Integration of mineral potential maps from various geospatial models

Saro Lee
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引用次数: 2

Abstract

The purpose of this study is to map mineral potential in Gangreung area, Korea. The mineral potential map was made and validated using likelihood ratio, logistic regression and artificial neural network models with a geographic information system (GIS). Moreover integration of the models has applied to get the better accuracy than each model. For this, the factors related to Au-Ag mineral occurrence were compiled in the GIS database. The factors are the geological data of lithology and fault structure, geochemical data. Using these factors, the potential of mineral were analysed using the 3 models. The validation result showed that the likelihood ratio, logistic regression and artificial neural network models had 83.70%, 81.91% and 77.37% accuracies. But the integrated mineral potential map, prediction accuracy was 92.94%. The generated maps could be used to not only predict known areas of Au-Ag occurrence, but also identify areas of potential mineralization where no known deposit occurs.
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整合来自不同地理空间模型的矿产潜力图
本次研究的目的是绘制韩国江陵地区的矿产潜力图。利用地理信息系统(GIS),利用似然比、逻辑回归和人工神经网络模型对矿物图进行了绘制和验证。此外,还采用了模型的集成,以获得比单个模型更好的精度。为此,在GIS数据库中编制了与金银矿物赋存有关的因素。影响因素包括岩性和断裂构造的地质资料、地球化学资料。利用这些因素,利用3种模型对矿物学潜力进行了分析。验证结果表明,似然比、逻辑回归和人工神经网络模型的准确率分别为83.70%、81.91%和77.37%。综合矿位图,预测精度为92.94%。生成的地图不仅可以用来预测已知的金银赋存区,还可以用来识别没有已知矿床的潜在矿化区。
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