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Uncertainty modeling of ore body and grades using single normal equation simulation and sequential gaussian simulation: an application to an iron ore mine udududud ud

机译:使用单个正态方程模拟和顺序高斯模拟对矿体和品位进行不确定性建模:在铁矿中的应用 ud ud ud ud

摘要

A conventional, deterministic orebody model would lead to over estimation or under-estimation of the grade, volume and other parameters related to a deposit. This will lead to improper mine planning and thus incur huge financial risk. A proper orebody and grade modeling provide better confidence to mine owners regarding financial decision. However, only using few number of borehole data it is always difficult to come up with such type of accurate decision. Always there are certain amount of risk are associated with the estimation as well as decision. This thesis aims at providing a better risk assessment at minimizing the grade and volumetric uncertainty of the ore body. The multipoint simulation algorithms eliminate the demerits of variogram based geostatistics modeling and preserve multi-point information borrowed from training image. In this thesis, a case study of iron ore deposit from India is performed to analyses the volumetric and grade uncertainty the volumetric and grade uncertainty. Single normal equation simulation (SNESIM), a multi-point categorical simulation algorithm, was performed to measure the volumetric uncertainty of orebody. Ore volume uncertainty was performed by generating. 10 equiprobable orebody simulated models are developed. The grade uncertainty modeling was performed by applying sequential Gaussian simulation (SGM) with orebody model generated by SNESIM algorithm. The result shows that if the training image –based multi-point simulation is applied for ore body modeling, there would have been 7 % increase in volume as compared to traditional method. The grade-tonnage uncertainty reveals that uncertainty-based generates more high grade ores when compared with ordinary kriging method.
机译:常规的确定性矿体模型将导致对矿床的品位,体积和其他参数的过高估计或过低估计。这将导致不正确的矿山规划,从而带来巨大的财务风险。正确的矿体和品位模型可为矿主提供有关财务决策的更好信心。然而,仅使用少量的井眼数据,总是很难提出这种类型的精确决策。总是有一定数量的风险与估计和决策相关联。本文旨在提供更好的风险评估,以最大程度地降低矿石体的品位和体积不确定性。多点仿真算法消除了基于变异函数的地统计学建模的缺点,并保留了从训练图像中借来的多点信息。本文以印度铁矿床为例,分析了体积和品位的不确定性。进行了单点法则方程模拟(SNESIM),一种多点分类模拟算法,以测量矿体的体积不确定性。矿石量不确定度是通过产生来进行的。开发了10个等概率矿体模拟模型。通过对SNESIM算法生成的矿体模型应用顺序高斯模拟(SGM)进行品位不确定度建模。结果表明,如果将基于训练图像的多点模拟应用于矿体建模,则与传统方法相比,体积将增加7%。品位吨位的不确定性表明,与普通克里金法相比,基于不确定性的矿石产生更多的高品位矿石。

著录项

  • 作者

    Panda Nishith;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
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  • 中图分类
  • 入库时间 2022-08-20 20:29:13

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