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Application of Discriminant Analysis and Support Vector Machine in Mapping Gold Potential Areas for Further Drilling in the Sari-Gunay Gold Deposit, NW Iran

机译:判别分析和支持向量机在伊朗西北萨里-古奈金矿床进一步钻探金矿区图中的应用

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In this contribution, we used discriminant analysis (DA) and support vector machine (SVM) to model subsurface gold mineralization by using a combination of the surface soil geo-chemical anomalies and earlier bore data for further drilling at the Sari-Gunay gold deposit, NW Iran. Seventy percent of the data were used as the training data and the remaining 30 % were used as the testing data. Sum of the block grades, obtained by kriging, above the cutoff grade (0.5 g/t) was multiplied by the thickness of the blocks and used as productivity index (PI). Then, the PI variable was classified into three classes of background, medium, and high by using fractal method. Four classification functions of SVM and DA methods were calculated by the training soil geochemical data. Also, by using all the geochemical data and classification functions, the general extension of the gold mineralized zones was predicted. The mineral prediction models at the Sari-Gunay hill were used to locate high and moderate potential areas for further infill systematic and reconnaissance drilling, respectively. These models at Agh-Dagh hill and the area between Sari-Gunay and Agh-Dagh hills were used to define the moderate and high potential areas for further reconnaissance drilling. The results showed that the nu-SVM method with 73.8 % accuracy and c-SVM with 72.3 % accuracy worked better than DA methods.
机译:在这项贡献中,我们使用判别分析(DA)和支持向量机(SVM)通过结合表层土壤地球化学异常和早期钻孔数据对地下Sari-Gunay金矿进行进一步钻探来对地下金矿化进行建模,西北伊朗。 70%的数据用作训练数据,其余30%用作测试数据。将通过克立格法获得的,高于临界品位(0.5 g / t)的块级总和乘以块的厚度,并用作生产率指标(PI)。然后,使用分形方法将PI变量分为背景,中和高三类。通过训练土壤地球化学数据,计算了支持向量机和DA方法的四个分类函数。而且,通过使用所有地球化学数据和分类函数,可以预测金矿化带的总体扩展。 Sari-Gunay山的矿物预测模型分别用于定位高和中度潜在区域,分别进行进一步的系统钻探和勘察钻探。在Agh-Dagh丘陵以及Sari-Gunay和Agh-Dagh丘陵之间的区域中使用这些模型来定义中等和高潜力区域,以进行进一步的侦察钻探。结果表明,准确度为73.8%的nu-SVM方法和准确度为72.3%的c-SVM的效果优于DA方法。

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