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Influence of variable selection on partial least squares discriminant analysis models for explosive residue classification

机译:变量选择对​​爆炸性残渣分类的偏最小二乘判别分析模型的影响

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摘要

Using a series of thirteen organic materials that includes novel high-nitrogen energetic materials, conventional organic military explosives, and benign organic materials, we have demonstrated the importance of variable selection for maximizing residue discrimination with partial least squares discriminant analysis (PLS-DA). We built several PLS-DA models using different variable sets based on laser induced breakdown spectroscopy (LIBS) spectra of the organic residues on an aluminum substrate under an argon atmosphere. The model classification results for each sample are presented and the influence of the variables on these results is discussed. We found that using the whole spectra as the data input for the PLS-DA model gave the best results. However, variables due to the surrounding atmosphere and the substrate contribute to discrimination when the whole spectra are used, indicating this may not be the most robust model. Further iterative testing with additional validation data sets is necessary to determine the most robust model.
机译:通过使用包括新颖的高氮高能材料,常规有机军用炸药和良性有机材料在内的13种有机材料,我们已经证明了使用偏最小二乘判别分析(PLS-DA)进行变量选择对​​于最大化残留物鉴别的重要性。我们基于氩气氛下铝基板上有机残留物的激光诱导击穿光谱(LIBS)光谱,使用不同的变量集建立了多个PLS-DA模型。给出了每个样本的模型分类结果,并讨论了变量对这些结果的影响。我们发现,将整个光谱用作PLS-DA模型的数据输入可获得最佳结果。但是,当使用整个光谱时,由于周围大气和基材引起的变量会导致辨别力,这表明这可能不是最可靠的模型。为了确定最可靠的模型,需要使用其他验证数据集进行进一步的迭代测试。

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