Goovaerts P, Albuquerque Teresa, Antunes Margarida
BioMedware, PO Box 1577, Ann Arbor, MI 48106, USA., phone: 734-913-1098, fax: 734-913-2201.
CIGAR - Geo-Environmental and Resources Research Center, FEUP, Oporto and Polytechnic Institute of Castelo Branco, 6001-909 Castelo Branco, Portugal.
Math Geosci. 2016 Nov;48(8):921-939. doi: 10.1007/s11004-015-9632-8. Epub 2016 Feb 1.
This paper describes a multivariate geostatistical methodology to delineate areas of potential interest for future sedimentary gold exploration, with an application to an abandoned sedimentary gold mining region in Portugal. The main challenge was the existence of only a dozen gold measurements confined to the grounds of the old gold mines, which precluded the application of traditional interpolation techniques, such as cokriging. The analysis could, however, capitalize on 376 stream sediment samples that were analyzed for twenty two elements. Gold (Au) was first predicted at all 376 locations using linear regression (R=0.798) and four metals (Fe, As, Sn and W), which are known to be mostly associated with the local gold's paragenesis. One hundred realizations of the spatial distribution of gold content were generated using sequential indicator simulation and a soft indicator coding of regression estimates, to supplement the hard indicator coding of gold measurements. Each simulated map then underwent a local cluster analysis to identify significant aggregates of low or high values. The one hundred classified maps were processed to derive the most likely classification of each simulated node and the associated probability of occurrence. Examining the distribution of the hot-spots and cold-spots reveals a clear enrichment in Au along the Erges River downstream from the old sedimentary mineralization.
本文描述了一种多元地质统计学方法,用于划定未来沉积型金矿勘探的潜在感兴趣区域,并将其应用于葡萄牙一个废弃的沉积型金矿开采区。主要挑战在于,仅在旧金矿场地内有十几处金测量数据,这使得传统插值技术(如协同克里金法)无法应用。然而,该分析可以利用对376个河流沉积物样本进行的22种元素分析。首先使用线性回归(R = 0.798)以及四种已知与当地金矿共生关系密切的金属(铁、砷、锡和钨),对所有376个位置的金(Au)进行预测。利用顺序指示模拟和回归估计的软指示编码,生成了100个金含量空间分布的实现,以补充金测量的硬指示编码。然后对每个模拟地图进行局部聚类分析,以识别低值或高值的显著聚集区。对这100个分类地图进行处理,以得出每个模拟节点最可能的分类及其相关的发生概率。对热点和冷点的分布进行检查,发现在旧沉积矿化下游的埃尔热斯河沿岸,金明显富集。