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Application of Radial Basis Functional Link Networks to Exploration for Proterozoic Mineral Deposits in Central Iran

机译:径向基函数链接网络在伊朗中部元古代矿床勘探中的应用

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摘要

The metallogeny of Central Iran is characterized mainly by the presence of several iron, apatite, and uranium deposits of Proterozoic age. Radial Basis Function Link Networks (RBFLN) were used as a data-driven method for GIS-based predictive mapping of Proterozoic mineralization in this area. To generate the input data for RBFLN, the evidential maps comprising stratigraphic, structural, geophysical, and geochemical data were used. Fifty-eight deposits and 58 'nonde-posits' were used to train the network. The operations for the application of neural networks employed in this study involve both multiclass and binary representation of evidential maps. Running RBFLN on different input data showed that an increase in the number of evidential maps and classes leads to a larger classification sum of squared error (SSE). As a whole, an increase in the number of iterations resulted in the improvement of training SSE. The results of applying RBFLN showed that a successful classification depends on the existence of spatially well distributed deposits and nondeposits throughout the study area.
机译:伊朗中部的成矿主要特征是存在几个元古代的铁,磷灰石和铀矿床。径向基函数链接网络(RBFLN)被用作数据驱动的方法,用于该区域基于GIS的元古代矿化预测映射。为了生成RBFLN的输入数据,使用了包含地层,结构,地球物理和地球化学数据的证据图。 58个矿床和58个“非矿床”被用来训练网络。在这项研究中使用的神经网络的应用操作涉及证据图的多类和二进制表示。在不同的输入数据上运行RBFLN表明,证据图和类别数量的增加导致平方误差(SSE)的分类总和更大。总体而言,迭代次数的增加导致训练SSE的提高。应用RBFLN的结果表明,成功的分类取决于整个研究区域中空间分布良好的沉积物和非沉积物的存在。

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