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Title Exploring Optimization of Zeolites as Adsorbents for Rare Earth Elements in Continuous Flow by Machine Learning Techniques
ID_Doc 24893
Authors Barros, O; Parpot, P; Neves, IC; Tavares, T
Title Exploring Optimization of Zeolites as Adsorbents for Rare Earth Elements in Continuous Flow by Machine Learning Techniques
Year 2023
Published Molecules, 28, 24
DOI 10.3390/molecules28247964
Abstract Unsupervised machine learning (ML) techniques are applied to the characterization of the adsorption of rare earth elements (REEs) by zeolites in continuous flow. The successful application of principal component analysis (PCA) and K-Means algorithms from ML allowed for a wide range assessment of the adsorption results. This global approach permits the evaluation of the different stages of the sorption cycles and their optimization and improvement. The results from ML are also used for the definition of a regression model to estimate other REEs' recoveries based on the known values of the tested REEs. Overall, it was possible to remove more than 70% of all REEs from aqueous solutions during the adsorption assays and to recover over 80% of the REEs entrapped on the zeolites using an optimized desorption cycle.
Author Keywords rare earth elements; zeolites; machine learning; sorption processes; circular economy
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:001130817300001
WoS Category Biochemistry & Molecular Biology; Chemistry, Multidisciplinary
Research Area Biochemistry & Molecular Biology; Chemistry
PDF https://www.mdpi.com/1420-3049/28/24/7964/pdf?version=1701840591
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