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Radial Basis Functional Link Nets Used as a Prospectivity Mapping Tool for Orogenic Gold Deposits Within the Central Lapland Greenstone Belt, Northern Fennoscandian Shield

机译:径向基函数连接网用作北芬诺斯坎德盾构中部拉普兰绿岩带内造山金矿的远景映射工具

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Among the more popular spatial modeling techniques, artificial neural networks (ANN) are tools that can deal with non-linear relationships, can classify unknown data into categories by using known examples for training, and can deal with uncertainty; characteristics that provide new possibilities for data exploration. Radial basis functional link nets (RBFLN), a form of ANN, are applied to generate a series of prospectivity maps for orogenic gold deposits within the Paleoproterozoic Central Lapland Greenstone Belt, Northern Fennoscandian Shield, Finland, which is considered highly prospective yet clearly under explored. The supervised RBFLN performs better than previously applied statistical weights-of-evidence or conceptual fuzzy logic methods, and equal to logistic regression method, when applied to the same geophysical and geochemical data layers that are proxies for conceptual geological controls. By weighting the training feature vectors in terms of the size of the gold deposits, the classification of the neural network results provides an improved prediction of the distribution of the more important deposits/occurrences. Thus, ANN, more specifically RBFLN, potentially provide a better tool to other methodologies in the development of prospectivity maps for mineral deposits, hence aiding conceptual exploration.
机译:在更流行的空间建模技术中,人工神经网络(ANN)是可以处理非线性关系,可以通过使用已知的训练示例将未知数据分类的工具,并且可以处理不确定性。这些特性为数据探索提供了新的可能性。径向基函数连接网(RBFLN)是ANN的一种形式,用于为芬兰北部芬诺斯堪的纳德盾构的古元古代中拉普兰中部绿岩带中的造山金矿床生成一系列远景图,该远景图被认为具有很高的远景性,但显然正在探索中。当应用于作为概念性地质控制代理的相同地球物理和地球化学数据层时,受监督的RBFLN的性能要优于先前应用的统计证据权重或概念性模糊逻辑方法,并且等同于逻辑回归方法。通过根据金矿床的大小对训练特征向量进行加权,神经网络结果的分类为更重要的矿床/矿床的分布提供了更好的预测。因此,在开发矿床前景图时,人工神经网络,更具体地说是RBFLN,有可能为其他方法提供更好的工具,从而有助于概念性勘探。

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