Random forest rock type classification with integration of geochemical and photographic data

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Applied Computing and Geosciences Pub Date : 2022-09-01 DOI:10.1016/j.acags.2022.100090
McLean Trott , Matthew Leybourne , Lindsay Hall , Daniel Layton-Matthews
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引用次数: 3

Abstract

Systematic manual and algorithmic classification workflows to characterize rock types are increasingly applied in the mineral exploration and mining industry, leveraging large systematically collected datasets. The aim of these are robust and repeatable classifications to aid more traditional visual logging practices. This study uses random forest algorithms to examine the impacts of integrating distinct datasets with complementary characteristics; chemistry to enable compositional distinctions, and photography to enable textural distinctions. We use a random forest classifier to examine the accuracy metrics of models producing rock type classifications using these two data types independently and integrated together. Prediction accuracy, measured using 10-fold cross validation, was 87% for geochemical-only inputs, 85% for photographic-only inputs, and 90% for mixed inputs from both datasets. A mining and exploration project in the Late Miocene to early Pliocene porphyry belt in Chile is the site of this case study, where datasets were systematically acquired using in-field methods on historical drill-cores. Results indicate that classification of lithology is improved by integration of photography-based and composition-based feature inputs. We infer that the benefits of integration would increase in proportion with increasing compositional similarity between rock types. This approach might also be applied to similar geological problems, such as alteration or metallurgical classifications; and with somewhat distinct datatypes, such as geochemical interval data and photographic metric extraction from coincident intervals in core photos.

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结合地球化学和摄影资料的随机森林岩石类型分类
利用大量系统收集的数据集,在矿产勘探和采矿业中越来越多地应用系统的人工和算法分类工作流程来表征岩石类型。这些分类的目的是健壮和可重复的分类,以帮助更传统的可视化日志记录实践。本研究使用随机森林算法来检验整合具有互补特征的不同数据集的影响;化学可以区分成分,摄影可以区分材质。我们使用随机森林分类器来检查使用这两种数据类型独立和集成在一起产生岩石类型分类的模型的精度指标。使用10倍交叉验证测量的预测精度,仅地球化学输入为87%,仅摄影输入为85%,两个数据集的混合输入为90%。智利晚中新世至上新世早期斑岩带的一个采矿和勘探项目是本案例研究的地点,在该项目中,使用历史钻孔岩心的现场方法系统地获取了数据集。结果表明,将基于照片和成分的特征输入相结合,改进了岩性分类。我们推断,整合的好处将随着岩石类型之间成分相似性的增加而成比例地增加。这种方法也可适用于类似的地质问题,例如蚀变或冶金分类;并且数据类型有所不同,如地球化学层段数据和岩心照片中重合层段的摄影度量提取。
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来源期刊
Applied Computing and Geosciences
Applied Computing and Geosciences Computer Science-General Computer Science
CiteScore
5.50
自引率
0.00%
发文量
23
审稿时长
5 weeks
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