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首页> 外文期刊>Computational Intelligence Magazine, IEEE >Evolutionary Fleet Sizing in Static and Uncertain Environments with Shuttle Transportation Tasks-The Case Studies of Container Terminals
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Evolutionary Fleet Sizing in Static and Uncertain Environments with Shuttle Transportation Tasks-The Case Studies of Container Terminals

机译:航天飞机在静态和不确定环境中的进化舰队规模研究-以集装箱码头为例

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This paper aims to identify the optimal number of vehicles in environments with shuttle transportation tasks. These environments are very common industrial settings where goods are transferred repeatedly between multiple machines by a fleet of vehicles. Typical examples of such environments are manufacturing factories, warehouses and container ports. One very important optimization problem in these environments is the fleet sizing problem. In real-world settings, this problem is highly complex and the optimal fleet size depends on many factors such as uncertainty in travel time of vehicles, the processing time of machines and size of the buffer of goods next to machines. These factors, however, have not been fully considered previously, leaving an important gap in the current research. This paper attempts to close this gap by taking into account the aforementioned factors. An evolutionary algorithm was proposed to solve this problem under static and uncertain situations. Two container ports were selected as case studies for this research. For the static cases, the state-of-the-art CPLEX solver was considered as the benchmark. Comparison results on realworld scenarios show that in the majority of cases the proposed algorithm outperforms CPLEX in terms of solvability and processing time. For the uncertain cases, a high-fidelity simulation model was considered as the benchmark. Comparison results on realworld scenarios with uncertainty show that in most cases the proposed algorithm could provide an accurate robust fleet size. These results also show that uncertainty can have a significant impact on the optimal fleet size.
机译:本文旨在确定在有班车运输任务的环境中的最佳车辆数量。这些环境是非常常见的工业环境,在这种环境中,一组车队会在多台机器之间反复转移货物。这种环境的典型示例是制造工厂,仓库和集装箱港口。在这些环境中,一个非常重要的优化问题是机队规模问题。在现实环境中,此问题非常复杂,最佳车队规模取决于许多因素,例如车辆行驶时间的不确定性,机器的处理时间以及机器旁货物缓冲区的大小。但是,这些因素以前尚未得到充分考虑,从而在当前研究中留下了重要的空白。本文试图通过考虑上述因素来缩小这一差距。提出了一种进化算法来解决静态和不确定情况下的问题。选择了两个集装箱港口作为该研究的案例研究。对于静态情况,将最新的CPLEX求解器视为基准。在现实情况下的比较结果表明,在大多数情况下,所提出的算法在可解性和处理时间方面均优于CPLEX。对于不确定情况,将高保真仿真模型作为基准。在具有不确定性的现实情况下的比较结果表明,在大多数情况下,所提出的算法可以提供准确的鲁棒车队规模。这些结果还表明,不确定性可能会对最佳机队规模产生重大影响。

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