A Stochastic Model Updating Gold Reserve Estimation by Using Monte Carlo Simulation

IF 1.1 Q3 MINING & MINERAL PROCESSING Journal of Mining and Environment Pub Date : 2021-07-12 DOI:10.22044/JME.2021.10795.2046
M. Kamran, Sher Bacha, Nisar Mohammad
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引用次数: 1

Abstract

This paper elucidates a new idea and concept for exploration of the gold ore deposits.  The cyanidation method is traditionally used for gold extraction. However, this method is laborious, time-consuming, costly, and depends upon the availability of the processing units. In this work, an attempt is made in order to update the gold exploration method by the Monte Carlo-based simulation. An excellent approach always requires a high quality of the datasets for a good model. A total of 48 incomplete datasets are collected from the Shoghore district, Chitral area of Khyber, Pakhtunkhwa, Pakistan. The cyanidation leaching test is carried out in order to measure the percentage of the gold ore deposits. In this work, the mean, median, mode, and successive iteration substitute methods are employed in such a way that they can compute the datasets with missing attributes. The multiple regression analysis is used to find a correlation between the potential of hydrogen ion concentration (pH), solid content (in %), NaCN concentration (in ppm), leaching time (in Hr), particle size (in µm), and measured percentage of gold recovery (in %). Moreover, the normal Archimedes and exponential distributions are employed in order to forecast the uncertainty in the measured gold ore deposits. The performance of the model reveals that the Monte Carlo approach is more authentic for the probability estimation of gold ore recovery. The sensitivity analysis reveals that pH is the most influential parameter in the estimation of the gold ore deposits. This stochastic approach can be considered as a foundation to foretell the probabilistic exploration of the new gold deposits.
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用蒙特卡罗模拟更新黄金储量估计的随机模型
本文阐述了金矿找矿的新思路和新概念。氰化法是传统的提金方法。然而,这种方法费力、耗时、昂贵,并且依赖于处理单元的可用性。本文尝试用蒙特卡罗模拟方法来更新金矿找矿方法。一个优秀的方法总是需要高质量的数据集来建立一个好的模型。从巴基斯坦普赫图赫瓦省开伯尔省吉德拉尔地区的Shoghore区共收集了48个不完整的数据集。通过氰化浸出试验,测定了金矿床的含金率。在这项工作中,采用了均值、中位数、模式和连续迭代替代方法,以便它们可以计算具有缺失属性的数据集。采用多元回归分析,找出氢离子浓度(pH)、固含量(%)、NaCN浓度(ppm)、浸出时间(Hr)、粒度(µm)与金回收率(%)之间的关系。此外,还采用正态阿基米德分布和指数分布来预测实测金矿床的不确定性。模型的性能表明,蒙特卡罗方法对金矿回收率的概率估计更为真实。灵敏度分析表明,pH值是影响金矿床估计的最重要参数。这种随机方法可作为预测新金矿概率找矿的基础。
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来源期刊
Journal of Mining and Environment
Journal of Mining and Environment MINING & MINERAL PROCESSING-
CiteScore
1.90
自引率
25.00%
发文量
0
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