PPMT多变量地质统计模拟在不确定度测量中的应用

Pub Date : 2021-03-12 DOI:10.1080/25726838.2021.1892364
Paulo Henrique Faria, J. F. Coimbra Leite Costa, Marcel Antônio Arcari Bassani
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引用次数: 2

摘要

摘要传统的估计或模拟方法建立的等级模型往往无法再现变量之间的复杂关系。这项工作研究了被称为投影寻踪多变量变换(PPMT)的多变量变换的使用,该变换完全去相关感兴趣的多个变量,允许在变换空间中对每个变量进行独立的条件模拟。最后,对模拟变量进行反变换,再现数据的初始相关性。PPMT工作流程应用于红土镍矿矿床,考虑了五个变量:镍、铁、二氧化硅、镁和钙品位。对每个变量进行了条件模拟并进行了验证。后转换的实现再现了数据的多元关系。为了计算不确定性,使用k均值聚类技术生成了相当于两周和四周生产的采矿面板。通过变异系数(CV)总结了不确定性,并将结果用于定义矿产资源类别。
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Multivariate geostatistical simulation with PPMT: an application for uncertainty measurement
ABSTRACT Grade models built by traditional estimation or simulation methods often fail to reproduce the complex relationships between the variables. This work investigates the use of the multivariate transformation called Projection Pursuit Multivariate Transform (PPMT), which fully decorrelates the multiple variables of interest, allowing the independent conditional simulation of each variable in the transformed space. Finally, the simulated variables are back-transformed, reproducing the initial correlations of the data. The PPMT workflow was applied to a nickel laterite deposit considering five variables: nickel, iron, silica, magnesium, and calcium grades. Conditional simulations of each variable were run and validated. The back-transformed realisations reproduced the multivariate relationships of the data. To calculate the uncertainties, mining panels equivalent to two and four weeks of production were generated using the k-means clustering technique. Uncertainties were summarised by the coefficient of variation (CV) and the results were used to define classes of mineral resources.
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