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Selection of Spectral Data for Classification of Steels Using Laser-Induced Breakdown Spectroscopy

机译:使用激光诱导击穿光谱法选择用于分类的光谱数据

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Principal component analysis (PCA) combined with artificial neural networks was used to classify the spectra of 27 steel samples acquired using laser-induced breakdown spectroscopy. Three methods of spectral data selection, selecting all the peak lines of the spectra, selecting intensive spectral partitions and the whole spectra, were utilized to compare the influence of different inputs of PCA on the classification of steels. Three intensive partitions were selected based on experience and prior knowledge to compare the classification, as the partitions can obtain the best results compared to all peak lines and the whole spectra. We also used two test data sets, mean spectra after being averaged and raw spectra without any pretreatment, to verify the results of the classification. The results of this comprehensive comparison show that a back propagation network trained using the principal components of appropriate, carefully selected spectral partitions can obtain the best results. A perfect result with 100% classification accuracy can be achieved using the intensive spectral partitions ranging of 357-367 nm.
机译:主成分分析(PCA)结合人工神经网络用于对使用激光诱导击穿光谱法采集的27个钢样品的光谱进行分类。利用三种光谱数据选择方法,选择光谱的所有峰线,选择密集的光谱分区和整个光谱,比较了PCA的不同输入对钢分类的影响。根据经验和先验知识选择了三个密集分区以比较分类,因为与所有峰线和整个光谱相比,这些分区可以获得最佳结果。我们还使用了两个测试数据集,即求平均值后的平均光谱和未经任何预处理的原始光谱,以验证分类结果。这项全面比较的结果表明,使用适当,精心选择的光谱分区的主要成分训练的反向传播网络可以获得最佳结果。使用范围为357-367 nm的密集光谱分区,可以获得100%分类精度的完美结果。

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