Probabilistic Prediction of Acid Mine Drainage Generation Risk Based on Pyrite Oxidation Process in Coal Washery Rejects - A Case Study

IF 1.1 Q3 MINING & MINERAL PROCESSING
F. Hadadi, B. J. Shokri, Masoud Zare Naghadehi, F. D. Ardejani
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引用次数: 6

Abstract

In this paper, we investigate a probabilistic approach in order to predict how acid mine drainage is generated within coal waste particles in NE Iran. For this, a database is built based on the previous studies that have investigated the pyrite oxidation process within the oldest abandoned pile during the last decade. According to the available data, the remaining pyrite fraction is considered as the output data, while the depth of the waste, concentration of bicarbonate, and oxygen fraction are the input parameters. Then the best probability distribution functions are determined on each one of the input parameters based on a Monte Carlo simulation. Also the best relationships between the input data and the output data are presented regarding the statistical regression analyses. Afterward, the best probability distribution functions of the input parameters are inserted into the linear statistical relationships to find the probability distribution function of the output data. The results obtained reveal that the values of the remaining pyrite fraction are between 0.764% and 1.811% at a probability level of 90%. Moreover, the sensitivity analysis carried out by applying the tornado diagram shows that the pile depth has, by far, the most critical factors affecting the pyrite remaining
基于选煤厂废渣黄铁矿氧化过程的酸性矿井水生成风险概率预测——以黄铁矿氧化废渣为例
在本文中,我们研究了一种概率方法,以预测伊朗东北部煤矸石颗粒中酸性矿井排水是如何产生的。为此,基于过去十年来对最古老的废弃堆中黄铁矿氧化过程的研究,建立了一个数据库。根据现有数据,以残余黄铁矿分数为输出数据,以废石深度、碳酸氢盐浓度、氧分数为输入参数。然后在蒙特卡罗模拟的基础上确定每个输入参数的最佳概率分布函数。在统计回归分析中,给出了输入数据与输出数据之间的最佳关系。然后,将输入参数的最佳概率分布函数插入到线性统计关系中,求出输出数据的概率分布函数。结果表明,在90%的概率水平上,黄铁矿残余分数在0.764% ~ 1.811%之间。应用龙卷风图进行敏感性分析表明,桩深是影响黄铁矿残留的最关键因素
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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