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A comparative study of truck cycle time prediction methods in open-pit mining

机译:露天采矿卡车周期时间预测方法的比较研究

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Purpose - The purpose of this paper is to compare the predictive capability of three methods of truck cycle time estimation in open-pit mining: computer simulation, artificial neural networks (NNs), and multiple regressions (MRs). The aim is to determine the best method. The most common method currently used is computer simulation.rnDesign/methodology/approach - Truck cycle times at a large open pit mine are estimated using computer simulation, artificial NNs, and MRs. The estimated cycle times by each method are in turn compared to the actual cycle times recorded by a computerized mine monitoring system at the same mine. The errors associated with each method relative to the actual cycle times are documented and form the basis for comparing the three methods.rnFindings - The paper clearly indicates that computer simulation methods used in predicting truck cycle times in open-pit mining underestimate and overestimate the results for short and long hauls, respectively. It appears that both NN and regression models are superior in their predictive abilities compared to computer simulations.rnResearch limitations/implications - The cycle time prediction models developed apply to a specific mine site and one has to be careful not to directly apply these models to other operations. Practical implications - The paper describes the implementation of regression and NN modelling. An opportunity exists for mines to utilise the large volumes of data generated to predict truck haulage cycle times more accurately and hence, improve the quality of mine planning. Originality/value - The paper addresses an area of need in the mining industry. Accurate prediction of cycle times is critical to mine planners as it impacts on production targets and hence, the budgets.
机译:目的-本文的目的是比较露天采矿中卡车周期时间估计的三种方法的预测能力:计算机仿真,人工神经网络(NN)和多元回归(MR)。目的是确定最佳方法。当前最常用的方法是计算机仿真。设计/方法/方法-使用计算机仿真,人工神经网络和MR估算大型露天矿的卡车循环时间。依次将每种方法估算的周期时间与同一矿山的计算机矿山监控系统记录的实际周期时间进行比较。记录了每种方法相对于实际周期时间的误差,并为比较这三种方法提供了基础。rnFindings-本文清楚地表明,用于预测露天采矿卡车周期时间的计算机模拟方法低估并高估了结果分别用于短期和长期运输。 NN和回归模型的预测能力似乎都比计算机模拟要好。研究限制/意义-开发的周期时间预测模型适用于特定的矿场,并且必须小心不要将这些模型直接应用于其他矿山操作。实际意义-本文描述了回归和NN建模的实现。矿山有机会利用生成的大量数据更准确地预测卡车运输周期,从而提高矿山规划的质量。原创性/价值-该文件解决了采矿业的需求领域。周期时间的准确预测对于矿山规划人员至关重要,因为它会影响生产目标并进而影响预算。

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