首页> 外文期刊>Analytica chimica acta >Classification of time-of-flight secondary ion mass spectrometry spectra from complex Cu-Fe sulphides by principal component analysis and artificial neural networks
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Classification of time-of-flight secondary ion mass spectrometry spectra from complex Cu-Fe sulphides by principal component analysis and artificial neural networks

机译:基于主成分分析和人工神经网络的复杂铜铁硫化物飞行时间二次离子质谱图谱分类

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摘要

Artificial neural network (ANN) and a hybrid principal component analysis-artificial neural network (PCA-ANN) classifiers have been successfully implemented for classification of static time-of-flight secondary ion mass spectrometry (ToF-SIMS) mass spectra collected from complex Cu-Fe sulphides (chalcopyrite, bornite, chalcocite and pyrite) at different flotation conditions. ANNs are very good pattern classifiers because of: their ability to learn and generalise patterns that are not linearly separable; their fault and noise tolerance capability; and high parallelism. In the first approach, fragments from the whole ToF-SIMS spectrum were used as input to the ANN, the model yielded high overall correct classification rates of 100% for feed samples, 88% for conditioned feed samples and 91% for Eh modified samples. In the second approach, the hybrid pattern classifier PCA-ANN was integrated. PCA is a very effective multivariate data analysis tool applied to enhance species features and reduce data dimensionality. Principal component (PC) scores which accounted for 95% of the raw spectral data variance, were used as input to the ANN, the model yielded high overall correct classification rates of 88% for conditioned feed samples and 95% for Eh modified samples.
机译:人工神经网络(ANN)和混合主成分分析-人工神经网络(PCA-ANN)分类器已成功实现,用于对从复杂Cu中收集的静态飞行时间二次离子质谱(ToF-SIMS)质谱进行分类-在不同的浮选条件下硫化铁(黄铜矿,褐铁矿,球墨铸铁和黄铁矿)。 ANN是非常好的模式分类器,因为:它们具有学习和概括不可线性分离的模式的能力;其容错能力;和高度并行性。在第一种方法中,将来自整个ToF-SIMS谱图的片段用作ANN的输入,该模型产生了较高的总体正确分类率,饲料样品为100%,条件饲料样品为88%,Eh修饰样品为91%。在第二种方法中,集成了混合模式分类器PCA-ANN。 PCA是一种非常有效的多元数据分析工具,可用于增强物种特征并降低数据维数。占原始光谱数据差异95%的主成分(PC)分数用作ANN的输入,该模型产生了较高的总体正确分类率,其中条件饲料样本为88%,Eh改良样本为95%。

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