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首页> 外文期刊>Natural resources research >Use of Fuzzy Membership Input Layers to Combine Subjective Geological Knowledge and Empirical Data in a Neural Network Method for Mineral-Potential Mapping
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Use of Fuzzy Membership Input Layers to Combine Subjective Geological Knowledge and Empirical Data in a Neural Network Method for Mineral-Potential Mapping

机译:利用模糊隶属度输入层将主观地质知识和经验数据结合到神经网络方法中进行矿势分布图

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摘要

Use of GIS layers, in which the cell values represent fuzzy membership variables, is an effective method of combining subjective geological knowledge with empirical data in a neural network approach to mineral-prospectivity mapping. In this study, multilayer perceptron (MLP), neural networks are used to combine up to 17 regional exploration variables to predict the potential for orogenic gold deposits in the form of prospectivity maps in the Archean Kalgoorlie Terrane of Western Australia. Two types of fuzzy membership layers are used. In the first type of layer, the statistical relationships between known gold deposits and variables in the GIS thematic layer are used to determine fuzzy membership values. For example, GIS layers depicting solid geology and rock-type combinations of categorical data at the nearest lithological boundary for each cell are converted to fuzzy membership layers representing favorable lithologies and favorable lithological boundaries, respectively. This type of fuzzy-membership input is a useful alternative to the 1-of-N coding used for categorical inputs, particularly if there are a large number of classes. Rheological contrast at lithological boundaries is modeled using a second type of fuzzy membership layer, in which the assignment of fuzzy membership value, although based on geological field data, is subjective. The methods used here could be applied to a large range of subjective data (e.g., favorability of tectonic environment, host stratigraphy, or reactivation along major faults) currently used in regional exploration programs, but which normally would not be included as inputs in an empirical neural network approach.
机译:使用GIS层(其中的单元格值代表模糊的隶属变量)是一种有效的方法,可以在神经网络方法中将主观地质知识与经验数据相结合来进行矿物前景图绘制。在这项研究中,多层感知器(MLP)神经网络用于组合多达17个区域勘探变量,以西澳大利亚太古宙斯卡尔古利地形中的前景图形式预测造山金矿的潜力。使用两种类型的模糊隶属层。在第一种类型的层中,已知的金矿床与GIS专题层中的变量之间的统计关系用于确定模糊隶属度值。例如,将描述每个单元的最近岩性边界处的实体地质和分类数据的岩石类型组合的GIS层转换为分别代表有利岩性和有利岩性边界的模糊隶属层。这种类型的模糊成员资格输入是用于分类输入的N分之一编码的有用替代方法,尤其是在存在大量类的情况下。使用第二种类型的模糊隶属层对岩性边界上的流变性进行建模,尽管基于地质领域数据,模糊隶属度值的分配还是主观的。此处使用的方法可以应用于目前在区域勘探计划中使用的各种主观数据(例如构造环境的有利性,宿主地层学或沿主要断层的活化),但通常不会将它们作为经验数据的输入。神经网络方法。

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