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Benders Decomposition for the Profit Maximizing Capacitated Hub Location Problem with Multiple Demand Classes

机译:以多种需求类弯曲最大化电容集线器位置问题的利润分解

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摘要

This paper models the profit maximizing capacitated hub location problem with multiple demand classes to determine an optimal hub network structure that allocates available capacities of hubs to satisfy demand for commodities from different market segments. A strong deterministic formulation of the problem is presented, and a Benders reformulation is described to optimally solve large-size instances of the problem. A new two-phase methodology is developed to decompose the Benders subproblem, and two effective separation routines are derived to strengthen the Benders optimality cuts. The algorithm is enhanced by the integration of improved variable-fixing techniques. The deterministic model is further extended by considering uncertainty associated with the demand to develop a two-stage stochastic program. To solve the stochastic version, a Monte Carlo simulation-based algorithm is developed that integrates a sample average approximation scheme with the proposed Benders decomposition algorithm. Novel acceleration techniques are presented to improve the convergence of the algorithm proposed for the stochastic version. The efficiency and robustness of the algorithms are evaluated through extensive computational experiments. Computational results show that largescale instances with up to 500 nodes and three demand classes can be solved to optimality, and that the proposed separation routines generate cuts that provide significant speedups compared with using Pareto-optimal cuts. The developed two-phase methodology for solving the Benders subproblem as well as the variable-fixing and acceleration techniques can be used to solve other discrete location and network design problems.
机译:本文模拟了多种需求类别最大化电容集线器定位问题的利润,以确定最佳的集线器网络结构,用于分配集线器的可用性,以满足不同市场段的商品的需求。提出了对问题的强大确定性制剂,并描述了弯曲者重构以最佳地解决问题的大尺寸实例。开发了一种新的两阶段方法来分​​解弯曲者子问题,并且推导出两个有效的分离例程以加强弯曲件最优性切割。通过改进的可变固定技术的集成来增强该算法。通过考虑与需求开发两阶段随机计划相关的不确定性,进一步扩展了确定性模型。为了解决随机版本,开发了一种基于蒙特卡罗仿真的算法,其与所提出的弯曲分解算法集成了采样平均近似方案。提出了新的加速技术,提高了随机版本提出的算法的收敛性。通过广泛的计算实验评估算法的效率和稳健性。计算结果表明,最多500个节点和三个需求类的大型情况可以解决,并且所提出的分离例程产生了与使用帕累托最优切割相比提供了显着加速的切割。可以使用用于解决弯曲阶段子地图的开发的两阶段方法以及可变固定和加速技术来解决其他离散位置和网络设计问题。

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