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Heuristic approaches for the multiperiod location-transportation problem with reuse of vehicles in emergency logistics

机译:应急物流中车辆可重复使用的多阶段位置运输问题的启发式方法

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The coordination among the different actors in relief chains is crucial to provide effective and efficient response in emergency logistics. By recognizing this fact, we have developed two stochastic mixed integer programming models to integrate and coordinate facility location, transportation and fleet sizing decisions in a multi-period, multi-commodity, and multi-modal context under uncertainty. One model even considers the option of reusing vehicles to cover extra routes within the same time period in an attempt to save overall resources and improve service levels. Typical uncertainty in victims' needs, incoming supply, inventory conditions, and roads availability are modeled through a set of scenarios representing plausible disaster impacts. To solve instances of practical size, we have devised relax-and fix and fix-and-optimize heuristics based on decompositions by time, scenario, and stage. The. proposed instances entail characteristics of the megadisaster in the Mountain Region of Rio de Janeiro State in Brazil. The results suggest that the integration of decisions in a multiperiod context and the option of reusing vehicles reduce total costs, thus improving the overall performance of the relief operations. Also, the time-decomposition fix-and-optimize heuristic outperforms the CPLEX solver in terms of elapsed times and optimality gaps, mainly in moderate-size instances. Finally, we show the importance to explicitly consider randomness instead of using simpler worst-case scenario approaches. (C) 2015 Elsevier Ltd. All rights reserved.
机译:救济链中不同行为者之间的协调对于在应急后勤中提供有效和高效的响应至关重要。通过认识到这一事实,我们开发了两个随机混合整数规划模型,以在不确定性的多周期,多商品和多模式环境中集成和协调设施的位置,运输和车队规模的决策。一种模型甚至考虑了在相同时间段内重新使用车辆以覆盖额外路线的选项,以节省总体资源并提高服务水平。受害人需求,进来的供应,库存状况和道路可用性的典型不确定性是通过一组代表可能的灾难影响的场景进行建模的。为了解决实际大小的实例,我们基于时间,场景和阶段的分解,设计了放松,修复和修复优化的启发式方法。的。拟议的实例具有巴西里约热内卢州山区的特大灾害的特征。结果表明,在多个时期内综合决策和选择重复使用车辆可以降低总成本,从而提高救援行动的整体绩效。而且,在经过时间和最佳间隔方面,时间分解固定和优化启发式算法的性能优于CPLEX求解器,主要是在中等大小的情况下。最后,我们显示了明确考虑随机性而不是使用更简单的最坏情况方案的重要性。 (C)2015 Elsevier Ltd.保留所有权利。

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