Towards real-time calibration-free LIBS supported by machine learning - IRT Saint Exupéry - Institut de Recherche Technologique
Article Dans Une Revue Spectrochimica Acta Part B: Atomic Spectroscopy Année : 2025

Towards real-time calibration-free LIBS supported by machine learning

Résumé

Calibration-Free Laser-Induced Breakdown Spectroscopy (CF-LIBS) enables multi-elemental quantification without needing standards. This type of approach can be used to analyze complex samples containing traces or gradients of species. This type of diagnosis requires a high level of expertise, and is cumbersome to set up. These constraints limit its application to field diagnostics. Using the MERLIN generalized radiative transfer code, we are able to generate a diversified emission database with no dimensioning limitations. We show that training a convolutional residual network with such a database enables the quantification of 9 species, as well as evaluation of electron density and temperature, without any prior expertise at a rate greater than 10 Hz. The accuracy of this innovative method depends solely on the basic spectroscopic data (emission probabilities and Stark parameters), regardless of the thermodynamic conditions of the laser-induced plasma, as long as it is in Local Thermodynamic Equilibrium (LTE).
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vendredi 23 mai 2025
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Dates et versions

irsn-04830381 , version 1 (11-12-2024)

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Aurélien Favre, Alexis Abad, Alexandre Poux, Léo Gosse, Ahmad Berjaoui, et al.. Towards real-time calibration-free LIBS supported by machine learning. Spectrochimica Acta Part B: Atomic Spectroscopy, 2025, 224, pp.107082. ⟨10.1016/j.sab.2024.107082⟩. ⟨irsn-04830381⟩
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