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首页> 外文期刊>Neural computing & applications >Berth and quay crane coordinated scheduling using multi-objective chaos cloud particle swarm optimization algorithm
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Berth and quay crane coordinated scheduling using multi-objective chaos cloud particle swarm optimization algorithm

机译:使用多目标混沌云粒子群优化算法协调调度泊位和码头起重机

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摘要

The demand for the maritime transportation has significantly increased over the past 20 years due to the rapid pace of globalization. Terminal managers confront the challenge in establishing the appropriate berth and quay crane (QC) coordinated schedule to achieve the earliest departure time of ship and to provide efficient service. In this paper, we propose a multi-objective berth and QC coordinated scheduling model, namely M-B&QC, by taking the minimum additional trucking distance and the port time of ships as the optimization objectives, with the constraints based on demand of port operations and vessel berthing. To solve the M-B&QC model, the particle coding rule and the particle feasible-integer processing module (namely PF-IP) for improving PSO performance are employed to determine the computation strategies of individual historical optimal value p(i)(G) and global optimal value P-g(G) of particle for the multi-objective optimization. In addition, the global disturbance with cat mapping function (namely GDCM) and local search with cloud model (namely LSCM) are also hybridized, namely PM&CCPSO algorithm, to solve the M-B&QC model. Numerical experiments including eight combined examples are conducted to test the performance of the proposed programming model and the modified solving algorithm.
机译:由于全球化的速度快,对过去20年来对海运的需求显着增加。终端经理面临建立适当的泊位和码头起重机(QC)协调时间表的挑战,以实现船舶最早的出发时间,并提供有效的服务。在本文中,我们提出了一种多目标泊位和QC协调调度模型,即M-B&QC,采用最小额外的货运距离和船舶作为优化目标的港口时间,基于端口运营的需求和船舶的约束船只停泊。为了解决M-B&QC模型,采用用于改善PSO性能的粒子编码规则和粒子可行的整数处理模块(即PF-IP)来确定各个历史最佳值P(i)(g)和的计算策略用于多目标优化的粒子的全局最优值pg(g)。此外,与CAT映射函数(即GDCM)的全局干扰和使用云模型(即LSCM)的本地搜索也是杂交的,即PM和CCPSO算法,以解决M-B&QC模型。进行了包括八个组合实施例的数值实验,以测试所提出的编程模型和修改的求解算法的性能。

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