Wang Zhi, Chu Yanwu, Chen Feng, Sheng Ziqian, Guo Lianbo
Appl Opt. 2019 Sep 20;58(27):7615-7620. doi: 10.1364/AO.58.007615.
Laser-induced breakdown spectroscopy (LIBS), an element-detection technology with the advantages of no sample preparation and in situ detection of metal samples, is suitable for the quantitative analysis of metal samples. However, severe spectral interference in the detection of metal samples makes the quantitative analysis difficult. Three quantitative analysis methods, including single-variable calibration, partial least squares regression (PLSR), and support vector regression (SVR), are used to conduct the quantitative analysis of four common metal elements (Manganese (Mn), Chromium (Cr), Vanadium (V), and Titanium (Ti)). The PLSR model adds interference spectrum lines to the model for linear modeling, while the SVR model adds interference spectrum lines to the model for nonlinear modeling. The quantitative analysis results of the nonlinear SVR model are the best. The R square (R) values of Mn, Cr, V, and Ti are 0.993, 0.995, 0.990, and 0.992, respectively. The root-mean-squared errors of the prediction set of Mn, Cr, V, and Ti are 0.044, 0.045, 0.011, and 0.014, respectively. Therefore, the results of PLSR and SVR are better than the calibration curves of the spectral intensity and concentration due to the influence of multivariate factors. SVR has almost no element bias, while PLSR and the single-variable calibration model have different quantitative results due to the different degrees of influence on spectral lines. These results demonstrate that the combined influence of the spectral interference, background noise, and self-absorption can be suppressed by the nonlinear quantitative analysis model in the steel field using LIBS.
激光诱导击穿光谱技术(LIBS)是一种元素检测技术,具有无需样品制备和可对金属样品进行原位检测的优点,适用于金属样品的定量分析。然而,金属样品检测中严重的光谱干扰使得定量分析变得困难。采用单变量校准、偏最小二乘回归(PLSR)和支持向量回归(SVR)三种定量分析方法,对四种常见金属元素(锰(Mn)、铬(Cr)、钒(V)和钛(Ti))进行定量分析。PLSR模型将干扰谱线添加到模型中进行线性建模,而SVR模型将干扰谱线添加到模型中进行非线性建模。非线性SVR模型的定量分析结果最佳。Mn、Cr、V和Ti的决定系数(R)值分别为0.993、0.995、0.990和0.992。Mn、Cr、V和Ti预测集的均方根误差分别为0.044、0.045、0.011和0.014。因此,由于多变量因素的影响,PLSR和SVR的结果优于光谱强度与浓度的校准曲线。SVR几乎没有元素偏差,而PLSR和单变量校准模型由于对谱线的影响程度不同而有不同的定量结果。这些结果表明,在钢铁领域使用LIBS的非线性定量分析模型可以抑制光谱干扰、背景噪声和自吸收的综合影响。