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ORE WASTE CLASSIFICATION OF A LEAD ZINC DEPOSIT USING SUPPORT VECTOR MACHINE

机译:使用支持向量机对铅锌矿进行矿石分类

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The objective of this study is to classify ore and waste in a selected mine. The support vector machine, was used for the classification purpose, is applied to a zinc ore body in a skarn deposit located in the central region of the Peruvian Andes. The input parameters used for the model are spatial coordinates and the lithological information of the ore body. The input data was divided into training and testing data sets and the performance of the model was tested using the testing data set. The results show that more than 76% of the data could be properly classified by this method. The ore waste maps of the deposit was then developed using SVM model. From the result it was observed that a comparatively very few number of cells classified as ore. The ore is concentrated in small lodes at the middle of the volume of study, and not uniformly distributed throughout the study area. The lithological map of the deposit was also constructed as it was used as an input parameter for the SVM model. The indicator kriging was used for generation of lithological map of the ore body.
机译:这项研究的目的是对选定矿山中的矿石和废物进行分类。用于分类目的的支持向量机应用于位于秘鲁安第斯山脉中部地区矽卡岩矿床中的锌矿体。用于模型的输入参数是空间坐标和矿体的岩性信息。输入数据分为训练和测试数据集,并使用测试数据集测试模型的性能。结果表明,该方法可以正确分类超过76%的数据。然后使用SVM模型开发矿床的矿石废物图。从结果可以看出,分类为矿石的细胞数量相对较少。矿石在研究体积的中间集中在小矿中,并且在整个研究区域中分布不均匀。还将沉积物的岩性图用作SVM模型的输入参数。指示克里格法用于生成矿体的岩性图。

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