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首页> 外文期刊>Computers & geosciences >Probabilistic Neural Networks Applied To Mineral Potential Mapping For Platinum Group Elements In The Serra Leste Region, Carajas Mineral Province, Brazil
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Probabilistic Neural Networks Applied To Mineral Potential Mapping For Platinum Group Elements In The Serra Leste Region, Carajas Mineral Province, Brazil

机译:概率神经网络在巴西卡拉哈斯矿产省塞拉莱斯特地区的铂族元素矿物势图绘制中的应用

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This work presents an application of probabilistic neural networks to map the potential for platinum group elements (PGE) mineralization sites in the northeast portion of the Carajas Mineral Province (CMP), Brazilian Amazon. Geological and geophysical gamma-spectrometric and magnetic data were used to generate evidential maps to derive input feature vectors. Feature vectors representing known mineralized locations were used as training data. The networks were created based on the training dataset and the evidential maps were classified in terms of probabilities using these networks. We have produced mineral potential models that depict classes with high, moderate and low favorability for Au-PGE mineralization sites and a model with high and low favorability classes for Cr-PGE mineralization sites. The cut-off values for each class were selected as the inflexion points of the curves of favorability against cumulative percentage of the study area. These curves were also used to check for the efficiency of the models by plotting the favorability values at the training sites. Leave-one-out tests were applied to validate the models and the overall accuracy is 87.5%. For Au-PGE mineralization sites, the high favorability areas accounts for 0.57% of the study area and are comprised mainly within meta-pelites and meta-siltites. For Cr-PGE mineralization sites, the high favorability areas are much more restrict and accounts for only 0.17% of the study area, being associated chiefly with mafic and ultramafic rocks. These mineral potential maps can be used as reconnaissance guides for future detailed ground surveys of possible new PGE occurrences, which is of critical importance to shorten exploration time and costs in such densely forested Amazonian terrains.
机译:这项工作提出了概率神经网络的应用,以绘制巴西亚马逊Carajas矿物省(CMP)东北部的铂族元素(PGE)矿化位点的潜力。地质和地球物理伽玛光谱和磁数据被用来生成证据图,以得出输入特征向量。代表已知矿化位置的特征向量被用作训练数据。基于训练数据集创建网络,并使用这些网络根据概率对证据图进行分类。我们已经制作了矿产潜力模型,这些模型描述了对Au-PGE矿化位点具有高,中,低优先度等级的类别,以及对Cr-PGE矿化位点具有高和低有利度的等级模型。选择每个类别的截断值作为对研究区域累积百分比的有利程度曲线的拐点。这些曲线还通过在训练地点绘制好感度值来检查模型的效率。应用留一法测试以验证模型,总体准确性为87.5%。对于Au-PGE矿化点,高有利度地区占研究区域的0.57%,并且主要包含在变质岩和变质粉云岩中。对于Cr-PGE矿化点,高有利度区域受到更大的限制,仅占研究区域的0.17%,主要与镁铁质和超镁铁质岩石有关。这些矿产潜力图可以用作未来可能发生的新的PGE发生情况的详细地面勘测的侦察指南,这对于缩短在这种森林茂密的亚马逊地形中的勘探时间和成本至关重要。

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