The Calculation and Use of Sulfide Metal Contents in the Study of Magmatic Ore Deposits: A Methodological Analysis

A. Kerr
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引用次数: 19

Abstract

The base-metal and PGE contents of samples from magmatic sulfide mineralization are commonly correlated with their sulfide contents, indicating that the metal contents of bulk sulfides remain approximately constant within a given prospect or part thereof. Calculated sulfide metal contents provide valuable information in mineral exploration and research, but there are few formal descriptions and analyses of the procedures. Sulfide metal contents are best calculated using an assumed value (35.7% S) for a typical pyrrhotite-chalcopyrite-pentlandite mixture, and there appears to be little advantage in accounting for sulfide species separately. Regression of metal data against sulfur is probably the most rigorous approach, but is not always practical. Above 10% S, calculations are very robust, but lower sulfide contents generally demand at least some correction for non-sulfide-hosted metals. Such corrections can become significant below 5% S, and/or in olivine-rich samples. They are best accomplished by mass-balance calculations, using concentration data from unmineralized host rocks. Significant uncertainties are introduced by analytical errors for sulfur, base-metals, and PGE, which are commonly measured from separate sample aliquots. These combined errors in sulfide metal contents generally exceed ±10%, but expand further at low S contents. In general, treatment of data from samples containing <2.5% S must be approached with caution, especially for PGE, for which the exact host minerals may not be known. Application of the method in simple grade-potential assessment is straightforward, but research studies involving sulfide-poor samples are inherently more complex. Under-correction or over-correction of data for non-sulfide-hosted metals can lead to false negative or positive correlations between sulfide metal contents and sulfide content. As the latter may itself be linked to geological parameters, such as depth within an intrusive body, undue significance could be ascribed to such trends. There are also valid geological reasons for such correlations, and such data require careful assessment to separate true and artificial variations. Propagated analytical uncertainties increase significantly in sulfide-poor samples, and must also be borne in mind whenever data from different localities or units are compared and contrasted.
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岩浆矿床研究中硫化物金属含量的计算与应用:方法学分析
岩浆硫化物矿化样品的贱金属和PGE含量通常与其硫化物含量相关,表明在给定的远景或部分远景范围内,大块硫化物的金属含量大致保持不变。硫化物金属含量的计算为矿产勘探和研究提供了有价值的信息,但对计算过程的正式描述和分析却很少。对于典型的磁黄铁矿-黄铜矿-镍黄铁矿混合物,硫化物金属含量最好使用假设值(35.7% S)来计算,单独计算硫化物种类似乎没有什么优势。根据硫对金属数据进行回归可能是最严格的方法,但并不总是实用的。高于10% S,计算非常可靠,但较低的硫化物含量通常需要对非硫化物金属进行至少一些校正。这种校正在5% S以下和/或在富含橄榄石的样品中变得显著。它们最好是通过质量平衡计算来完成的,使用的是来自未矿化宿主岩石的浓度数据。硫、贱金属和PGE的分析误差引入了显著的不确定度,这些通常是从单独的样品等分中测量的。这些综合误差在硫化物金属含量时一般大于±10%,但在低硫含量时进一步扩大。一般来说,必须谨慎处理含有<2.5% S的样品的数据,特别是对于PGE,其确切的宿主矿物可能尚不清楚。该方法在简单的品位潜力评估中的应用是直接的,但涉及硫化物贫乏样品的研究本身就更加复杂。非硫化物金属的数据校正不足或校正过度可能导致硫化物金属含量与硫化物含量之间的假负或假正相关。由于后者本身可能与地质参数有关,例如侵入体内的深度,因此这种趋势可能被赋予不适当的重要性。这种相关性也有合理的地质原因,需要对这些数据进行仔细评估,以区分真实的和人为的变化。在硫化物含量低的样品中,传播分析不确定度显著增加,并且在比较和对比来自不同地点或单位的数据时也必须牢记。
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