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首页> 外文期刊>Natural resources research >Categorization of Mineral Resources Based on Different Geostatistical Simulation Algorithms: A Case Study from an Iron Ore Deposit
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Categorization of Mineral Resources Based on Different Geostatistical Simulation Algorithms: A Case Study from an Iron Ore Deposit

机译:基于不同地统计学模拟算法的矿产资源分类:铁矿矿矿床的案例研究

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摘要

Mineral resource classification plays an important role in the downstream activities of a mining project. Spatial modeling of the grade variability in a deposit directly impacts the evaluation of recovery functions, such as the tonnage, metal quantity and mean grade above cutoffs. The use of geostatistical simulations for this purpose is becoming popular among practitioners because they produce statistical parameters of the sample dataset in cases of global distribution (e.g., histograms) and local distribution (e.g., variograms). Conditional simulations can also be assessed to quantify the uncertainty within the blocks. In this sense, mineral resource classification based on obtained realizations leads to the likely computation of reliable recovery functions, showing the worst and best scenarios. However, applying the proper geostatistical (co)-simulation algorithms is critical in the case of modeling variables with strong cross-correlation structures. In this context, enhanced approaches such as projection pursuit multivariate transforms (PPMTs) are highly desirable. In this paper, the mineral resources in an iron ore deposit are computed and categorized employing the PPMT method, and then, the outputs are compared with conventional (co)-simulation methods for the reproduction of statistical parameters and for the calculation of tonnage at different levels of cutoff grades. The results show that the PPMT outperforms conventional (co)-simulation approaches not only in terms of local and global cross-correlation reproductions between two underlying grades (Fe and Al_2O_3) in this iron deposit but also in terms of mineral resource categories according to the Joint Ore Reserves Committee standard.
机译:矿产资源分类在采矿项目的下游活动中起着重要作用。沉积物中等级变异性的空间建模直接影响回收功能的评估,例如吨位,金属量和平均等级。用于这种目的的地质统计模拟的使用在从业者中遭受流行,因为它们在全球分布(例如,直方图)和局部分布(例如,变形函数)的情况下产生样品数据集的统计参数。还可以评估条件模拟以量化块内的不确定性。从这个意义上讲,基于获得的实现的矿产资源分类导致可靠恢复功能的可能计算,显示最坏和最佳情景。然而,应用适当的地统计(CO)-Simulation算法在具有强互相关结构的变量的情况下至关重要。在这种情况下,非常需要增强的方法,例如投影追踪多变量变换(PPMT)。在本文中,计算和分类了使用PPMT方法的铁矿矿床中的矿产资源,然后将输出与常规(CO)仿真方法进行比较,用于统计参数的再现,并用于计算不同的吨位截止等级的水平。结果表明,PPMT优于常规(CO) - 仿真不仅根据该铁矿床中的两个底层等级(FE和AL_2O_3)之间的局部和全球互相关性再现,而且还就矿产资源类别而言联合矿石储备委员会标准。

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