Effect of Service Priority and Resource Synchronization Choices on Landside Terminal Queues: Exact Analysis and Approximations

D. Roy, Jan-Kees van Ommeren, M. B. M. de Koster, A. Gharehgozli
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引用次数: 2

Abstract

With the growth of ocean transport and with increasing vessel sizes, managing congestion at the landside of container terminals has become a major challenge. A terminal landside handles containers that arrive or depart via train or truck. Large terminals have to handle thousands of trucks and dozens of trains per day. As trains run on fixed schedule, their containers are prioritized in stacking and internal transport handling. This has consequences for the service of other modes, which might be subject to delays. We analyze the dynamic interactions between the landside resources using a stochastic stylized semi-open queuing network model with bulk arrivals, shared resources, and multi-class containers. We use the theory of regenerative processes and Markov chain analysis to analyze the network. The proposed network solution algorithm works for large-scale systems and yields sufficiently accurate estimates for performance measurement. The model can capture priority service for containers at shared resources (such as stack cranes), while preserving strict handling priorities. The model is used to explore the choice of different internal transport vehicles (coupled versus decoupled operations at stack and train gantry cranes) to understand the effect on delays. Our results show that decoupled transport resources can mitigate both the delays of containers that arrive by trucks and by trains. When train arrival rates are low, prioritizing the handling of train containers at the stack cranes significantly reduces their delays. Further, this priority has little effect on the delays of handling external truck containers.
服务优先级和资源同步选择对陆侧终端队列的影响:精确分析与近似
随着海洋运输的增长和船舶尺寸的增加,管理集装箱码头陆上的拥堵已成为一项重大挑战。码头的陆侧处理通过火车或卡车到达或离开的集装箱。大型码头每天必须处理数千辆卡车和数十列火车。由于列车的运行时间是固定的,因此列车上的集装箱在堆垛和内部运输处理方面具有优先权。这对其他模式的服务产生了影响,可能会受到延迟的影响。我们使用具有批量到达、共享资源和多类别容器的随机风格化半开放排队网络模型分析了陆侧资源之间的动态相互作用。我们使用再生过程理论和马尔可夫链分析来分析网络。所提出的网络解决算法适用于大规模系统,并为性能测量提供足够准确的估计。该模型可以为共享资源(如堆垛起重机)的容器捕获优先级服务,同时保留严格的处理优先级。该模型用于探索不同内部运输车辆的选择(堆栈和列车龙门起重机的耦合与解耦操作),以了解对延误的影响。我们的研究结果表明,解耦的运输资源可以减轻卡车和火车到达的集装箱的延误。当列车到达率较低时,在堆垛起重机上优先处理列车集装箱可以显著减少列车延误。此外,这种优先次序对处理外部卡车集装箱的延误几乎没有影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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