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Application of artificial neural networks for classification of uranium distribution in the Central Rand goldfield, South Africa

机译:人工神经网络在南非中兰德金矿区铀分布分类中的应用

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Mine tailings generate significant environmental impacts and contribute to water pollution. The Central Rand goldfield, South Africa is replete with gold mine tailings which have contributed significantly to water pollution as a result of acid mine drainage (AMD). Water quality is affected by mine tailings and spillages, especially from active slimes dams, currently reprocessed tailings, as well as footprints left behind after reprocessing. The release and distribution of uranium from these sites was studied. Correlation matrices show a strong link between different variables as a result of AMD produced. Principal component analysis (PCA) was used to identify very influential variables which account for the pollution trends. Artificial neural networks (ANN) using the Kohonen algorithm were applied to visualise these trends and patterns in the distribution of uranium. High concentrations of this radionuclide were detected in streams in the vicinity of the tailings dumps, active slimes and reprocessing areas. The concentrations are reduced drastically in dams and wetlands as a result of precipitation and dilution effects.
机译:矿山尾矿对环境产生重大影响,并造成水污染。南非的中央兰德金矿场到处都是金矿尾矿,这些矿床是酸性矿山排水(AMD)的结果,对水污染造成了重大影响。水质受到矿山尾矿和溢水的影响,特别是活跃的泥煤坝,当前已处理的尾矿以及再处理后留下的脚印。研究了这些场所中铀的释放和分布。由于产生了AMD,所以相关矩阵显示出不同变量之间的紧密联系。主成分分析(PCA)用于识别影响污染趋势的非常有影响力的变量。应用使用Kohonen算法的人工神经网络(ANN)来可视化铀分布中的这些趋势和模式。在尾矿场,活性煤泥和后处理区附近的溪流中检测到高浓度的这种放射性核素。由于降水和稀释作用,大坝和湿地的浓度急剧降低。

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