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Optimization and Quality Control of Automated Quantitative Mineralogy Analysis for Acid Rock Drainage Prediction

机译:酸性岩石排水预测自动定量矿物学分析的优化和质量控制

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Low ore-grade waste samples from the Codelco Andina mine that were analyzed in an environmental and mineralogical test program for acid rock drainage prediction, revealed inconsistencies between the quantitative mineralogical data (QEMSCAN ???? ) and the results of geochemical characterizations by atomic absorption spectroscopy (AAS), LECO ???? furnace, and sequential extractions). For the QEMSCAN ???? results, biases were observed in the proportions of pyrite and calcium sulfate minerals detected. An analysis of the results indicated that the problems observed were likely associated with polished section preparation. Therefore, six different sample preparation protocols were tested and evaluated using three samples from the previous study. One of the methods, which involved particle size reduction and transverse section preparation, was identified as having the greatest potential for correcting the errors observed in the mineralogical analyses. Further, the biases in the quantities of calcium sulfate minerals detected were reduced through the use of ethylene glycol as a polishing lubricant. It is recommended that the sample preparation methodology described in this study be used in order to accurately quantify percentages of pyrite and calcium sulfate minerals in environmental mineralogical studies which use automated mineralogical analysis.
机译:来自Codelco Andina矿的低品位废料样品在环境和矿物学测试程序中进行了酸性岩石排泄预测分析,揭示了定量矿物学数据(QEMSCAN ????)与通过原子吸收进行的地球化学表征结果不一致光谱(AAS),LECO ????炉和顺序提取)。对于QEMSCAN ????结果,在检测到的黄铁矿和硫酸钙矿物质的比例中观察到偏差。结果分析表明,观察到的问题可能与抛光切片的准备有关。因此,使用来自先前研究的三个样品测试和评估了六种不同的样品制备方案。其中一种方法涉及颗粒尺寸减小和横截面制备,被确定为最有可能纠正矿物分析中观察到的误差。此外,通过使用乙二醇作为抛光润滑剂,减少了所检测到的硫酸钙矿物含量的偏差。建议使用本研究中描述的样品制备方法,以便在使用自动矿物学分析的环境矿物学研究中准确定量黄铁矿和硫酸钙矿物的百分比。

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