露天矿运输车队规模的随机混合仿真优化方法

A. Moradi Afrapoli, M. Tabesh, H. Askari-Nasab
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引用次数: 16

摘要

在使用卡车和铲系统处理材料的任何露天采矿作业中,运输车队规模的确定是一项关键任务。寻找最优运输车队规模的问题虽然已经得到了深入的研究,但存在两个重要的缺点:忽略了下游工序对运营的影响,忽略了车队管理系统的影响。本文提出了一种综合仿真优化框架,解决了地面地雷运输车队规模确定问题,并针对上述两个缺点进行了改进。在开发的框架中,采矿作业、加工厂和操作决策工具相互沟通,以找到满足生产计划所需的最佳运输船队规模。研究结果表明,开发的框架能够以比确定性计算建议的所需卡车数量少13%的卡车数量处理操作。
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A stochastic hybrid simulation-optimization approach towards haul fleet sizing in surface mines
ABSTRACT Haul fleet size determination is a critical task in any surface mining operation where the material is handled using the truck-and-shovel system. Although the problem of finding the optimum haulage fleet size has been thoroughly studied, there are two important shortcomings: disregarding the effects of downstream processes on the operation and ignoring the fleet management system effects. This paper presents an integrated simulation-optimization framework to address the haul fleet size determination problem surface mines and target the two shortcomings listed above. In the developed framework, the mining operation, the processing plants, and the operational decision tools communicate with each other to find the best size of the haul fleet required to meet the production schedule. Results of the study show that the developed framework is capable of handling the operation with 13% less number of trucks than the required number of trucks suggested by deterministic calculations.
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来源期刊
CiteScore
2.20
自引率
9.10%
发文量
5
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