地质统计学
煤矿开采
地质学
采矿工程
克里金
钻孔
演习
点(几何)
采样(信号处理)
煤
工作流程
数据挖掘
计算机科学
统计
空间变异性
机器学习
数学
工程类
计算机视觉
废物管理
机械工程
几何学
滤波器(信号处理)
数据库
作者
Sultan Abulkhair,Nasser Madani
标识
DOI:10.1007/s42461-022-00586-0
摘要
This work addresses the problem of quantifying iron content in a coal deposit in the Republic of Kazakhstan. The process of resource estimation in the mining industry usually involves building geological domains and then estimating the grade of interest within them. In coal deposits, the seam layers usually define the estimation domains. However, the main issue with the coal deposit in this study is that the iron dataset is solely based on data from three newly drilled drill holes located a significant distance apart and additional rock samples from stopes. A massive amount of geological information comes from legacy drill hole data sampled a long time ago, but there is no evidence of proper QA/QC being performed on those samples. For this reason, a workflow was introduced to construct a representative training image from legacy data and stochastically model geological domains within these three drill holes using a multiple-point geostatistics technique. Once the geological model was obtained, a two-point geostatistics algorithm was applied to model the iron inside each geological domain. The results showed that direct sampling (DeeSse) is a suitable multiple-point geostatistics algorithm that can reproduce the long-range connectivity and curvilinear features of seam layers. Furthermore, a sequential Gaussian simulation was used to model the iron in the corresponding domains. Both methods were extensively evaluated using different statistical tools and analyses.
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