海运集装箱码头泊位调度

IF 2 Q3 BUSINESS
M. Kavoosi, M. Dulebenets, Olumide F. Abioye, J. Pasha, Oluwatosin Theophilus, Hui Wang, R. Kampmann, Marko Mikijeljević
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引用次数: 46

摘要

目的在过去十年中,海运面临着对集装箱货物日益增长的需求。海运集装箱码头作为连接海运和内陆运输的设施,预计将处理越来越多的船只集装箱。泊位调度对MCT的总吞吐量以及MCT运营的整体有效性起着重要作用。本研究旨在提出一种新的基于岛屿的元启发式算法来解决泊位调度问题,并最大限度地降低MCT服务到达船只的总成本。设计/方法/方法本研究提出了一种通用的基于岛屿元启发式算法(UIMA),旨在解决空间受限的泊位调度问题。UIMA人口分为四个子群体(即岛屿)。与在每个岛屿上执行相同元启发式的基于规范岛屿的算法不同,所开发的算法中采用了四种不同的基于种群的元启发式算法来搜索岛屿,包括以下算法:进化算法(EA)、粒子群优化算法(PSO)、分布估计算法(EDA)和差分进化算法(DE)。所采用的基于种群的元启发式算法依赖于不同的运算符,这有助于在UIMA岛上搜索高级解决方案。结果所进行的数值实验表明,所开发的UIMA算法对于小型问题实例返回了接近最优的解。对于大型问题实例,UIMA在终止时获得的目标函数值方面优于单独执行的EA、PSO、EDA和DE算法。此外,所开发的UIMA算法在求解质量方面优于各种基于单解的元启发式算法(包括可变邻域搜索、禁忌搜索和模拟退火)。UIMA的最大计算时间不超过306 s.研究局限性/含义以前的一些泊位调度研究模拟了不确定的船只到达时间和/或处理时间,而本研究假设船只到达和处理时间是确定的。实际意义所开发的UIMA算法可被MCT操作员用作一种有效的决策支持工具,并有助于在可接受的计算时间内高效设计泊位时间表。独创性/价值设计了一种新的基于岛屿的元启发式算法来解决空间约束的泊位调度问题。所提出的基于岛屿的算法采用了几种类型的元启发式算法来覆盖搜索空间的不同区域。所考虑的元启发式算法依赖于不同的运算符。这样的功能有望促进搜索卓越解决方案的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Berth scheduling at marine container terminals
Purpose Marine transportation has been faced with an increasing demand for containerized cargo during the past decade. Marine container terminals (MCTs), as the facilities for connecting seaborne and inland transportation, are expected to handle the increasing amount of containers, delivered by vessels. Berth scheduling plays an important role for the total throughput of MCTs as well as the overall effectiveness of the MCT operations. This study aims to propose a novel island-based metaheuristic algorithm to solve the berth scheduling problem and minimize the total cost of serving the arriving vessels at the MCT. Design/methodology/approach A universal island-based metaheuristic algorithm (UIMA) was proposed in this study, aiming to solve the spatially constrained berth scheduling problem. The UIMA population was divided into four sub-populations (i.e. islands). Unlike the canonical island-based algorithms that execute the same metaheuristic on each island, four different population-based metaheuristics are adopted within the developed algorithm to search the islands, including the following: evolutionary algorithm (EA), particle swarm optimization (PSO), estimation of distribution algorithm (EDA) and differential evolution (DE). The adopted population-based metaheuristic algorithms rely on different operators, which facilitate the search process for superior solutions on the UIMA islands. Findings The conducted numerical experiments demonstrated that the developed UIMA algorithm returned near-optimal solutions for the small-size problem instances. As for the large-size problem instances, UIMA was found to be superior to the EA, PSO, EDA and DE algorithms, which were executed in isolation, in terms of the obtained objective function values at termination. Furthermore, the developed UIMA algorithm outperformed various single-solution-based metaheuristic algorithms (including variable neighborhood search, tabu search and simulated annealing) in terms of the solution quality. The maximum UIMA computational time did not exceed 306 s. Research limitations/implications Some of the previous berth scheduling studies modeled uncertain vessel arrival times and/or handling times, while this study assumed the vessel arrival and handling times to be deterministic. Practical implications The developed UIMA algorithm can be used by the MCT operators as an efficient decision support tool and assist with a cost-effective design of berth schedules within an acceptable computational time. Originality/value A novel island-based metaheuristic algorithm is designed to solve the spatially constrained berth scheduling problem. The proposed island-based algorithm adopts several types of metaheuristic algorithms to cover different areas of the search space. The considered metaheuristic algorithms rely on different operators. Such feature is expected to facilitate the search process for superior solutions.
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来源期刊
CiteScore
4.80
自引率
0.00%
发文量
19
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