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Throughput optimisation in a coal export system with multiple terminals and shared resources

机译:具有多个终端和共享资源的煤炭出口系统中的吞吐量优化

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This work describes a genetic algorithm based approach for the optimization of the Hunter Valley coal export system in Newcastle, Australia. The Port of Newcastle features three coal export terminals, operating primarily in cargo assembly mode. They share a rail network on their inbound operations and a channel on their outbound operations. Maximizing throughput at a single coal terminal, taking into account its layout, equipment and operating policies, is already a challenging problem. However, maximizing throughput of the Hunter Valley coal export system as a whole requires that terminals and inbound/outbound shared resources be considered simultaneously. Existing approaches to solve this and similar problems either lack realism or are computationally too demanding to be useful as an everyday planning tool. We present a parallel genetic algorithm to optimize the integrated system. The algorithm models activities in continuous time and can handle practical planning horizons efficiently. The solutions are on average 17% better than those obtained with the current state-of-the-art method a constraint programming -based approach - requiring less than 3% of the CPU time. Tests were conducted on 10 instances generated using real world data, with 200 vessels and approximately 270 stockpiles each.
机译:这项工作描述了基于遗传算法的澳大利亚纽卡斯尔猎人谷煤炭出口系统优化方法。纽卡斯尔港设有三个煤炭出口码头,主要以货物组装方式运行。他们在入站操作上共享一个铁路网络,在出站操作上共享一个通道。考虑到其布局,设备和运营政策,最大程度提高单个煤炭码头的吞吐量已经是一个难题。但是,要使整个猎人谷煤炭出口系统的吞吐量最大化,就需要同时考虑码头和入站/出站共享资源。解决该问题和类似问题的现有方法要么缺乏现实性,要么在计算上过于苛刻,无法用作日常计划工具。我们提出一种并行遗传算法来优化集成系统。该算法对连续时间的活动进行建模,可以有效地处理实际的计划范围。与基于约束编程的当前最新技术所获得的解决方案相比,该解决方案平均要好17%,而所需的CPU时间不到3%。对使用真实世界数据生成的10个实例进行了测试,每个实例有200艘船,每艘约有270个库存。

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