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首页> 外文期刊>Analytical and bioanalytical chemistry >Qualitative and quantitative investigation of chromium-polluted soils by laser-induced breakdown spectroscopy combined with neural networks analysis
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Qualitative and quantitative investigation of chromium-polluted soils by laser-induced breakdown spectroscopy combined with neural networks analysis

机译:激光诱导击穿光谱结合神经网络分析法对铬污染土壤进行定性和定量研究

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摘要

Laser-induced breakdown spectroscopy (LIBS) has been applied to the analysis of three chromium-doped soils. Two chemometric techniques, principal components analysis (PCA) and neural networks analysis (NNA), were used to discriminate the soils on the basis of their LIBS spectra. An excellent rate of correct classification was achieved and a better ability of neural networks to cope with real-world, noisy spectra was demonstrated. Neural networks were then used for measuring chromium concentration in one of the soils. We performed a detailed optimization of the inputs of the network so as to improve its predictive performances and we studied the effect of the presence of matrix-specific information in the inputs examined. Finally the inputs of the network-the spectral intensities-were replaced by the line areas. This provided the best results with a prediction accuracy and precision of about 5% in the determination of chromium concentration and a significant reduction of the data, too.
机译:激光诱导击穿光谱法(LIBS)已用于分析三种掺杂铬的土壤。主要化学成分分析(PCA)和神经网络分析(NNA)这两种化学计量技术可用于根据土壤的LIBS光谱来区分土壤。可以实现极好的正确分类率,并且可以证明神经网络具有更好的能力来应对现实世界中的嘈杂光谱。然后将神经网络用于测量其中一种土壤中的铬浓度。我们对网络的输入进行了详细的优化,以提高其预测性能,并研究了所检查的输入中特定于矩阵的信息的影响。最后,网络的输入(光谱强度)被线面积所取代。在铬浓度测定中,这提供了最佳结果,其预测准确度和精确度约为5%,并且数据也大大减少。

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