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Dynamic scheduling of oil tankers with splitting of cargo at pickup and delivery locations: a Multi-objective Ant Colony-based approach

机译:动态调度油轮,在取货和交付地点分割货物:基于多目标蚁群的方法

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摘要

Maritime crude oil transportation problem have been drawing the attention of researchers for quite a long time. The cost incurred in the supply chain for the oil products is one of the biggest driving factors for these researchers. In the present paper, we have addressed the problem faced by the logistics section of the petroleum downstream industry. This industry mainly deals with the transportation of finished oil products like fuel oil, high speed diesel, etc. from refineries to the demand points. For this purpose, we have developed a mathematical model to represent the problem appropriately, aiming at total cost minimisation as well as service-level maximisation. The problem in hand is then tackled with a modified Multi-objective Ant Colony optimisation algorithm which besides considering more than one pheromone structure also involves non-dominated sorting of the results to give us the best-performing solution fronts. For the purpose of dealing with the uncertainties causing docking problems at a port, we have incorporated a second stage of route allocation for the vessels. Towards the end, we have carried out a sensitivity analysis for the parameters of the ant colony algorithm to get the combination of parameters for which this new type of algorithm performs best. The comparison of obtained results with one of the other contemporary algorithms also establishes the superiority of our heuristic.
机译:海上原油运输问题已经引起研究人员很长时间的关注。石油产品供应链中的成本是这些研究人员的最大驱动因素之一。在本文中,我们已经解决了石油下游行业的物流部门所面临的问题。该行业主要处理从炼油厂到需求点的成品油(如燃料油,高速柴油等)的运输。为此,我们开发了一个数学模型来恰当地表示问题,旨在使总成本最小化以及服务水平最大化。然后,使用改进的多目标蚁群优化算法解决当前的问题,该算法除了考虑多个信息素结构之外,还涉及结果的非支配排序,从而为我们提供了性能最佳的解决方案。为了处理导致港口停靠问题的不确定性,我们将船舶路线分配的第二阶段纳入其中。最后,我们对蚁群算法的参数进行了敏感性分析,以获得这种新型算法表现最佳的参数组合。将获得的结果与其他当代算法之一进行比较,也建立了我们启发式算法的优越性。

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