Yue Zengqi, Sun Chen, Gao Liang, Zhang Yuqing, Shabbir Sahar, Xu Weijie, Wu Mengting, Zou Long, Tan Yongqi, Chen Fengye, Yu Jin
Opt Express. 2020 May 11;28(10):14345-14356. doi: 10.1364/OE.392176.
This work demonstrates the efficiency of machine learning in the correction of spectral intensity variations in laser-induced breakdown spectroscopy (LIBS) due to changes of the laser pulse energy, such changes can occur over a wide range, from 7.9 to 71.1 mJ in our experiment. The developed multivariate correction model led to a precise determination of the concentration of a minor element (magnesium for instance) in the samples (aluminum alloys in this work) with a precision of 6.3% (relative standard deviation, RSD) using the LIBS spectra affected by the laser pulse energy change. A comparison to the classical univariate corrections with laser pulse energy, total spectral intensity, ablation crater volume and plasma temperature, further highlights the significance of the developed method.
这项工作展示了机器学习在纠正激光诱导击穿光谱(LIBS)中由于激光脉冲能量变化而导致的光谱强度变化方面的效率,在我们的实验中,这种变化可以在很宽的范围内发生,从7.9毫焦到71.1毫焦。所开发的多元校正模型能够精确测定样品(本工作中的铝合金)中微量元素(例如镁)的浓度,使用受激光脉冲能量变化影响的LIBS光谱,其精度为6.3%(相对标准偏差,RSD)。与使用激光脉冲能量、总光谱强度、烧蚀坑体积和等离子体温度的经典单变量校正方法进行比较,进一步突出了所开发方法的重要性。