创建地质冶金集群的工作流程,无需直接查看地质冶金变量

IF 4.9 2区 工程技术 Q1 ENGINEERING, CHEMICAL Minerals Engineering Pub Date : 2025-01-08 DOI:10.1016/j.mineng.2024.109171
F.G.F. Niquini , I.A. Andrade , J.F.C.L. Costa , V.M. Silva , R.S. Marcelino
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引用次数: 0

摘要

聚类分析经常用于帮助个性化的平稳域。它在创建地质冶金集群中的应用可以遵循两种方法。第一种方法是利用聚类分析中的地质测试变量来定义基于地质数据库的域。这种方法在采矿中很常见,通常缺乏足够的数据来进行准确的3D建模。第二种方法利用矿床中广泛存在的次要信息,如岩心样品中存在的化学、岩性和矿物学变量,并将它们与较小的地质冶金数据库中提供的冶金变量相关联。这种间接的解决方案选择高度相关的变量与地质冶金的响应只使用他们作为输入在聚类分析。这种方法允许仅使用钻孔样本来定义地质冶金簇,而无需直接查看地质冶金信息。在案例研究中,一旦钻孔样本数量超过了地质样本数量(4862对40),利用二次信息对地质集群的空间建模就会更加准确。提出的工作流程首先使用递归特征消去来定义影响目标地质响应的主要解释变量。接下来,使用k-means等技术进行聚类构建,然后构建决策树将每个钻孔样本分配到一个地质冶金聚类中。最后进行三维建模,根据每块块的地矿学域对每块块进行分类。所有的分析都是在维加矿进行的,维加矿是位于巴西米纳斯吉拉斯州铁四边形的铁矿石矿床。工作流程和结果证明是充分的,并有望在工业规模上实施。
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A workflow to create geometallurgical clusters without looking directly at geometallurgical variables
Cluster analysis is frequently used to help in individualizing stationary domains. Its application in creating geometallurgical clusters can follow two approaches. The first utilizes geometallurgical test variables in cluster analysis to define domains based on the geometallurgical database. This approach, common in mining, often lacks sufficient data for accurate 3D modelling. The second approach uses the secondary information widely available in the deposit, such as the chemical, lithological and mineralogical variables, present in the core samples, and correlating them with the metallurgical variables presented in the smaller geometallurgical database. This indirect solution chooses the highly correlated variables with the geometallurgical response using only them as inputs in the cluster analysis. This approach permits defining the geometallurgical clusters using only drillhole samples, without directly looking at the geometallurgical information. Once the drillhole samples outnumber geometallurgical samples in the case study (4862 against 40), the spatial modeling of the geometallurgical clusters using secondary information is more accurate. The workflow proposed starts using recursive feature elimination to define the main explanatory variables affecting the target geometallurgical response. Next, clustering construction using k-means and other techniques is made, followed by building a decision tree to assign each drillhole sample to a geometallurgical cluster. Finally, it concludes with the 3D modeling to classify each block according to its geometallurgical domain. All analyses were made in the Viga mine, an iron ore deposit located at the iron quadrangle in Minas Gerais state, Brazil. The workflow and results proved to be adequate and promising to be implemented at industrial scale.
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来源期刊
Minerals Engineering
Minerals Engineering 工程技术-工程:化工
CiteScore
8.70
自引率
18.80%
发文量
519
审稿时长
81 days
期刊介绍: The purpose of the journal is to provide for the rapid publication of topical papers featuring the latest developments in the allied fields of mineral processing and extractive metallurgy. Its wide ranging coverage of research and practical (operating) topics includes physical separation methods, such as comminution, flotation concentration and dewatering, chemical methods such as bio-, hydro-, and electro-metallurgy, analytical techniques, process control, simulation and instrumentation, and mineralogical aspects of processing. Environmental issues, particularly those pertaining to sustainable development, will also be strongly covered.
期刊最新文献
Editorial Board The effect of hydrogen pre-reduction on the carbon-reducibility of pelletised UG2 chromite Mechanism of quartz flotation separation from gypsum using tetradecyl trimethyl ammonium chloride: Guiding the improvement of phosphogypsum quality Mitigating contaminated mine drainage through mine waste rock decontamination: A strategy for promoting cleaner and sustainable management Fourth generation gravity separation using the Reflux Classifier
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