We consider an NP-hard selective and periodic inventory routing problem (SPIRP) in a waste vegetable oil collection environment. This SPIRP arises in the context of reverse logistics where a biodiesel company has daily requirements of oil to be used as raw material in its production process. These requirements can be fulfilled by using the available inventory, collecting waste vegetable oil or purchasing virgin oil. The problem consists in determining a period (cyclic) planning for the collection and purchasing of oil such that the total collection, inventory and purchasing costs are minimized, while meeting the company's oil requirements and all the operational constraints. We propose a MIP-based heuristic which solves a relaxed model without routing, constructs routes taking into account the relaxation's solution and then improves these routes by solving the capacitated vehicle routing problem associated to each period. Following this approach, an a posteriori performance guarantee is ensured, as the approach provides both a lower bound and a feasible solution. The performed computational experiments show that the MIP-based heuristic is very fast and effective as it is able to encounter near optimal solutions with low gaps within seconds, improving several of the best known results using just a fraction of the time spent by a state-of-the-art heuristic. A remarkable fact is that the proposed MIP-based heuristic improves over the best known results for all the large instances available in the literature.
翻译:我们认为,在废弃植物油收集环境中,NP硬的选择性和定期库存路由问题(SPIRP)是植物油收集环境中的一个不定期的选择性问题。这种SPIRP是在反向物流的背景下产生的,即生物柴油公司每天需要石油作为生产过程中的原材料,这些要求可以通过利用现有的库存、收集废弃植物油或购买处女油来达到。问题在于确定收集和购买石油的(循环)规划期,以便最大限度地降低总收集、库存和采购成本,同时满足公司的石油需求和所有业务限制。我们建议采用基于MIP的超常做法,在不绕道的情况下解决宽松模式,建造路线,同时考虑到放松的解决方案,然后通过解决与每一时期有关的机动车辆的机动性路线问题来改进这些路线。按照这一方法,可以确保后期绩效保障,因为这种方法提供了较低的约束性和可行的解决办法。完成的计算实验表明,基于MIP的超自然理论非常迅速而有效,因为它能够找到接近最佳的解决方案,而无需绕行模式,考虑到放松的路线,建造路线,而考虑到放松的解决方案,然后通过解决与每一时期有关的机动性障碍,然后通过解决各种已知的大型成果,改进了他所了解的最佳办法。