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Analysis of Lithium Aging Using Machine Learning-Enhanced Spectroscopy Techniques. | LitMetric

Analysis of Lithium Aging Using Machine Learning-Enhanced Spectroscopy Techniques.

Appl Spectrosc

Office of Defense Nuclear Nonproliferation, National Nuclear Security Administration, Washington, District of Columbia, USA.

Published: August 2024

Lithium compounds such as lithium hydride (LiH) and lithium hydroxide (LiOH) have a wide range of industrial applications, but are highly reactive in environments with HO and CO. These reactions lead to the ingrowth of secondary lithium compounds, which can alter the homogeneity and affect the application of particular lithium chemicals. This study performed an exploratory analysis of different lithium compounds using laser-induced breakdown spectroscopy (LIBS) and Raman spectroscopy. Machine learning models are trained on the recorded spectral data to discriminate emission features that differ between LiH, LiOH, and LiCO to perform high-fidelity classification. Support vector machine classifiers yield perfect prediction accuracy between the three compounds with optimal training time. Multivariate methods are then used to produce regression models quantifying the ingrowth of LiOH in LiH. Performing a mid-level data fusion of selected LIBS and Raman features with partial least-squares regression produces the superlative model with a root mean square error of 2.5 wt and a detection limit of 6.3 wt.

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Source
http://dx.doi.org/10.1177/00037028241235679DOI Listing

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