Quantitative analysis of lithium in brine by laser-induced breakdown spectroscopy based on convolutional neural network

Anal Chim Acta. 2021 Sep 15:1178:338799. doi: 10.1016/j.aca.2021.338799. Epub 2021 Jun 26.

Abstract

In this study, a simple and effective method for accurate determination of lithium in brine samples was developed by the combination of laser induced breakdown spectroscopy (LIBS) and convolutional neural network (CNN). Our results clearly demonstrate that the use of CNN could efficiently overcome the complex matrix effects, and thus allows for on-site Li quantitative determination in brine samples by LIBS. Specifically, two CNN models with different input data (M-CNN with matrix emission lines, and DP-CNN with double Li lines) were constructed based on the primary matrix features on spectrum and Boltzmann equation, respectively. It was observed that DP-CNN model could greatly improve the accuracy of Li analysis. We also compared the quantitative analysis capabilities of DP-CNN model with partial least squares regression (PLSR) and principal component analysis-support vector regression (PCA-SVR) model, and the results clearly showed DP-CNN offers the best quantification results (higher accuracy and less matrix interference). Finally, five real brine samples were successfully analyzed by the proposed DP-CNN model, confirming by the average absolute error of the prediction of 0.28 mg L-1 and the average relative error of 3.48%. These results clearly demonstrate that input data plays an important role in the training of CNN model in LIBS analysis, and the proposed DP-CNN provides an effective approach to solve the matrix effects encountered in LIBS for Li measurement in brine samples.

Keywords: Convolutional neural network; Laser induced breakdown spectroscopy; Lithium; Overcoming matrix effect.

MeSH terms

  • Lasers
  • Lithium*
  • Neural Networks, Computer*
  • Salts
  • Spectrum Analysis

Substances

  • Salts
  • brine
  • Lithium