研究目的
To determine the concentrations of minor metal elements (Mn, Cr, Ni) in steel using laser-induced breakdown spectroscopy (LIBS) combined with machine learning algorithms, improving the analytical performances compared to univariate regression models.
研究成果
The machine learning approach significantly improves the analytical performances for determining Mn, Cr, and Ni concentrations in steel using LIBS, with prediction trueness and precision reaching values of 1.13%, 2.85%, 7.20% and 6.68%, 3.96%, 6.52% respectively. The method demonstrates efficiency in compensating for experimental fluctuations and matrix effects.
研究不足
The study acknowledges the influence of spectral interferences with Fe I and Fe II lines and the modest analytical performances of univariate regression models. The multivariate models, while improving performance, still face challenges in optimizing for smaller concentration ranges and mean values.