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CLASSIFICATION OF ENERGY DISPERSION X-RAY SPECTRA OF MINERALOGICAL SAMPLES BY ARTIFICIAL NEURAL NETWORKS

机译:人工神经网络对矿物样品的能量色散X射线谱进行分类

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摘要

Automatic classification of different mineralogical samples into 12 prespecified classes using Kohonen artificial neural networks (ANNs) is studied in comparison with standard chemometric techniques: hierarchical clustering and principal component analysis. The mineral types into one of which the unknown samples should be classified are pyrrhotite, pyrite, chalcopyrite, pentlandite, magnetite, biotite, albite, talc, chlorite, lizardite, dolomite, and amphibole. The basis for classification are 15-dimensional EDX spectra of individual grains taken from large matrices of compositions each containing a variety of grains belonging either to the same or to different minerals. The discussed classification procedure is based on the 15-15-15 Kohonen neural network cube. The classification results are displayed on the 15 x 15 Kohonen top-map. From the 15 weight levels of the 15-15-15 Kohonen ANN 12 logical rules that allow one to classify unknown samples into one of 12 classes are extracted. The 100% correct classification of samples using the suggested 12 logical rules is enabled by only seven of out of 15 intensity lines from each (energy-dispersive X-ray) EDX spectrum. It is shown that the Kohonen ANN allows one to draw conclusions and logical rules based on the weight patterns formed during the training in the ANN. [References: 14]
机译:与标准化学计量技术(层次聚类和主成分分析)相比较,研究了使用Kohonen人工神经网络(ANN)将不同矿物样品自动分类为12种预定类别的方法。黄铁矿,黄铁矿,黄铜矿,绿铁矿,磁铁矿,黑云母,钠长石,滑石,绿泥石,蜥蜴石,白云石和闪石等应归类为未知样品的矿物类型。分类的基础是从各种成分的大矩阵中获取的单个谷物的15维EDX光谱,每种成分都包含各种属于相同或不同矿物的谷物。讨论的分类过程基于15-15-15 Kohonen神经网络立方体。分类结果显示在15 x 15 Kohonen顶图上。从15-15-15 Kohonen ANN的15个权重级别中,提取了12条逻辑规则,这些规则可以将未知样本分类为12个类别之一。使用每个EDX光谱(能量色散X射线)的15条强度线中只有7条可以使用建议的12条逻辑规则对样品进行100%正确分类。结果表明,Kohonen ANN可以根据在ANN训练过程中形成的权重模式得出结论和逻辑规则。 [参考:14]

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