SEM-based automated mineralogy (SEM-AM) and unsupervised machine learning studying the textural setting and elemental association of gold in the Rajapalot Au-Co area, northern Finland

IF 1.3 4区 地球科学 Q2 GEOLOGY
J. Ranta, N. Cook, S. Gilbricht
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引用次数: 1

Abstract

SEM-based automated mineralogy (SEM-AM) techniques allow fast and effective way of studying the textural settings of gold in hydrothermal deposits. Unsupervised machine learning (e.g. self-organizing maps) is an intuitive way of processing multi-dimensional geochemical datasets in order to reveal hidden patterns potentially represent different mineralization stages. We combined these two methods for studying the relationship of gold and cobalt within different prospects in a Paleoproterozoic gold-cobalt mineralized area known as Rajapalot. Gold is found as a texturally late phase, occurring in fractures of silicates and sulfides. Based on the elemental associations observed from the whole-rock geochemical dataset using self-organizing-maps, Co-only, Au-Co and Au associations can be inferred relating to either different mineralization stages or different fluid-host rock interactions. Also, the dominant mineralization-related alteration in different occurrences within the Rajapalot Au-Co prospects are reflected as elemental associations with gold in the geochemical data. Our study shows the effectiveness SEM-AM methods for studying distribution of valuable minerals. Unsupervised neural networks provide for easy and intuitive processing technique that can be validated with the mineralogical observations.
基于SEM的自动化矿物学(SEM-AM)和无监督机器学习研究芬兰北部Rajapalot Au Co地区黄金的结构设置和元素组合
基于SEM的自动化矿物学(SEM-AM)技术可以快速有效地研究热液矿床中金的结构设置。无监督机器学习(例如自组织地图)是处理多维地球化学数据集的直观方式,目的是揭示潜在代表不同矿化阶段的隐藏模式。我们将这两种方法结合起来,研究了Rajapalot古元古代金钴矿化区不同前景下的金和钴的关系。金被发现为一种结构晚期,存在于硅酸盐和硫化物的裂缝中。根据使用自组织图从全岩地球化学数据集观察到的元素组合,可以推断出与不同矿化阶段或不同流体-宿主-岩石相互作用有关的仅Co、Au-Co和Au组合。此外,Rajapalot Au-Co矿床内不同矿点的主要矿化相关蚀变在地球化学数据中反映为与金的元素缔合。我们的研究表明了SEM-AM方法在研究有价值矿物分布方面的有效性。无监督神经网络提供了简单直观的处理技术,可以通过矿物学观测进行验证。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
5
审稿时长
>12 weeks
期刊介绍: Bulletin of the Geological Society of Finland (BGSF) publishes research articles and short communications in all branches of geosciences. Contributions from outside Finland are welcome, provided that they contain material relevant to Finnish geology or are of general interest.
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