用Erlenkotter方法改进p中位问题求解的启发式方法

J. Bendík
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引用次数: 1

摘要

本文研究的是公共服务体系最优结构的设计问题。这个问题通常可以表述为p中值定位问题。解决公共服务系统设计中的p中位定位问题是np困难问题。问题的实际实例的特点是有大量可能的服务中心位置,这些位置的值可能为数百或数千。通用IP求解器只能对较小的问题实例获得最优解。通用IP求解器非常耗时,并且在求解大型实例时经常失败。我们解决这个问题的方法是基于Erlenkotter过程和拉格朗日松弛。Erlenkotter程序解决了无能力的设施定位问题。利用拉格朗日松弛法求解p-中值定位问题。所提出的方法在大多数研究实例中都能找到最优解。所建议的方法的可行性和结果解的质量取决于拉格朗日乘子的方便设置。乘法器的方便值可以通过等分算法得到。所得到的乘法器不能保证最优解的确定,但它保证了最优解的下界和接近最优解。如果我们的方法没有得到最优解,那么它通过一些启发式方法来改进接近最优解。设计了几种改进启发式算法,并选择了最优的改进启发式算法。将改进启发式算法得到的结果解与通用IP求解器XPRESS-IVE得到的最优解在计算时间和解质量上进行了比较,验证了改进启发式算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heuristics for improving the solution of p-median location problem with Erlenkotter approach
This paper deals with the problem of designing the optimal structure of a public service system. The problem can be often formulated as a p-median location problem. Solving the p-median location problem in the public service system design is NP-hard problem. Real instances of the problem are characterized by big number of possible service center locations, which can take the value of several hundreds or thousands. The optimal solution can be obtained by the universal IP solvers only for smaller instances of the problem. The universal IP solvers are very time-consuming and often fail when a large instance is solved. Our approach to the problem is based on the Erlenkotter procedure and the Lagrangean relaxation. The Erlenkotter procedure solves the uncapacitated facility location problem. Using the Lagrangean relaxation allow to solve the p-median location problem. The suggested approach finds the optimal solution in the most studied instances. The feasibility and the quality of the resulting solutions of the suggested approach depends on the convenient setting of the Lagrangean multiplier. The convenient value of the multiplier can be obtained by a bisection algorithm. The resulting multiplier cannot guarantee the determination of the optimal solution, but it ensures the lower bound and the near-to-optimal solution. If our approach does not obtain the optimal solution, then it improves the near-to-optimal solution by some heuristic. We designed some heuristics for improving the obtained solution and choose the best improving heuristic. The improving heuristics are verified on comparison the resulting solution obtained by the improving heuristics and the optimal solution obtained by the universal IP solver XPRESS-IVE in the computational time and the quality of solutions.
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