Defining geologic domains using cluster analysis and indicator correlograms: a phosphate-titanium case study

IF 0.9 Q4 GEOSCIENCES, MULTIDISCIPLINARY
G. Moreira, J. F. Coimbra Leite Costa, D. Marques
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引用次数: 6

Abstract

ABSTRACT One of the first decisions to be made when building a mineral resource model is the definition of geological/geostatistical domains. Cluster analysis is a set of techniques in machine learning that can be especially suited for this matter. In order to compare different approaches, two clustering algorithms were investigated in this study: k-means and the dual-space clustering algorithm. Choosing the most appropriate method and the number of clusters can be challenging and some metrics are needed to support these decisions, including the validation of the spatial distribution of the clusters, which is not always appropriately discussed in the literature. We introduce the use of correlograms of the indicators for that matter. Although clustering techniques can be robust for an application in resource modelling, expert knowledge is still necessary when applying cluster analysis to resource modeling, since final decisions should not be based solely on statistical indexes, but also on experience. In this paper, the proposed methodology was tested in a three-dimensional dataset related to a phosphate/titanium deposit.
利用聚类分析和指标相关图确定地质域:以磷钛为例
在建立矿产资源模型时,首先要做的决定之一是定义地质/地质统计域。聚类分析是机器学习中的一组技术,特别适合于这个问题。为了比较不同的聚类方法,本研究研究了两种聚类算法:k-means和双空间聚类算法。选择最合适的方法和集群的数量可能是具有挑战性的,需要一些指标来支持这些决策,包括集群的空间分布的验证,这在文献中并不总是适当地讨论。我们在此介绍指标的相关图的使用。虽然聚类技术对于资源建模的应用程序来说是健壮的,但是当将聚类分析应用于资源建模时,专家知识仍然是必要的,因为最终的决策不应该仅仅基于统计指标,还应该基于经验。在本文中,所提出的方法在与磷酸盐/钛矿床相关的三维数据集中进行了测试。
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
CiteScore
1.70
自引率
10.00%
发文量
17
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