints that couple decision variables can be viewed as hyperplanes in their respective spaces. These hyperplanes frequently intersect at different angles thus making the feasible set of the problems complex and leading to difficulties defining the convex hull when using the cutting planes method. The efficiency of branch-and-cut is therefore low, since the branching tree grows quickly due to the combinatorial nature of these problems. This paper overcomes these difficulties by using additional cuts that can better define the convex hull. Thus when the Lagrangian relaxation and surrogate optimization method is used, the computational burden of obtaining the multiplier updating directions is significantly reduced. In the surrogate optimization framework, the constraints of the original problem are relaxed by introducing the Lagrange multipliers. After a good dual solution is found, it is then improved to obtain a good feasible solution, while the dual value provides a lower bound on the feasible cost. Numerical examples indicate that the surrogate optimization can obtain feasible solutions when the standard branch-and-cut method cannot. Additional cuts help improve the feasible solutions and tighten the lower bound.
机译:许多经常出现并且在实践中广泛使用的优化问题被建模为线性混合整数编程问题。其中许多此类问题是运输和分配问题。在这样的问题中,将耦合判定变量可以被视为它们各自的空间中的超平面的约束。这些超平面经常以不同的角度相交,从而使得在使用切割平面方法时,使得解决问题的可行性并导致难以定义凸壳的困难。因此,分支和切割的效率低,由于分支树由于这些问题的组合性质而迅速增长。本文通过使用额外的切割来克服这些困难,可以更好地定义凸船体。因此,当使用拉格朗日放松和代理优化方法时,获得乘数更新方向的计算负担显着减少。在代理优化框架中,通过引入拉格朗日乘法器来放松原始问题的约束。在找到良好的双解决方案之后,然后改善以获得良好的可行解决方案,而双重值提供了可行成本的下限。数值示例表明,当标准分支和切割方法不能时,替代优化可以获得可行的解决方案。额外的削减有助于改善可行的解决方案并拧紧下限。

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