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Simulation optimization based ant colony algorithm for the uncertain quay crane scheduling problem

机译:基于仿真优化基于码头起重机调度问题的蚁群算法

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摘要

This work is devoted to the study of the Uncertain Quay Crane Scheduling Problem (QCSP), where the loading /unloading times of containers and travel time of quay cranes are considered uncertain. The problem is solved with a Simulation Optimization approach which takes advantage of the great possibilities offered by the simulation to model the real details of the problem and the capacity of the optimization to find solutions with good quality. An Ant Colony Optimization (ACO) meta-heuristic hybridized with a Variable Neighborhood Descent (VND) local search is proposed to determine the assignments of tasks to quay cranes and the sequences of executions of tasks on each crane. Simulation is used inside the optimization algorithm to generate scenarios in agreement with the probabilities of the distributions of the uncertain parameters, thus, we carry out stochastic evaluations of the solutions found by each ant. The proposed optimization algorithm is tested first for the deterministic case on several well-known benchmark instances. Then, in the stochastic case, since no other work studied exactly the same problem with the same assumptions, the Simulation Optimization approach is compared with the deterministic version. The experimental results show that the optimization algorithm is competitive as compared to the existing methods and that the solutions found by the Simulation Optimization approach are more robust than those found by the optimization algorithm.
机译:这项工作致力于研究不确定的码头起重机调度问题(QCSP),其中Quay起重机的容器和旅行时间的装载/卸载时间被认为是不确定的。解决问题采用了模拟优化方法,利用了模拟所提供的巨大可能性来模拟问题的真实细节以及优化的能力,以找到具有良好质量的解决方案。建议用可变邻域下降(VND)本地搜索杂交的蚁群优化(ACO)荟萃启发式搜索,以确定对码头起重机的任务分配以及每个起重机上的任务执行序列。在优化算法内使用模拟,以生成方案与不确定参数分布的概率,因此,我们对每个蚂蚁发现的解决方案进行了随机评估。在几个公知的基准实例上首先测试所提出的优化算法。然后,在随机案例中,由于没有其他工作与相同的假设完全相同的问题,因此将模拟优化方法与确定性的版本进行比较。实验结果表明,与现有方法相比,优化算法与现有方法相比具有竞争力,并且模拟优化方法发现的解决方案比优化算法所发现的方法更强大。

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