Optimization of Joint Scheduling for Automated Guided Vehicles and Unmanned Container Trucks at Automated Container Terminals Considering Conflicts

Liangyong Chu, Zijian Gao, Shuo Dang, Jiawen Zhang, Qing Yu
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Abstract

Port development is a critical component in constructing a resilient transportation infrastructure. The burgeoning integration of automated guided vehicles (AGVs) within container terminals, in conjunction with the orchestrated scheduling of unmanned container trucks (UCTs), is essential for the sustainable expansion of port operations in the future. This study examined the influence of AGVs in automated container terminals and the synergistic scheduling of UCTs on port operations. Comparative experiments were meticulously designed to evaluate the feasibility of integrated scheduling schemes. Through the development of optimization models that consider conflict-free paths for both AGVs and UCTs, as well as strategies for conflict resolution, a thorough analysis was performed. Advanced genetic algorithms were engineered to address task-dispatching models. In contrast, the A* optimization search algorithm was adapted to devise conflict-free and conflict-resolution paths for the two vehicle types. A range of scaled scenarios was utilized to assess the impact of AGVs and UCTs on the joint-scheduling process across various configuration ratios. The effectiveness of the strategies was appraised by comparing the resultant path outcomes. Additionally, comparative algorithmic experiments were executed to substantiate the adaptability, efficacy, and computational efficiency of the algorithms in relation to the models. The experimental results highlight the viability of tackling the joint-scheduling challenge presented by AGVs and UCTs in automated container terminals. When juxtaposed with alternative scheduling paradigms that operate independently, this integrated approach exhibits superior performance in optimizing the total operational costs. Consequently, it provides significant insights into enhancing port scheduling practices.
自动制导车辆和无人驾驶集装箱卡车在自动集装箱码头的联合调度优化(考虑冲突因素
港口发展是建设弹性运输基础设施的关键组成部分。集装箱码头内不断涌现的自动导引车(AGV)与无人驾驶集装箱卡车(UCT)的协调调度相结合,对未来港口运营的可持续发展至关重要。本研究探讨了自动化集装箱码头中的 AGV 和 UCT 协同调度对港口运营的影响。研究人员精心设计了对比实验,以评估综合调度方案的可行性。通过开发优化模型,考虑 AGV 和 UCT 的无冲突路径以及解决冲突的策略,进行了全面的分析。针对任务调度模型设计了先进的遗传算法。相比之下,A* 优化搜索算法则适用于为两种车辆类型设计无冲突和冲突解决路径。利用一系列规模化场景来评估 AGV 和 UCT 在不同配置比例下对联合调度流程的影响。通过比较路径结果,评估了策略的有效性。此外,还进行了算法对比实验,以证实算法与模型的适应性、有效性和计算效率。实验结果凸显了在自动化集装箱码头应对 AGV 和 UCT 联合调度挑战的可行性。与独立运行的其他调度范例相比,这种集成方法在优化总运营成本方面表现出更优越的性能。因此,它为改进港口调度实践提供了重要启示。
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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