首页> 外文会议>International Mining Geology Conference >Local uncertainty benchmarking - a coal case study
【24h】

Local uncertainty benchmarking - a coal case study

机译:地方不确定性基准 - 一种煤案例研究

获取原文

摘要

Kriged estimates are not typically calculated on blocks substantially smaller than the sample spacing (eg the Standard Mining Unit or SMU). Moreover, the sample spacing for quality variables is often much greater than the SMU size. For short to medium term planning decisions, the shorter term variability in the quality variables is a key economic consideration in defining, setting and meeting coal product specifications.Global uncertainties can be calculated using Drill Hole Spacing Analyses (DHSA). However, knowing the precision of a variable for a one or two year production volume is usually not adequate for variables with low spatial continuity that may fluctuate significantly over daily, weekly, SMU, or shipment volumes.Is there a feasible, reasonable and valid geostatistical method to model the uncertainty of coal quality variables on blocks substantially smaller than the drill spacing (say on the SMU)?The validity of using co-kriging variances, calculated on SMUs to characterise local uncertainty, was tested using a suite of conditional simulations generated for several quality variables for BHP's Blackwater operation. The conditional simulation results were used as a benchmark against which the results derived from the kriging variances could be compared.The agreement between the kriging and simulation methods for thickness is excellent, with much closer correlations than for the quality variables. Typically, the kriging variances give very reasonable approximations to the simulation-based uncertainties, although there could be some systematic discrepancies which may become much more critical if a classification is to be based on a thresholding of the SMUs relative uncertainties.
机译:Kriged估计通常不是基本上小于样本间隔的块(例如标准采矿单元或SMU)。此外,质量变量的样本间隔通常大于SMU尺寸。为了简称中期规划决策,质量变量的较短术语变化是定义,设定和满足煤产品规范中的关键经济考虑因素。可以使用钻孔间距分析(DHSA)来计算Global不确定性。然而,了解一个或两年的生产量的变量的精度通常不适合具有低空间连续性的变量,这些变量可能会在日常,每周,SMU或装运卷上显着波动。可以有可行,合理和有效的地质统计学用于模拟基本上小于钻孔间距的块的煤炭质量变量的不确定性(在SMU上发言)?使用SMUS计算局部不确定性的使用CO-Kriging差异的有效性,使用生成的条件模拟套件来测试局部不确定性对于BHP的黑水运行的几种质量变量。条件仿真结果用作可以比较克里格差异的结果的基准。克里格和厚度的仿真方法之间的协议是优异的,相关性远近质量变量。通常,Kriging variances向基于仿真的不确定性提供非常合理的近似,尽管可能存在一些系统差异,如果分类是基于SMUS相对不确定性的阈值处理,则可能变得更加关键。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号