Jump to main content
Jump to site search


Improvement in the analytical performance of underwater LIBS signals by exploiting the plasma image information

Author affiliations

Abstract

Laser-induced plasma in water always suffers from strong pulse-to-pulse fluctuations due to the multiple breakdown phenomenon, leading to a poor stability of underwater LIBS signals. The traditional normalization method by using the internal standard element is often limited in some practical cases due to the lack of a suitable element as a reference. In this work, we developed an effective normalization method by using the plasma image information for underwater LIBS analysis. Correlations between the plasma images and LIBS spectra were firstly studied, showing a good linear relationship between the spectral line intensity and plasma image intensity. Subsequently, the spectral line intensities were standardized by using the corresponding image intensities and then used for quantitative analysis. A good normalization model was established by using partial least squares regression (PLSR). With the proposed method, the average relative standard deviations (RSDs) of validation samples were significantly reduced from 10.71% to 5.76%, and the average relative errors (AREs) of the validation samples were also reduced from 7.80% to 7.55%. Moreover, by combining the proposed method with the internal standard method, the average RSD and ARE can be further reduced to 4.07% and 4.86%, respectively, both of which are better than those obtained using the internal standard method only.

Graphical abstract: Improvement in the analytical performance of underwater LIBS signals by exploiting the plasma image information

Back to tab navigation

Supplementary files

Article information


Submitted
28 Oct 2019
Accepted
16 Dec 2019
First published
06 Jan 2020

J. Anal. At. Spectrom., 2020, Advance Article
Article type
Paper

Improvement in the analytical performance of underwater LIBS signals by exploiting the plasma image information

Q. Li, Y. Tian, B. Xue, N. Li, W. Ye, Y. Lu and R. Zheng, J. Anal. At. Spectrom., 2020, Advance Article , DOI: 10.1039/C9JA00367C

Social activity

Search articles by author

Spotlight

Advertisements