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首页> 外文期刊>Transportation Research Procedia >Periodic Capacitated Vehicle Routing for Retail Distribution of Fuel Oils
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Periodic Capacitated Vehicle Routing for Retail Distribution of Fuel Oils

机译:燃料零售零售的定期容量车辆路线

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摘要

In this paper we consider the final distribution of fuel oil from a storage depot to a set of petrol stations faced by an oil company, which has to decide the weekly replenishment plan for each station, and determine petrol station visiting sequences (vehicle routes) for each day of the week, assuming a fleet of homogeneous vehicles (tankers). The aim is to minimize the total distance travelled by tankers during the week, while loading tankers possibly near to their capacity in order to maximize the resource utilization. The problem is modelled as a generalization of the Periodic Vehicle Routing Problem (PVRP). Due to the large size of the real instances which the company has to deal with, we solve the problem heuristically. We propose a hybrid genetic algorithm that successfully address the problem inspired to a known hybrid genetic algorithm from the literature for the PVRP. However, the proposed algorithm adopts some techniques and features tailored for the particular fuel oil distribution problem, and it is specifically designed to deal with real instances derived from the fuel oil distribution in the European context that are profoundly different from the PVRP instances available from literature. The proposed algorithm is evaluated on a set of real case studies and on a set of randomly generated instances that hold the same characteristics of the former.
机译:在本文中,我们考虑了从储油库到加油站所面对的一组加油站的最终燃油分配,加油站必须确定每个加油站的每周补给计划,并确定加油站的加油顺序(车辆路线)假设一周中的每一天都有同类型的车辆(油轮)。目的是最小化油轮在一周内的总行驶距离,同时将油轮装载到可能接近其容量的位置,以最大程度地利用资源。该问题被建模为定期车辆路由问题(PVRP)的概括。由于公司必须处理的真实实例数量庞大,因此我们尝试通过启发式方式解决问题。我们提出了一种混合遗传算法,该算法成功解决了从PVRP文献中获得的已知混合遗传算法的启发。但是,提出的算法采用了针对特定燃油分配问题量身定制的一些技术和功能,并且经过专门设计,可以处理在欧洲范围内源自燃油分配的真实实例,这些实例与文献中提供的PVRP实例有很大不同。所提出的算法是在一组实际案例研究和一组具有与前者相同特征的随机生成实例上进行评估的。

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