桂西滇东南地区锰矿化潜力预测GIS模型

Baoyi Zhang, Xiaoli Li, Xiancheng Mao, Hao Deng, Shangguo Zhou
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引用次数: 0

摘要

在分析桂西滇东南地区锰成矿条件的基础上,利用GIS场模型的空间分析方法,构建了沉积盆地、同沉积断裂、沉积相、地层、岩性组合、数字地形特征、航磁异常等地质变量。为解决预测区域与已知区域之间的信息不对称问题,提出了一种受空间作用范围限制的矿产资源定量预测方法,将预测成矿条件与已知区域建立的预测模型进行匹配,保证信息对称。为避免WofE方法中证据指定的主观性,采用线性回归分析方法对证据进行过滤。为了降低证据二值转换过程中的信息损失,采用了既考虑矿床数量又考虑矿床数量的方法。
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A predictive GIS model for mapping potential manganese mineralization in western Guangxi and southeastern Yunnan area, China
On the basis of analysis of manganese metallogenesis conditions in the western Guangxi and southeastern Yunnan area, some geological variables, including sedimentary basins, synsedimentary faults, deposit facies, strata, lithology combinations, digital topographical features, aeromagnetic anomalies, etc., were built by spatial analysis methods of GIS field model. To solve the information asymmetry problem between prediction areas and known areas, this paper brought a method for mineral resources quantitative prediction limited by spatial extent of action, which matched metallogenesis conditions of prediction with prediction models built in known areas to ensure the information symmetry. To avoid subjectivity of evidence designation in the weights of evidence (WofE) method, linear regression analysis method was applied to filter the evidences. A method considering not only manganese deposits' number but also their quantities was taken to lower the information loss in the binary conversion of evidences.
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