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Application of support vector machines for copper potential mapping in Kerman region, Iran

机译:支持向量机在伊朗克尔曼地区铜电位测绘中的应用

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摘要

The first step in systematic exploration studies is mineral potential mapping, which involves classification of the study area to favorable and unfavorable parts. Support vector machines (SVM) are designed for supervised classification based on statistical learning theory. This method named support vector classification (SVC). This paper describes SVC model, which combine exploration data in the regional scale for copper potential mapping in Kerman copper bearing belt in south of Iran. Data layers or evidential maps were in six datasets namely lithology, tectonic, airborne geophysics, ferric alteration, hydroxide alteration and geochemistry. The SVC modeling result selected 2220 pixels as favorable zones, approximately 25 percent of the study area. Besides, 66 out of 86 copper indices, approximately 78.6% of all, were located in favorable zones. Other main goal of this study was to determine how each input affects favorable output. For this purpose, the histogram of each normalized input data to its favorable output was drawn. The histograms of each input dataset for favorable output showed that each information layer had a certain pattern. These patterns of SVC results could be considered as regional copper exploration characteristics. (C) 2016 Elsevier Ltd. All rights reserved.
机译:系统性勘探研究的第一步是矿产潜力测绘,其中涉及将研究区域分为有利和不利部分。支持向量机(SVM)设计用于基于统计学习理论的监督分类。此方法称为支持向量分类(SVC)。本文介绍了SVC模型,该模型结合了区域规模的勘探数据,用于伊朗南部克尔曼铜轴承带的铜势测绘。数据层或证据图位于六个数据集中,即岩性,构造,机载地球物理,铁素体蚀变,氢氧化物蚀变和地球化学。 SVC建模结果选择了2220个像素作为有利区域,约占研究区域的25%。此外,在86个铜指数中,有66个位于有利区域,占总数的78.6%。这项研究的另一个主要目标是确定每种投入如何影响有利的产出。为此,绘制了每个归一化输入数据到其有利输出的直方图。每个输入数据集的直方图显示输出良好,每个信息层都有一定的模式。 SVC结果的这些模式可以视为区域铜勘探特征。 (C)2016 Elsevier Ltd.保留所有权利。

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